U.S. patent application number 16/667757 was filed with the patent office on 2020-02-27 for method, apparatus, and system for human identification based on human radio biometric information.
This patent application is currently assigned to ORIGIN WIRELESS, INC.. The applicant listed for this patent is ORIGIN WIRELESS, INC.. Invention is credited to Oscar Chi-Lim Au, K. J. Ray Liu, Sai Deepika Regani, Beibei Wang, Min Wu, Qinyi Xu.
Application Number | 20200064444 16/667757 |
Document ID | / |
Family ID | 69587194 |
Filed Date | 2020-02-27 |
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United States Patent
Application |
20200064444 |
Kind Code |
A1 |
Regani; Sai Deepika ; et
al. |
February 27, 2020 |
METHOD, APPARATUS, AND SYSTEM FOR HUMAN IDENTIFICATION BASED ON
HUMAN RADIO BIOMETRIC INFORMATION
Abstract
Methods, apparatus and systems for monitoring an object
expression are described. In one example, a described apparatus in
a venue comprises a receiver and a processor. The receiver is
configured for: receiving a wireless signal from a transmitter
through a wireless multipath channel that is impacted by an
expression of an object in the venue, wherein the object has at
least one movable part and is expressed in the expression with
respect to a setup in the venue; and obtaining a time series of
channel information (TSCI) of the wireless multipath channel based
on the wireless signal received by the receiver. The processor is
configured for computing information associated with the object
based at least partially on the TSCI obtained when the object is
expressed in the expression, and performing, based on the
information associated with the object, a task associated with at
least one of the object and the venue.
Inventors: |
Regani; Sai Deepika;
(College Park, MD) ; Xu; Qinyi; (Mountain View,
CA) ; Wang; Beibei; (Clarksville, MD) ; Wu;
Min; (Clarksville, MD) ; Au; Oscar Chi-Lim;
(San Jose, CA) ; Liu; K. J. Ray; (Potomac,
MD) |
|
Applicant: |
Name |
City |
State |
Country |
Type |
ORIGIN WIRELESS, INC. |
Greenbelt |
MD |
US |
|
|
Assignee: |
ORIGIN WIRELESS, INC.
Greenbelt
MD
|
Family ID: |
69587194 |
Appl. No.: |
16/667757 |
Filed: |
October 29, 2019 |
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Current U.S.
Class: |
1/1 |
Current CPC
Class: |
G01S 7/415 20130101;
G01S 13/003 20130101; G01S 7/412 20130101; G01S 7/417 20130101;
G01S 13/931 20130101; G01S 7/006 20130101 |
International
Class: |
G01S 7/41 20060101
G01S007/41; G01S 13/00 20060101 G01S013/00; G01S 7/00 20060101
G01S007/00 |
Claims
1. An apparatus in a venue for monitoring an object expression,
comprising: a receiver configured for: receiving a wireless signal
from a transmitter through a wireless multipath channel that is
impacted by an expression of an object in the venue, wherein the
object has at least one movable part and is expressed in the
expression with respect to a setup in the venue, and obtaining a
time series of channel information (TSCI) of the wireless multipath
channel based on the wireless signal received by the receiver; and
a processor configured for: computing information associated with
the object based at least partially on the TSCI obtained when the
object is expressed in the expression, and performing, based on the
information associated with the object, a task associated with at
least one of the object and the venue, wherein the expression
comprises at least one of: an anticipated expression, a controlled
expression, a pre-determined expression, a designated expression, a
targeted expression, a predicted expression, and an expected
expression, wherein the expression represents at least one of: a
place in the venue, an identifiable place, a region, area, spatial
coordinate, orientation, presentation, manifestation, dynamic
expression, motion, static expression, positioning, scale,
placement, state, gesture, pose, posture, body language, body
expression, head expression, face expression, vocal expression, arm
expression, hand expression, leg expression, and a sequence of
expressions of the object.
2. The apparatus of claim 1, wherein the venue comprises at least
one of: an enclosed space, semi-enclosed space, enclosed structure,
enclosed area, semi-enclosed structure, enclosure, cavity, a space
associated with a portable device, moveable space, a relocatable
structure, a moveable platform, a moveable platform that is either
in motion or stationary, a transportation machine with a space to
carry the object and the setup, a transport apparatus with a
capacity to support and take/move with the object and the setup
from one place to another, a thing to
transport/take/carry/shift/bring/transfer/convey people or goods, a
semi-enclosed space, area with at least one wall, a space
associated with at least one of: access, entrance, exit, storage,
carriage, container, enclosure, packaging, passage, flow, process,
inspection, security, access control, flow control, people control,
and logistics control, a sensing area, monitoring area, hollow
object, capsule, facility, room, house, home, property, office,
workspace, conference room, cubicle, booth, station, counter,
bench, building, hallway, walkway, lift, lift well, elevator,
staircase, store, supermarket, factory, plant, assembly line,
inspection area, warehouse, storage area, shelfing, distribution
center, airport, mall, school, hospital, hall, station, terminal,
hub, subway, cave, lot, area, zone, region, district, equipment,
device, apparatus, pipe, duct, tube, entrance, gate, passage, a
vehicle, compartment of vehicle, cabin of vehicle, vessel, car,
SUV, van, truck, cargo van, container truck, recreational vehicle,
trailer, container, bus, train, tram, tracked vehicle, airplane,
helicopter, glider, drone, boat, ship, submersible, cable car,
lift, open-air vehicle, bicycle, motorcycle, convertible,
escalator, people mover, conveyer belt, roller coaster, chair lift,
a parking lot, sports facility, stadium, courtyard, pipe, vent,
tunnel, rooftop, park, field, and a downtown area with many
buildings.
3. The apparatus of claim 1, wherein the setup comprises at least
one of: a machine, device, apparatus, hardware, module, tool,
equipment, robot, drone, structure, a machine with moveable parts,
a machine with interconnected elements, a device with controllable
components, an apparatus with linked units, at least one of: a
hardware, software, and user interface (UI) to assist the object in
the expression, a machine to carry the object in the expression, a
machine to accommodate the object in the expression, a machine to
encapsulate the object in the expression, a machine to enable the
object to express in the expression, a machine to hold the object
in place, a machine to position the object in the expression, a
machine to hold the object to enable the object to express in the
expression, a machine to restrain the object to assist the object
in the expression, a machine tailored for the object to express in
the expression, a seat, identifiable seat, chair, table, desk, bed,
sitting place, standard place, waiting place, resting place,
entrance, exit, passage, gate, a driver's seat, passenger's seat,
pilot's seat, captain's seat, officer's seat, operator's seat, seat
belt, restraint system, head support, arm rest, display, control
panel, dash board, steering wheel, pedal, lever, window, mirror, a
conveyer belt, assembly line, inspection station, monitoring
station, actuator, platform, moveable platform, chair, cubicle,
booth, station, counter, bench, a scanner, body scanner, head
scanner, iris scanner, fingerprint scanner, scanning system,
security scanner, medical scanner, airport security system, and
inspection station.
4. The apparatus of claim 1, wherein the object comprises at least
one of: an object to be monitored, object to be inspected, object
to be identified, a living object, non-living object, flexible
object, non-flexible object, rigid object, non-rigid object, object
with moveable parts, object with interconnected parts, a person,
passenger, driver, pilot, captain, officer, operator, adult, child,
baby, older adult, animal, a body part, head, hand, arm, foot, leg,
clothing, accessory, marker, radio enhancer, radio suppressor, a
manufactured item, processed item, tool, device, and machine.
5. The apparatus of claim 1, wherein the information is related to
at least one of: an identification, identity, biometric,
classification, detection, recognition, authentication, grouping,
association, representation, localization, analysis, a presence,
proximity, intensity, physical property, size, volume, area,
height, length, mass, material, strength, measure, state, status,
action, motion, movement, position, location, gesture, activity,
expression, behavior, trend, change, age, gender, a geometric
shape, shape change, shape movement, shape sequence, pose, gesture,
body movement, head movement, face expression, emotion, arm
movement, hand movement, finger movement, leg movement, foot
movement, body language, hand sign, hand signal, handwriting,
drawing, user input, user interface, handwriting, keystroke,
selection, daily movement, daily activity, response to stimulus, an
emotional state, tiredness, sleepiness, sleep state, sleep stage,
REM, NREM, awake, cooking, dancing, sports, exercising, a spatial
information, distance, displacement, angle, direction, speed,
velocity, acceleration, location in venue, trajectory, a repeating
motion, repetition, periodicity, period, frequency, timing,
duration, breathing rate, heartbeat, vital sign, wiper action,
irregularity, problem, sign of sickness, change, abrupt change,
response to a stimulus, a transient motion, impulsive action, fall
down, accident, danger, opening action, door-open, window-open,
hood-open, trunk-open, closing action, door-close, window-close,
hood-close, trunk-close, approaching action, receding action,
loading action, unloading action, upward action, downward action,
driver action, and driving action.
6. The apparatus of claim 1, wherein: the venue is a vehicle; the
object is a driver of the vehicle; the place in the venue is a
driver position of the vehicle; the setup comprises a driver seat
of the vehicle; the pose of the object is a driving pose of the
driver; the expression of the object is the driver sitting on the
driver seat of the vehicle in the driving pose; and the information
associated with the object is related to at least one of: an
identification of the driver and a recognition of the driver.
7. The apparatus of claim 1, wherein: the task comprises adjusting
a setting associated with at least one of: the venue, the setup in
the venue, an additional setup in the venue, and a machine
associated with the venue; and the setting comprises at least one
of: a preferred setting, default setting, trained setting, stored
setting, environment setting, zonal environmental condition of a
zone around the object in the venue, a condition, state,
circumstance, situation, zonal condition, zonal state, zonal
circumstance, zonal situation, an air quality, air intake, fresh
air intake, air recycling, air re-circulation, mixing of fresh air
and recycled air, air conditioning, humidity, temperature, heating,
local heating, seat heating, cooling, air flow pattern, air flow
diversion, air flow direction, air flow speed, a lighting,
illumination, light transmittance, transparency, tinting, shading,
sun visor, wind screen, night mode, a sound volume, speaker volume,
sound source, radio channel, playing of voice message, dialogue
control, display, display brightness, display color, display
animation, display message, an ergonomic setting, comfort setting,
position, positioning, height, angle, tilting angle, inclination
angle, body support, head support, back support, lumber support, a
seat track position, legroom, seat height, reclining angle, cushion
tilt, seat back tilt, headrest angle, headrest height, head room,
seatbelt anchor height, lap belt position, seatbelt deployment,
side mirror orientation, steering column tilt, steering column
telescoping setting, lever placement, baby car-seat detection, baby
presence detection, child presence detection, a vehicle setting,
cabin setting, steering column setting, window setting, door
setting, wiper setting, suspension setting, tire setting, brake
setting, chassis setting, suspension setting, active safety,
passive safety, driver assistance setting, driver alertness
detection, automatic braking, infrared night vision, adaptive
headlamp, reverse backup sensing, adaptive cruise control, lane
departure warning, crash avoidance, pre-crash detection, traction
control, anti-lock braking, emergency braking, corner braking,
distance maintaining, automated parking, obstacle detection, an
alert setting, warning setting, danger setting, accident monitoring
setting, and safety monitoring.
8. The apparatus of claim 7, wherein: the venue is a vehicle; and
at least one of the additional setup and the machine comprises at
least one of: a subsystem of the vehicle, chassis, engine system,
propulsion system, fuel system, exhaust system, cooling system,
lubrication system, electrical system, transmission system, a part
of a vehicle, seat, headrest, arm rest, seat belt, lap belt,
steering column, steering wheel, lever, button, window, door, body,
wiper, light, headlight, cabin light, map light, dashboard,
display, speaker, radio, spoiler, external appearance, an
electronic system, driver assistance system, lane assist system,
speed assist system, blind spot detection, park assist system,
adaptive cruise control system, pre-collision assist, a passenger
comfort system, automatic climate control system, electronic seat
adjustment with memory, automatic temperature adjustment system, an
automatic wipers, automatic headlamps, entertainment system,
communication system, LTE-based system, WiFi-based system,
navigation system, tracking system, audio system, information
system, a system of at least one of: a parking facility,
maintenance facility, inspection facility, monitoring facility, and
another facility, associated with the vehicle.
9. The apparatus of claim 1, wherein: the venue is a vehicle; the
setup is a seat; and the object is at least one of: a driver,
operator, officer, and passenger, sitting on the seat in the
vehicle; the task comprises at least one of: adjusting at least one
of: a position, legroom, height, width, length, angle, lumber
support, firmness, arm-rest, head support, neck support, comfort
setting, heating setting, health-related setting, ergonomic
setting, and another setting, of the seat, adjusting at least one
of: a system, accessory and user-interface, around the seat,
adjusting at least one of: rear-view mirror, side mirror, steering
wheel, steering column, dash panel, display, control panel,
on-screen display, entertainment system, levers, and buttons,
communicating with at least one of: a device, smart device, smart
phone, communicating device, tablet, laptop, computer, Bluetooth
device, WiFi device, mesh device, LTE device, associated with the
object, communicating with at least one of: a network, wireless
network, WiFi network, mesh network, 3G/4G/LTE/5G/6G/7G/8G network,
garage, parking facility, refueling facility, storage facility,
charging device, power transfer facility, smart device, facility
automation system, home, house, building, facility, warehouse,
factory, security system, remote device, remote server, another
networked vehicle, and another networked device, preparing for
driving, turning on at least one of: a device, and subsystem, of
the vehicle, adjusting at least one of: radio, streaming service,
news, information source, information display, voice recognition,
dialogue system, vehicle automation system, engine, lights, air
conditioning, comfort features, safety features, cabin monitoring,
entertainment system, communication system, and a subsystem of the
vehicle, and making an adjustment of at least one of: the vehicle,
and the setup, such that the object is expressed in another
expression based on the adjustment.
10. The apparatus of claim 1, wherein the processor is further
configured for: performing a feature extraction to extract a
feature from the TSCI, wherein: the information associated with the
object is computed based on the feature extracted from the TSCI,
the feature extraction is performed based on at least one of: an
algorithm, an operation, a task, a featuring training, projection,
orthogonal projection, non-orthogonal projection, over-complete
projection, principal component analysis (PCA), PCA with different
kernel, independent component analysis (ICA), Fisher linear
discriminant, decomposition, eigen-decomposition, singular value
decomposition (SVD), frequency decomposition, time decomposition,
time-frequency decomposition, functional decomposition, other
decomposition, a vector quantization, clustering, machine learning,
supervised learning, unsupervised learning, semi-supervised
learning, self-organizing maps, auto-encoder, neural network, deep
neural network, rectified linear unit (ReLU) activation, training,
discriminative training, supervised training, unsupervised
training, semi-supervised training, neural network, model-based
processing, a maximum likelihood (ML), maximum aposterior
probability (MAP), kernal-based method, support vector machine
(SVM), projection, hyperplane separation, classification, k-fold
validation, K-nearest neighborhood (KNN), grouping, finite state
machine (FSM), thresholding, a similarity measure, CI similarity
score, time reversal resonating strength (TRRS), distance measure,
mismatch measure, correlation, autocorrelation function (ACF),
cross correlation, covariance, inner product of two vectors, motion
statistics, high detection rate, low false alarm rate, outlier
removal, history, histogram, KL distance, at least one of:
monitoring, detection, recognition, estimation, verification,
identification, authentication, classification, locationing,
guiding, navigating, tracking, and counting of at least one of: a
motion, motion sequence, motion intensity, motion duration, motion
timing, a periodic motion, repeated motion, stationary motion,
cyclo-stationary motion, regular motion, a transient motion,
fall-down, sudden motion, irregular motion, safety, danger,
accident, life-threat, a trend, behavior, environment condition,
environment informatics, an event, security event, intrusion,
suspicious motion, an object, tool, machine, venue, area, region, a
human, animal, baby, elderly, patient, pet, presence, proximity,
activity, daily activity, sports activity, physical exercise, a
human biometrics, walking, running, gait, gesture, emotion, a
well-being, vital sign, breathing, heartbeat, health condition,
sleep, and sleep stage, safety monitoring, irregularity detection,
navigation, guidance, locationing, tracking, map-based processing,
map-based correction, model-based correction, room sensing,
multiple object tracking, indoor tracking, indoor positioning,
indoor navigation, energy management, power transfer, wireless
power transfer, object counting, car tracking in parking garage,
activating a device/system (e.g. security system, access system,
alarm, siren, speaker, television, entertaining system, camera,
heater/air-conditioning (HVAC) system, ventilation system, lighting
system, gaming system, coffee machine, cooking device, cleaning
device, housekeeping device, etc.), geometry estimation, augmented
reality, wireless communication, data communication, signal
broadcasting, networking, coordination, administration, encryption,
protection, cloud computing, signal processing, signal
preprocessing, signal postprocessing, signal conditioning,
filtering, linear filtering, nonlinear filtering, folding,
grouping, energy computation, lowpass filtering, bandpass
filtering, highpass filtering, median filtering, rank filtering,
quartile filtering, percentile filtering, mode filtering, finite
impulse response (FIR) filtering, infinite impulse response (IIR)
filtering, moving average (MA) filtering, autoregressive (AR)
filtering, autoregressive moving averaging (ARMA) filtering,
selective filtering, adaptive filtering, interpolation, decimation,
subsampling, upsampling, resampling, time correction, time base
correction, phase correction, magnitude correction, phase cleaning,
magnitude cleaning, enhancement, restoration, preprocessing,
postprocessing, denoising, smoothing, enhancement, restoration,
spectral analysis, signal conditioning, timing correction, timing
compensation, phase offset compensation, transformation, linear
transform, nonlinear transform, inverse transform, frequency
transform, inverse frequency transform, Fourier transform (FT),
discrete time FT (DTFT), discrete FT (DFT), fast FT (FFT), wavelet
transform, Laplace transform, Hilbert transform, Hadamard
transform, trigonometric transform, sine transform, cosine
transform, DCT, power-of-2 transform, sparse transform, graph-based
transform, graph signal processing, fast transform, a transform
combined with zero padding, cyclic padding, padding, zero padding,
sorting, thresholding, soft thresholding, hard thresholding,
clipping, soft clipping, first derivative, second order derivative,
high order derivative, convolution, multiplication, division,
addition, subtraction, integration, optimization, maximization,
minimization, least mean square error, recursive least square,
constrained least square, batch least square, least absolute error,
least mean square deviation, least absolute deviation, local
maximization, local minimization, optimization of a cost function,
labeling, comparison of CI, similarity score computation,
quantization, matching pursuit, compression, encryption, coding,
storing, normalization, temporal normalization, frequency domain
normalization, tagging, learning, learning network, mapping,
remapping, expansion, storing, retrieving, transmitting, receiving,
representing, merging, combining, splitting, matched filtering,
Kalman filtering, particle filtering, extrapolation, histogram
estimation, importance sampling, Monte Carlo sampling, compressive
sensing, representing, merging, combining, splitting, scrambling,
error protection, forward error correction, time varying
processing, conditioning, averaging, weighted averaging, arithmetic
mean, geometric mean, harmonic mean, averaging over selected
frequency, averaging over antenna links, logical operation,
permutation, combination, sorting, AND, OR, XOR, union,
intersection, vector addition, vector subtraction, vector
multiplication, vector division, inverse, norm, and distance.
11. The apparatus of claim 10, wherein: the receiver is further
configured for obtaining at least one training TSCI during a
training period in which a training object similar to the object is
expressed in the expression in the venue; and the processor is
further configured for training the feature extraction based on the
at least one training TSCI.
12. The apparatus of claim 10, wherein the processor is further
configured for: changing the feature extraction based on a recent
window of channel information in the TSCI; extracting a new feature
from the TSCI based on the changed feature extraction; computing a
new information associated with the object based on at least one
of: the TSCI, the new feature and the changed feature extraction,
wherein changing the feature extraction comprises at least one of:
changing a quantity of features, changing feature definition,
changing feature precision, changing feature representation,
processing the feature, retraining the feature extraction,
recomputing the feature extraction, renewing the feature
extraction, synchronizing the changed feature extraction, updating
the feature extraction, modifying the feature extraction, adjusting
the feature extraction, expanding the feature extraction, reducing
the feature extraction, and simplifying the feature extraction.
13. The apparatus of claim 10, wherein the feature is a biometric
feature derived from the TSCI.
14. The apparatus of claim 1, wherein the processor is further
configured for: computing a training of at least one of: a neural
network, a model, an algorithm, and a parameter associated with the
TSCI, wherein the information associated with the object is
computed based on the training.
15. The apparatus of claim 14, wherein: the receiver is further
configured for obtaining at least one training TSCI during a
training period in which a training object similar to the object is
expressed in the expression in the venue; and the training is
computed based on the training TSCI.
16. The apparatus of claim 14, wherein the processor is further
configured for: changing at least one of: the trained neural
network, the trained model, the trained algorithm, and the trained
parameter based on a recent window of CI in the TSCI; computing a
new information associated with the object based on the TSCI and at
least one of: the changed neural network, the changed model, the
changed algorithm, and the changed parameter, wherein the changing
comprises at least one of: changing a particular parameter of at
least one of: the neural network, the model, and the algorithm,
changing parameter precision, changing parameter representation,
changing at least one of: an input layer, a hidden layer, and an
output layer, of the neural network, changing a at least one of: a
neuron, a node, a connection, an interconnection, a structure, a
layer, an input layer, a hidden layer, an output layer, and an
organization, of the neural network, changing at least one of: a
weight, a weighted sum, and a propagation function, of the neural
network, changing the model definition, changing at least one
element of the model, changing the algorithm definition, changing
at least one step of the algorithm, retraining, recomputing,
renewing, synchronizing, updating, modifying, adjusting, expanding,
reducing, and simplifying.
17. The apparatus of claim 1, wherein: the information associated
with the object is computed based on at least one of: a biometric
feature derived from the TSCI, a radio shot derived from the TSCI,
a neural network, maximum likelihood (ML), maximum aposterior
probability (MAP), kernal-based method, support vector machine
(SVM), projection, hyperplane separation, classification, k-fold
validation, K-nearest neighborhood (KNN), discriminative training,
machine learning, training, supervised training, unsupervised
training, semi-supervised training, discriminative training,
clustering, vector quantization, self-organizing maps,
auto-encoder, neural network, rectified linear unit (ReLU)
activation, deep neural network, grouping, thresholding, filtering,
similarity measure, CI similarity score, time reversal resonance
strength (TRRS), distance measure, mismatch measure, correlation,
covariance, autocorrelation function (ACF), motion statistics, high
detection rate, low false alarm rate, and an outlier removal.
18. The apparatus of claim 1, wherein the processor is further
configured for: preprocessing the TSCI based on at least one of: a
signal conditioning, filtering, linear filtering, nonlinear
filtering, folding, grouping, energy computation, lowpass
filtering, bandpass filtering, highpass filtering, median
filtering, rank filtering, quartile filtering, percentile
filtering, mode filtering, finite impulse response (FIR) filtering,
infinite impulse response (IIR) filtering, moving average (MA)
filtering, autoregressive (AR) filtering, autoregressive moving
averaging (ARMA) filtering, selective filtering, adaptive
filtering, an interpolation, decimation, subsampling, upsampling,
resampling, time correction, time base correction, phase
correction, magnitude correction, phase cleaning, magnitude
cleaning, enhancement, restoration, denoising, smoothing,
enhancement, restoration, spectral analysis, signal conditioning,
timing correction, timing compensation, phase offset compensation,
a transformation, linear transform, nonlinear transform, inverse
transform, frequency transform, inverse frequency transform,
Fourier transform (FT), discrete time FT (DTFT), discrete FT (DFT),
fast FT (FFT), wavelet transform, Laplace transform, Hilbert
transform, Hadamard transform, trigonometric transform, sine
transform, cosine transform, DCT, power-of-2 transform, sparse
transform, graph-based transform, graph signal processing, fast
transform, a transform combined with zero padding, cyclic padding,
padding, and zero padding, wherein the information associated with
the object is computed based on the preprocessed TSCI and based on
at least one of: an algorithm, an operation, a task, a feature
extraction, featuring training, projection, orthogonal projection,
non-orthogonal projection, over-complete projection, principal
component analysis (PCA), PCA with different kernel, independent
component analysis (ICA), Fisher linear discriminant,
decomposition, eigen-decomposition, singular value decomposition
(SVD), frequency decomposition, time decomposition, time-frequency
decomposition, functional decomposition, other decomposition, a
vector quantization, clustering, machine learning, supervised
learning, unsupervised learning, semi-supervised learning,
self-organizing maps, auto-encoder, neural network, deep neural
network, rectified linear unit (ReLU) activation, training,
discriminative training, supervised training, unsupervised
training, semi-supervised training, neural network, model-based
processing, a maximum likelihood (ML), maximum aposterior
probability (MAP), kernal-based method, support vector machine
(SVM), projection, hyperplane separation, classification, k-fold
validation, K-nearest neighborhood (KNN), grouping, finite state
machine (FSM), thresholding, a similarity measure, CI similarity
score, time reversal resonating strength (TRRS), distance measure,
mismatch measure, correlation, autocorrelation function (ACF),
cross correlation, covariance, inner product of two vectors, motion
statistics, high detection rate, low false alarm rate, outlier
removal, history, histogram, KL distance, at least one of:
monitoring, detection, recognition, estimation, verification,
identification, authentication, classification, locationing,
guiding, navigating, tracking, and counting of at least one of: a
motion, motion sequence, motion intensity, motion duration, motion
timing, a periodic motion, repeated motion, stationary motion,
cyclo-stationary motion, regular motion, a transient motion,
fall-down, sudden motion, irregular motion, safety, danger,
accident, life-threat, a trend, behavior, environment condition,
environment informatics, an event, security event, intrusion,
suspicious motion, an object, tool, machine, venue, area, region, a
human, animal, baby, elderly, patient, pet, presence, proximity,
activity, daily activity, sports activity, physical exercise, a
human biometrics, walking, running, gait, gesture, emotion, a
well-being, vital sign, breathing, heartbeat, health condition,
sleep, and sleep stage, a safety monitoring, irregularity
detection, navigation, guidance, locationing, tracking, map-based
processing, map-based correction, model-based correction, room
sensing, multiple object tracking, indoor tracking, indoor
positioning, indoor navigation, energy management, power transfer,
wireless power transfer, object counting, car tracking in parking
garage, an activating a device/system (e.g. security system, access
system, alarm, siren, speaker, television, entertaining system,
camera, heater/air-conditioning (HVAC) system, ventilation system,
lighting system, gaming system, coffee machine, cooking device,
cleaning device, housekeeping device, etc.), geometry estimation,
augmented reality, wireless communication, data communication,
signal broadcasting, networking, coordination, administration,
encryption, protection, cloud computing, a signal processing,
signal preprocessing, signal postprocessing, signal conditioning,
filtering, linear filtering, nonlinear filtering, folding,
grouping, energy computation, lowpass filtering, bandpass
filtering, highpass filtering, median filtering, rank filtering,
quartile filtering, percentile filtering, mode filtering, finite
impulse response (FIR) filtering, infinite impulse response (IIR)
filtering, moving average (MA) filtering, autoregressive (AR)
filtering, autoregressive moving averaging (ARMA) filtering,
selective filtering, adaptive filtering, an interpolation,
decimation, subsampling, upsampling, resampling, time correction,
time base correction, phase correction, magnitude correction, phase
cleaning, magnitude cleaning, enhancement, restoration,
preprocessing, postprocessing, denoising, smoothing, enhancement,
restoration, spectral analysis, signal conditioning, timing
correction, timing compensation, phase offset compensation, a
transformation, linear transform, nonlinear transform, inverse
transform, frequency transform, inverse frequency transform,
Fourier transform (FT), discrete time FT (DTFT), discrete FT (DFT),
fast FT (FFT), wavelet transform, Laplace transform, Hilbert
transform, Hadamard transform, trigonometric transform, sine
transform, cosine transform, DCT, power-of-2 transform, sparse
transform, graph-based transform, graph signal processing, fast
transform, a transform combined with zero padding, cyclic padding,
padding, zero padding, sorting, thresholding, soft thresholding,
hard thresholding, clipping, soft clipping, first derivative,
second order derivative, high order derivative, convolution,
multiplication, division, addition, subtraction, integration,
optimization, maximization, minimization, least mean square error,
recursive least square, constrained least square, batch least
square, least absolute error, least mean square deviation, least
absolute deviation, a local maximization, local minimization,
optimization of a cost function, labeling, comparison of CI,
similarity score computation, quantization, matching pursuit,
compression, encryption, coding, storing, normalization, temporal
normalization, frequency domain normalization, tagging, learning,
learning network, mapping, remapping, expansion, storing,
retrieving, transmitting, receiving, representing, merging,
combining, splitting, matched filtering, Kalman filtering, particle
filtering, extrapolation, histogram estimation, importance
sampling, Monte Carlo sampling, compressive sensing, representing,
merging, combining, splitting, scrambling, error protection,
forward error correction, time varying processing, conditioning,
averaging, weighted averaging, arithmetic mean, geometric mean,
harmonic mean, averaging over selected frequency, averaging over
antenna links, logical operation, permutation, combination,
sorting, AND, OR, XOR, union, intersection, vector addition, vector
subtraction, vector multiplication, vector division, inverse, norm,
and distance.
19. The apparatus of claim 1, wherein: a second transmitter is
configured for transmitting a second wireless signal asynchronously
through the wireless multipath channel in the venue; and a second
receiver is configured for: receiving the second wireless signal
through the wireless multipath channel, and obtaining a second TSCI
of the wireless multipath channel asynchronously based on the
second wireless signal.
20. The apparatus of claim 19, wherein at least one of the second
transmitter and the second receiver is part of a transceiver that
covers one of the transmitter and the receiver.
21. The apparatus of claim 19, wherein the processor is further
configured for: computing a second information associated with the
object individually based on the second TSCI; and combining the
information computed based on the TSCI and the second information
computed based on the second TSCI.
22. The apparatus of claim 19, wherein the processor is configured
for: computing the information associated with the object jointly
based on the TSCI and the second TSCI.
23. A system for monitoring an object expression, comprising: a
first transceiver configured for transmitting a wireless signal
through a wireless multipath channel that is impacted by an
expression of an object in a venue, wherein the object has at least
one movable part and is expressed in the expression with respect to
a setup in the venue; a second transceiver configured for:
receiving the wireless signal through the wireless multipath
channel, and obtaining a time series of channel information (TSCI)
of the wireless multipath channel based on the wireless signal; and
a processor configured for: computing information associated with
the object based at least partially on the TSCI obtained when the
object is expressed in the expression, performing an analysis of at
least one of the TSCI and the information associated with the
object, and performing, based on the analysis, a task associated
with at least one of the object and the venue.
24. The system of claim 23, further comprising: a sensor configured
for receiving an input associated with the object, wherein the
processor is further configured for computing, based on the input
associated with the object, at least one of: a prediction, a
reference information and an auxiliary information, wherein the
information associated with the object is computed based on the
TSCI and at least one of: the prediction, the reference information
and the auxiliary information.
25. The system of claim 23, wherein the processor is further
configured for: computing a second information asynchronously based
on the TSCI; and computing a third information based on the
information and the second information.
26. A method, implemented by a processor, a memory communicatively
coupled with the processor, and a set of instructions stored in the
memory to be executed by the processor for monitoring an object
expression, comprising: obtaining a time series of channel
information (TSCI) of a wireless multipath channel based on a
wireless signal, wherein the wireless signal is transmitted from a
first wireless device to a second wireless device through the
wireless multipath channel that is impacted by an expression of an
object in a venue, the object has at least one movable part and is
expressed in the expression with respect to a setup in the venue;
computing information associated with the object based at least
partially on the TSCI obtained when the object is expressed in the
expression; and performing, based on the information associated
with the object, a task associated with at least one of the object
and the venue, wherein the expression represents at least one of: a
place in the venue, an identifiable place, a region, area, spatial
coordinate, orientation, presentation, manifestation, dynamic
expression, motion, static expression, positioning, scale,
placement, state, gesture, pose, posture, body language, body
expression, head expression, face expression, vocal expression, arm
expression, hand expression, leg expression, and a sequence of
expressions of the object.
27. The method of claim 26, further comprising: computing the
information repeatedly; communicating a data to at least one of:
the first wireless device, the second wireless device, a server, a
local server, a cloud server, and a user device, in at least one
of: a direct manner and an indirect manner, wherein the data
comprises at least one of: the TSCI, an analysis of the TSCI, a
data associated with the TSCI, the repeatedly computed information,
an analysis of the information, a data associated with the
information, a history of the information, a time trend of the
information, a behavior of the information, a change, a second
information computed based on the continuously computed
information, a summary of the task, a report of task, a data
associated with the task, an analysis of the task, and a data
associated with an outcome of the task; and providing, to a user
device associated with the object, an analytics computed based on
the data.
28. The method of claim 26, further comprising: receiving a data
from a user device, wherein at least one of: the data comprises at
least one of: a command, instruction, message, media, text, image,
video, sound, audio, animation, parameter, setting, and control
data, the data is associated with at least one of: the first
wireless device, the second wireless device, the wireless signal,
the TSCI, the object, the setup, the venue, and a controller, the
wireless signal is transmitted based on the data, the TSCI is
obtained based on the data, and the information associated with the
object is computed based on the data.
29. The method of claim 26, further comprising: monitoring the
object in the venue based on an analysis of the TSCI, wherein the
information associated with the object is computed based on the
monitoring, the monitoring comprises monitoring at least one of the
following associated with the object: a static characteristics,
dynamic characteristics, motion, movement, a presence, absence,
appearing, disappearing, approaching, receding, a periodic motion,
transient motion, repeating motion, stochastic motion,
characteristics of motion, intensity, timing, duration, a behavior,
trend, daily activity, normal activity, deviation from normal
activity, change, activity level, activity measure, a location,
positioning, pose, distance, speed, acceleration, walking distance,
an event, fall-down event, pacing back and forth, pacing from one
end to another, pacing from one point to another, wandering,
running, fight, a physical condition, heart beat, breathing rate,
vital sign, temperature, emotion state, mental state, physical
state, anxiety, calmness, restlessness, alertness, responsiveness,
tiredness, sleepiness, an identity, identification, count, class,
group, age, companion, information of the companion, a sleeping
condition, sleep quality, sleep measure, sign of sickness, sign of
sleepiness, eye blinking, nodding of head, symptom, sign of danger,
sign of need, sign of a body condition, an emotion, expression,
facial expression, body language, gesture, gait, head motion,
shoulder motion, limb motion, arm motion, hand motion, finger
motion, handwriting, brush stroke, and keystroke.
30. The method of claim 26, further comprising configuring the
first wireless device and the second wireless device such that: the
wireless signal transmitted through the multipath channel is
compatible with at least one of: a standard, wireless local area
network (WLAN) standard, wireless communication standard, mobile
communication standard, wireless network standard, an international
standard, national standard, industry standard, defacto standard,
an IEEE standard, IEEE 802 standard, 802.11, 802.11n, 802.11ac,
802.11ax, 802.11be, 802.15, 802.16, WiFi standard, mesh, 3GPP
standard, LTE, 3G, 4G, 5G, 6G, 7G, 8G, UWB, Bluetooth, BLE, RFID,
and another standard; the wireless signal comprises at least one
of: a wireless communication signal, mobile communication signal,
wireless network signal, mobile network signal, mesh signal, light
signal, light communication, downlink signal, uplink signal,
broadcast signal, multicast signal, unicast signal, bandlimited
signal, standard compliant signal, wireless standard compliant
signal, a protocol signal, standardized wireless protocol,
communication protocol, wireless communication network signal,
cellular network signal, beacon signal, beacon wireless signal,
pilot signal, probe signal, acknowledgement signal, response
signal, reply signal, reference signal, source signal, wireless
source signal, motion probes, motion detection signal, motion
sensing signal, synchronization signal, a standard compliant
wireless frame, management frame, control frame, data frame, data
frame with null data, 802.11 frame, 802.15 frame, 802.16 frame, LTE
frame, 4G frame, 5G frame, 6G frame, a 3GPP signal,
LTE/3G/4G/5G/6G/7G/8G signal, WiFi signal, IEEE 802 signal, IEEE
802.11/15/16 signal, RFID signal, Bluetooth signal, BLE signal, UWB
signal, Zigbee signal, WiMax signal, an RF signal in licensed band,
an RF signal in unlicensed band, an RF signal in ISM band; the
wireless signal has a bandwidth and a carrier frequency supported
by both the first wireless device and the second wireless device;
and the wireless signal is transmitted with N1 antennas of the
first wireless device and received with N2 antennas of the second
wireless device.
Description
CROSS-REFERENCE TO RELATED APPLICATIONS
[0001] The present application hereby incorporates by reference the
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application Ser. No. 16/203,317, entitled "APPARATUS, SYSTEMS AND
METHODS FOR FALL-DOWN DETECTION BASED ON A WIRELESS SIGNAL", filed
on Nov. 28, 2018, [0045] (20) which claims priority to U.S.
Provisional Patent application 62/806,688, entitled "METHOD,
APPARATUS, AND SYSTEM FOR WIRELESS GAIT RECOGNITION", filed on Feb.
15, 2019, [0046] (21) which claims priority to U.S. Provisional
Patent application 62/806,694, entitled "METHOD, APPARATUS, AND
SYSTEM FOR OUTDOOR TARGET TRACKING", filed on Feb. 15, 2019, [0047]
(22) which claims priority to U.S. Provisional Patent application
62/846,686, entitled "METHOD, APPARATUS, AND SYSTEM FOR WIRELESS
INERTIAL MEASUREMENT", filed on May 12, 2019, [0048] (23) which
claims priority to U.S. Provisional Patent application 62/846,688,
entitled "Method, Apparatus, and System for Processing and
Presenting Life Log based on a Wireless Signal", filed on May 12,
2019, [0049] (24) which claims priority to U.S. Provisional Patent
application 62/849,853, entitled "Method, Apparatus, and System for
Wireless Artificial Intelligent in Smart Car", filed on May 18,
2019, [0050] (o) U.S. Provisional Patent application 62/868,782,
entitled "METHOD, APPARATUS, AND SYSTEM FOR VITAL SIGNS MONITORING
USING HIGH FREQUENCY WIRELESS SIGNALS", filed on Jun. 28, 2019,
[0051] (p) U.S. Provisional Patent application 62/873,781, entitled
"METHOD, APPARATUS, AND SYSTEM FOR IMPROVING TOPOLOGY OF WIRELESS
SENSING SYSTEMS", filed on Jul. 12, 2019, [0052] (q) U.S.
Provisional Patent application 62/900,565, entitled "QUALIFIED
WIRELESS SENSING SYSTEM", filed on Sep. 15, 2019, [0053] (r) U.S.
Provisional Patent application 62/902,357, entitled "METHOD,
APPARATUS, AND SYSTEM FOR AUTOMATIC AND OPTIMIZED DEVICE-TO-CLOUD
CONNECTION FOR WIRELESS SENSING", filed on Sep. 18, 2019.
TECHNICAL FIELD
[0054] The present teaching generally relates to human
identification and motion detection. More specifically, the present
teaching relates to identifying the authorized driver in a car by
recognizing his/her radio biometrics, and detecting human motion
present indoors, based on wireless channel information in a
rich-scattering environment.
BACKGROUND
[0055] Automobiles have become an essential part of everyday lives.
In the era of Internet of Things (IoT), by deploying tremendous
connected smart devices and analyzing the gathered data, IoT
enables evolutionary changes in every aspect of people's daily
life, including the emerging smart automobiles. One of the
important and interesting aspects of smart automobiles is driver
authentication which enables automatic adjustment of internal
settings in automobiles such as seat and mirror positions,
temperature etc., which are specific to an individual and can be
operated without the need for a key.
[0056] Traditional approaches such as fingerprint matching, face
recognition, iris technology and many more, mostly utilize
techniques of image processing or computer vision to identify
people. Human identification has also been done by observing the
gait of a person, which is inapplicable in cars. All these
techniques require video or images taken from a camera to perform
human identification and have the drawback of potential privacy
leakage.
SUMMARY
[0057] The present teaching generally relates in-car driver
authentication and indoor motion detection. More specifically, the
present teaching relates to 1) identifying and recognizing the
radio biometrics of the driver in a car, and 2) monitoring existent
motion and its strength based on time-reversal technology in a
rich-scattering environment, e.g. a closed automobile environment,
an indoor environment or urban metropolitan area, enclosed
environment, underground environment, etc.
[0058] In one embodiment, an apparatus in a venue for monitoring an
object expression is described. The apparatus comprises: a receiver
and a processor. The receiver is configured for: receiving a
wireless signal from a transmitter through a wireless multipath
channel that is impacted by an expression of an object in the
venue, wherein the object has at least one movable part and is
expressed in the expression with respect to a setup in the venue;
and obtaining a time series of channel information (TSCI) of the
wireless multipath channel based on the wireless signal received by
the receiver. The processor is configured for computing information
associated with the object based at least partially on the TSCI
obtained when the object is expressed in the expression, and
performing, based on the information associated with the object, a
task associated with at least one of the object and the venue.
[0059] In one embodiment, the expression comprises at least one of:
an anticipated expression, a controlled expression, a
pre-determined expression, a designated expression, a targeted
expression, a predicted expression, and an expected expression. In
one embodiment, the expression represents at least one of: a place
in the venue, an identifiable place, a region, area, spatial
coordinate, orientation, presentation, manifestation, dynamic
expression, motion, static expression, positioning, scale,
placement, state, gesture, pose, posture, body language, body
expression, head expression, face expression, vocal expression, arm
expression, hand expression, leg expression, and a sequence of
expressions of the object.
[0060] In another embodiment, a system for monitoring an object
expression is described. The system comprises: a first transceiver,
a second transceiver, and a processor. The first transceiver is
configured for transmitting a wireless signal through a wireless
multipath channel that is impacted by an expression of an object in
a venue, wherein the object has at least one movable part and is
expressed in the expression with respect to a setup in the venue.
The second transceiver is configured for: receiving the wireless
signal through the wireless multipath channel, and obtaining a time
series of channel information (TSCI) of the wireless multipath
channel based on the wireless signal. The processor is configured
for: computing information associated with the object based at
least partially on the TSCI obtained when the object is expressed
in the expression, performing an analysis of at least one of the
TSCI and the information associated with the object, and
performing, based on the analysis, a task associated with at least
one of the object and the venue.
[0061] In yet another embodiment, a method, implemented by a
processor, a memory communicatively coupled with the processor, and
a set of instructions stored in the memory to be executed by the
processor for monitoring an object expression, is described. The
method comprises: obtaining a time series of channel information
(TSCI) of a wireless multipath channel based on a wireless signal,
wherein the wireless signal is transmitted from a first wireless
device to a second wireless device through the wireless multipath
channel that is impacted by an expression of an object in a venue,
the object has at least one movable part and is expressed in the
expression with respect to a setup in the venue; computing
information associated with the object based at least partially on
the TSCI obtained when the object is expressed in the expression;
and performing, based on the information associated with the
object, a task associated with at least one of the object and the
venue. The expression represents at least one of: a place in the
venue, an identifiable place, a region, area, spatial coordinate,
orientation, presentation, manifestation, dynamic expression,
motion, static expression, positioning, scale, placement, state,
gesture, pose, posture, body language, body expression, head
expression, face expression, vocal expression, arm expression, hand
expression, leg expression, and a sequence of expressions of the
object.
[0062] Other concepts relate to software for implementing the
present teaching on human identification based on time-reversal
technology in a rich-scattering environment. Additional novel
features will be set forth in part in the description which
follows, and in part will become apparent to those skilled in the
art upon examination of the following and the accompanying drawings
or may be learned by production or operation of the examples. The
novel features of the present teachings may be realized and
attained by practice or use of various aspects of the
methodologies, instrumentalities and combinations set forth in the
detailed examples discussed below.
BRIEF DESCRIPTION OF DRAWINGS
[0063] The methods, systems, and/or devices described herein are
further described in terms of exemplary embodiments. These
exemplary embodiments are described in detail with reference to the
drawings. These embodiments are non-limiting exemplary embodiments,
in which like reference numerals represent similar structures
throughout the several views of the drawings.
[0064] FIG. 1 illustrates exemplary experimental results of the
time reversal resonating strength (TRRS) values between the Day 0
environment and the subsequent environments recorded in 90 days in
a car, according to some embodiments of the present teaching.
[0065] FIG. 2 illustrates exemplary experimental results of the
TRRS values between the radio biometrics (channel state
information) of two individuals captured at Day A and Day B when
the empty car environment changes a lot as indicated by the TRRS
value, according to some embodiments of the present teaching.
[0066] FIG. 3 illustrates an exemplary experiment setting of Smart
Car with the Origin (RX) and the Bot (TX) placed inside the car,
according to some embodiments of the present teaching.
[0067] FIG. 4 illustrates an exemplary validation technique of
k-fold validation that is used in the disclosed Smart Car system,
according to some embodiments of the present teaching.
[0068] FIG. 5 illustrates exemplary experimental results of the
mean of accuracies for different number of nearest neighbors
adopted in the KNN evaluation method used in the disclosed Smart
Car system, according to some embodiments of the present
teaching.
[0069] FIG. 6 illustrates exemplary experimental results of the
standard deviation of accuracies for different number of nearest
neighbors adopted in the KNN evaluation method used in the
disclosed Smart Car system, according to some embodiments of the
present teaching.
[0070] FIG. 7 illustrates exemplary neural network architecture
used in the disclosed Smart Car system with two fully connected
hidden layers and rectified linear unit (ReLU), according to some
embodiments of the present teaching.
[0071] FIG. 8 illustrates exemplary the disclosed grouping
mechanism for a neural network used in the disclosed Smart Car
system with two fully connected hidden layers and ReLU, according
to some embodiments of the present teaching.
[0072] FIG. 9 illustrates exemplary experimental results of the
increasing trend of the moving average of the identification
accuracy for a neural network model with the training data amount
increases along the time, according to some embodiments of the
present teaching.
[0073] FIG. 10 illustrates a flow chart of an exemplary method for
monitoring an object expression, according to some embodiments of
the present teaching.
[0074] FIG. 11 illustrates an exemplary frequency hopping
mechanism, according to some embodiments of the present
teaching.
DETAILED DESCRIPTION
[0075] In the following detailed description, numerous specific
details are set forth by way of examples in order to provide a
thorough understanding of the relevant teachings. However, it
should be apparent to those skilled in the art that the present
teachings may be practiced without such details. In other
instances, well known methods, procedures, components, and/or
circuitry have been described at a relatively high-level, without
detail, in order to avoid unnecessarily obscuring aspects of the
present teachings.
[0076] In one embodiment, the present teaching discloses a method,
apparatus, device, system, and/or software
(method/apparatus/device/system/software) of a wireless monitoring
system. A time series of channel information (CI) of a wireless
multipath channel (channel) may be obtained using a processor, a
memory communicatively coupled with the processor and a set of
instructions stored in the memory. The time series of CI (TSCI) may
be extracted from a wireless signal (signal) transmitted between a
Type 1 heterogeneous wireless device (Type 1 device, or TX device)
and a Type 2 heterogeneous wireless device (Type 2 device, or RX
device) in a venue through the channel. The channel may be impacted
by a motion (or movement or a change/variation in
position/location) of an object in the venue. A characteristics
and/or a spatial-temporal information (e.g. motion information) of
the object and/or of the motion of an object may be monitored based
on the TSCI. A task may be performed based on the characteristics
and/or the spatial-temporal information (e.g. motion information).
A presentation associated with the task may be generated in a
user-interface (UI) on a device of a user. The TSCI may be
preprocessed.
[0077] The wireless signal may comprise: transmitted signal,
received signal of the transmitted wireless signal, time series of
probe signals, RF signal, RF transmission, baseband signal,
downlink signal, uplink signal, broadcast signal, bandlimited
signal, standard compliant signal, wireless standard compliant
signal, protocol signal, wireless communication network signal,
cellular network signal, WiFi signal, LTE/5G/6G/7G signal, beacon
signal, beacon wireless signal, reference signal, source signal,
wireless source signal, motion probes, motion detection signal,
motion sensing signal and/or synchronization signal.
[0078] The wireless multipath channel may comprise: a channel of
wireless communication network (e.g. WLAN, WiFi, wireless mesh
network), cellular communication network (e.g. LTE/5G),
ultra-wideband (UWB) network, microwave network, a frequency
channel (e.g. in WiFi/LTE/5G), a coded channel (e.g. in CDMA),
and/or another system. It may comprise more than one "consecutive"
channels (perhaps heterogeneous, e.g. a WiFi channel and a UWB
channel) whose frequency bands overlap. It may also comprise more
than one non-consecutive channels (e.g. a WiFi channel at 2.4 GHz
and a WiFi channel at 5 GHz) whose frequency bands are disjoint
(i.e. do not overlap).
[0079] The Type 1 device may comprise: transmitter, RF interface,
RF transmitter subsystem, TX device, transceiver, "Origin
Satellite", broadcasting device, source device, hub device,
wireless source device, wireless communication device, and/or
receiver. The Type 1 device or the TX device may have one or more
radio, e.g. a 2.4 GHz radio, a 5 GHz radio, a front haul radio, a
backhaul radio. It may be a mesh router. The Type 1 device may
comprise a modem. The Type 1 device may comprise RF front end
and/or RF/radio chip to send the wireless signal. The Type 1 device
may transmit the wireless signal to the Type 2 device and
communicate wireless (and/or cellular) network traffic in another
channel in parallel. The Type 1 device may be a wireless (and/or
cellular) access point (WAP) device.
[0080] The Type 2 device may comprise: receiver, RF interface, RF
receiver subsystem, RX device, transceiver, "Tracker Bot", receiver
of broadcasting service (e.g. of the Type 1 device), sensor device,
remote sensor device, wireless sensor device, wireless
communication device, destination device, hub device, target
device, motion detection device, and/or transmitter. The Type 2
device may comprise RF front end and/or RF/radio chip to receive
the wireless signal. The Type 2 device may passively
observe/monitoring the wireless signal (and/or wireless/cellular
communication network signals, wireless/cellular signals exchanged,
etc.) from the Type 1 device without establishing connection with
or requesting service from the Type 1 device (and/or the wireless
communication network). In an example, the Type 1 device may be
communicating with another wireless device(s) (e.g. in the venue).
The Type 1 device may send/communicate the wireless signal (and/or
wireless/cellular communication network signals, wireless/cellular
signals exchanged, etc.) during communication with the another
device(s), and the Type 2 device may monitor the communication
(and/or wireless/cellular communication network signals,
wireless/cellular signals exchanged, etc.) passively to obtain TSCI
of the channel between the Type 1 device and the Type 2 device. The
Type 2 device may
obtain/store/retrieve/access/preprocess/condition/process/analyze/monitor-
/apply the TSCI. The Type 2 device may comprise a modem. The Type 2
device may receive the wireless signal from the Type 1 device and
communicate wireless (and/or cellular) network traffic in another
channel in parallel. The Type 2 device may be a wireless (and/or
cellular) access point (WAP) device.
[0081] The Type 1 device (e.g. TX device) may function as/play the
role of Type 2 device (e.g. RX device) temporarily, sporadically,
continuously, repeatedly, simultaneously, concurrently, and/or
contemporaneously, and vice versa. A device may function as Type 1
device and/or a Type 2 device temporarily, sporadically,
simultaneously, concurrently, and/or contemporaneously.
[0082] The task may be performed passively and/or actively. It may
be passive because the user may not need to carry any wearables
(i.e. the Type 1 device and the Type 2 device are not wearable
devices that the user need to carry in order perform the task). It
may be active because the user may carry a device (e.g. the Type 1
device, the Type 2 device, a device communicatively coupled with
either the Type 1 device or the Type 2 device). The presentation
may be visual, audio, image, video, animation, graphical
presentation, text, etc. A computation of the task may be performed
by a processor of the Type 1 device, a processor of an IC of the
Type 1 device, a processor of the Type 2 device, a processor of an
IC of the Type 2 device, a local server, a cloud server, a data
analysis subsystem, a signal analysis subsystem, and/or another
processor.
[0083] The TSCI may be extracted from a derived signal (e.g.
baseband signal, motion detection signal, motion sensing signal)
derived from the wireless signal (e.g. RF signal). The derived
signal may comprise a packet with a header and a payload. The probe
signal may reside in the header and/or the payload. The motion
detection signal and/or motion sensing signal may be
recognized/identified base on the header. The packet may comprise a
control data and/or a motion detection probe. A data (e.g.
ID/parameters/characteristics/settings/control
signal/command/instruction/notification/broadcasting-related
information of the Type 1 device) may be obtained from the payload.
The wireless signal may be transmitted by the Type 1 device. It may
be received by the Type 2 device. A database (e.g. in local server,
hub device, cloud server, storage network, etc.) may be used to
store the TSCI, characteristics, spatial-temporal information,
signatures, patterns, behaviors, trends, parameters, analytics,
identification information, user information, device information,
channel information, venue (e.g. map, network, proximity
devices/networks) information, task information, class/category
information, presentation (e.g. UI) information, and/or other
information.
[0084] The Type 1 device (TX device) may comprise at least one
heterogeneous wireless transmitter. The Type 2 device (RX device)
may comprise at least one heterogeneous wireless receiver. The Type
1 device and the Type 2 device may be the same device. Any device
may have a data processing unit/apparatus, a computing unit/system,
a network unit/system, a processor, a memory communicatively
coupled with the processor, and a set of instructions stored in the
memory to be executed by the processor. Some processors, memories
and sets of instructions may be coordinated.
[0085] There may be multiple Type 1 devices interacting with the
same Type 2 device (or multiple Type 2 devices), and/or there may
be multiple Type 2 devices interacting with the same Type 1 device.
The multiple Type 1 devices/Type 2 devices may be synchronized
and/or asynchronous, with same/different window width/size and/or
time shift, same/different synchronized start time, synchronized
end time, etc. Wireless signals sent by the multiple Type 1 devices
may be sporadic, temporary, continuous, repeated, synchronous,
simultaneous, concurrent, and/or contemporaneous. The multiple Type
1 devices/Type 2 devices may operate independently and/or
collaboratively. A Type 1 and/or Type 2 device may have/comprise/be
heterogeneous hardware circuitry (e.g. a heterogeneous chip or a
heterogeneous IC capable of generating/receiving the wireless
signal, extracting CI from received signal, or making the CI
available). They may be communicatively coupled to same or
different servers (e.g. cloud server, edge server, local server,
hub device).
[0086] Operation of one device may be based on operation, state,
internal state, storage, processor, memory output, physical
location, computing resources, network of another device.
Difference devices may communicate directly, and/or via another
device/server/hub device/cloud server. The devices may be
associated with one or more users, with associated settings. The
settings may be chosen once, pre-programmed, and/or changed (e.g.
adjusted, varied, modified)/varied over time. There may be
additional steps in the method. The steps and/or the additional
steps of the method may be performed in the order shown or in
another order. Any steps may be performed in parallel, iterated, or
otherwise repeated or performed in another manner. A user may be
human, adult, older adult, man, woman, juvenile, child, baby, pet,
animal, creature, machine, computer module/software, etc.
[0087] In the case of one or multiple Type 1 devices interacting
with one or multiple Type 2 devices, any processing (e.g. time
domain, frequency domain) may be different for different devices.
The processing may be based on locations, orientation, direction,
roles, user-related characteristics, settings, configurations,
available resources, available bandwidth, network connection,
hardware, software, processor, co-processor, memory, battery life,
available power, antennas, antenna types,
directional/unidirectional characteristics of the antenna, power
setting, and/or other parameters/characteristics of the
devices.
[0088] The wireless receiver (e.g. Type 2 device) may receive the
signal and/or another signal from the wireless transmitter (e.g.
Type 1 device). The wireless receiver may receive another signal
from another wireless transmitter (e.g. a second Type 1 device).
The wireless transmitter may transmit the signal and/or another
signal to another wireless receiver (e.g. a second Type 2 device).
The wireless transmitter, wireless receiver, another wireless
receiver and/or another wireless transmitter may be moving with the
object and/or another object. The another object may be
tracked.
[0089] The Type 1 and/or Type 2 device may be capable of wirelessly
coupling with at least two Type 2 and/or Type 1 devices. The Type 1
device may be caused/controlled to switch/establish wireless
coupling from the Type 2 device to a second Type 2 device at
another location in the venue. Similarly, the Type 2 device may be
caused/controlled to switch/establish wireless coupling from the
Type 1 device to a second Type 1 device at yet another location in
the venue. The switching may be controlled by a server (or a hub
device), the processor, the Type 1 device, the Type 2 device,
and/or another device. The radio used before and after switching
may be different. A second wireless signal (second signal) may be
caused to be transmitted between the Type 1 device and the second
Type 2 device (or between the Type 2 device and the second Type 1
device) through the channel. A second TSCI of the channel extracted
from the second signal may be obtained. The second signal may be
the first signal. The characteristics, spatial-temporal information
and/or another quantity of the object may be monitored based on the
second TSCI. The Type 1 device and the Type 2 device may be the
same. The characteristics, spatial-temporal information and/or
another quantity with different time stamps may form a waveform.
The waveform may be displayed in the presentation.
[0090] The wireless signal and/or another signal may have data
embedded. The wireless signal may be a series of probe signals
(e.g. a repeated transmission of probe signals). The probe signals
may change/vary over time. A probe signal may be a standard
compliant signal, protocol signal, control signal, data signal,
wireless communication network signal, cellular network signal,
WiFi signal, LTE/5G/6G/7G signal, reference signal, beacon signal,
motion detection signal, and/or motion sensing signal. A probe
signal may be formatted according to a wireless network standard
(e.g. WiFi), a cellular network standard (e.g. LTE/5G/6G), or
another standard. A probe signal may comprise a packet with a
header and a payload. A probe signal may have data embedded. The
payload may comprise data. A probe signal may be replaced by a data
signal. The probe signal may be embedded in a data signal. The
wireless receiver, wireless transmitter, another wireless receiver
and/or another wireless transmitter may be associated with at least
one processor, memory communicatively coupled with respective
processor, and/or respective set of instructions stored in the
memory which when executed cause the processor to perform any
and/or all steps needed to determine the spatial-temporal
information (e.g. motion information), initial spatial-temporal
information, initial time, direction, instantaneous location,
instantaneous angle, and/or speed, of the object.
[0091] The processor, the memory and/or the set of instructions may
be associated with the Type 1 heterogeneous wireless transceiver,
one of the at least one Type 2 heterogeneous wireless transceiver,
the object, a device associated with the object, another device
associated with the venue, a cloud server, a hub device, and/or
another server.
[0092] The Type 1 device may transmit the signal in a broadcasting
manner to at least one Type 2 device(s) through the channel in the
venue. The signal is transmitted without the Type 1 device
establishing wireless connection (connection) with any Type 2
device, and without any Type 2 device requesting services from the
Type 1 device.
[0093] The Type 1 device may transmit to a particular media access
control (MAC) address common for more than one Type 2 devices. Each
Type 2 device may adjust its MAC address to the particular MAC
address.
[0094] The particular MAC address may be associated with the venue.
The association may be recorded in an association table of an
Association Server (e.g. hub device). The venue may be identified
by the Type 1 device, a Type 2 device and/or another device based
on the particular MAC address, the series of probe signals, and/or
the at least one TSCI extracted from the probe signals.
[0095] For example, a Type 2 device may be moved to a new location
in the venue (e.g. from another venue). The Type 1 device may be
newly set up in the venue such that the Type 1 and Type 2 devices
are not aware of each other. During set up, the Type 1 device may
be instructed/guided/caused/controlled (e.g. using dummy receiver,
using hardware pin setting/connection, using stored setting, using
local setting, using remote setting, using downloaded setting,
using hub device, or using server) to send the series of probe
signals to the particular MAC address. Upon power up, the Type 2
device may scan for probe signals according to a table of MAC
addresses (e.g. stored in a designated source, server, hub device,
cloud server) that may be used for broadcasting at different
locations (e.g. different MAC address used for different venue such
as house, office, enclosure, floor, multi-story building, store,
airport, mall, stadium, hall, station, subway, lot, area, zone,
region, district, city, country, continent). When the Type 2 device
detects the probe signals sent to the particular MAC address, the
Type 2 device can use the table to identify the venue based on the
MAC address.
[0096] A location of a Type 2 device in the venue may be computed
based on the particular MAC address, the series of probe signals,
and/or the at least one TSCI obtained by the Type 2 device from the
probe signals. The computing may be performed by the Type 2
device.
[0097] The particular MAC address may be changed (e.g. adjusted,
varied, modified) over time. It may be changed according to a time
table, rule, policy, mode, condition, situation and/or change. The
particular MAC address may be selected based on availability of the
MAC address, a pre-selected list, collision pattern, traffic
pattern, data traffic between the Type 1 device and another device,
effective bandwidth, random selection, and/or a MAC address
switching plan. The particular MAC address may be the MAC address
of a second wireless device (e.g. a dummy receiver, or a receiver
that serves as a dummy receiver).
[0098] The Type 1 device may transmit the probe signals in a
channel selected from a set of channels. At least one CI of the
selected channel may be obtained by a respective Type 2 device from
the probe signal transmitted in the selected channel.
[0099] The selected channel may be changed (e.g. adjusted, varied,
modified) over time. The change may be according to a time table,
rule, policy, mode, condition, situation, and/or change. The
selected channel may be selected based on availability of channels,
random selection, a pre-selected list, co-channel interference,
inter-channel interference, channel traffic pattern, data traffic
between the Type 1 device and another device, effective bandwidth
associated with channels, security criterion, channel switching
plan, a criterion, a quality criterion, a signal quality condition,
and/or consideration.
[0100] The particular MAC address and/or an information of the
selected channel may be communicated between the Type 1 device and
a server (e.g. hub device) through a network. The particular MAC
address and/or the information of the selected channel may also be
communicated between a Type 2 device and a server (e.g. hub device)
through another network. The Type 2 device may communicate the
particular MAC address and/or the information of the selected
channel to another Type 2 device (e.g. via mesh network, Bluetooth,
WiFi, NFC, ZigBee, etc.). The particular MAC address and/or
selected channel may be chosen by a server (e.g. hub device). The
particular MAC address and/or selected channel may be signaled in
an announcement channel by the Type 1 device, the Type 2 device
and/or a server (e.g. hub device). Before being communicated, any
information may be pre-processed.
[0101] Wireless connection between the Type 1 device and another
wireless device may be established (e.g. using a signal handshake).
The Type 1 device may send a first handshake signal (e.g. sounding
frame, probe signal, request-to-send RTS) to the another device.
The another device may reply by sending a second handshake signal
(e.g. a command, or a clear-to-send CTS) to the Type 1 device,
triggering the Type 1 device to transmit the signal (e.g. series of
probe signals) in the broadcasting manner to multiple Type 2
devices without establishing connection with any Type 2 device. The
second handshake signals may be a response or an acknowledge (e.g.
ACK) to the first handshake signal. The second handshake signal may
contain a data with information of the venue, and/or the Type 1
device.
[0102] The another device may be a dummy device with a purpose
(e.g. primary purpose, secondary purpose) to establish the wireless
connection with the Type 1 device, to receive the first signal,
and/or to send the second signal. The another device may be
physically attached to the Type 1 device.
[0103] In another example, the another device may send a third
handshake signal to the Type 1 device triggering the Type 1 device
to broadcast the signal (e.g. series of probe signals) to multiple
Type 2 devices without establishing connection with any Type 2
device. The Type 1 device may reply to the third special signal by
transmitting a fourth handshake signal to the another device.
[0104] The another device may be used to trigger more than one Type
1 devices to broadcast. The triggering may be sequential, partially
sequential, partially parallel, or fully parallel. The another
device may have more than one wireless circuitries to trigger
multiple transmitters in parallel. Parallel trigger may also be
achieved using at least one yet another device to perform the
triggering (similar to what as the another device does) in parallel
to the another device.
[0105] The another device may not communicate (or suspend
communication) with the Type 1 device after establishing connection
with the Type 1 device. Suspended communication may be resumed. The
another device may enter an inactive mode, hibernation mode, sleep
mode, stand-by mode, low-power mode, OFF mode and/or power-down
mode, after establishing the connection with the Type 1 device.
[0106] The another device may have the particular MAC address so
that the Type 1 device sends the signal to the particular MAC
address. The Type 1 device and/or the another device may be
controlled and/or coordinated by a first processor associated with
the Type 1 device, a second processor associated with the another
device, a third processor associated with a designated source
and/or a fourth processor associated with another device. The first
and second processors may coordinate with each other.
[0107] A first series of probe signals may be transmitted by a
first antenna of the Type 1 device to at least one first Type 2
device through a first channel in a first venue. A second series of
probe signals may be transmitted by a second antenna of the Type 1
device to at least one second Type 2 device through a second
channel in a second venue. The first series and the second series
may/may not be different. The at least one first Type 2 device
may/may not be different from the at least one second Type 2
device. The first and/or second series of probe signals may be
broadcasted without connection established between the Type 1
device and any Type 2 device. The first and second antennas may be
same/different.
[0108] The two venues may have different sizes, shape, multipath
characteristics. The first and second venues may overlap. The
respective immediate areas around the first and second antennas may
overlap. The first and second channels may be same/different. For
example, the first one may be WiFi while the second may be LTE. Or,
both may be WiFi, but the first one may be 2.4 GHz WiFi and the
second may be 5 GHz WiFi. Or, both may be 2.4 GHz WiFi, but have
different channel numbers, SSID names, and/or WiFi settings.
[0109] Each Type 2 device may obtain at least one TSCI from the
respective series of probe signals, the CI being of the respective
channel between the Type 2 device and the Type 1 device.
[0110] Some first Type 2 device(s) and some second Type 2 device(s)
may be the same. The first and second series of probe signals may
be synchronous/asynchronous. A probe signal may be transmitted with
data or replaced by a data signal. The first and second antennas
may be the same.
[0111] The first series of probe signals may be transmitted at a
first rate (e.g. 30 Hz). The second series of probe signals may be
transmitted at a second rate (e.g. 200 Hz). The first and second
rates may be same/different. The first and/or second rate may be
changed (e.g. adjusted, varied, modified) over time. The change may
be according to a time table, rule, policy, mode, condition,
situation, and/or change. Any rate may be changed (e.g. adjusted,
varied, modified) over time.
[0112] The first and/or second series of probe signals may be
transmitted to a first MAC address and/or second MAC address
respectively. The two MAC addresses may be same/different. The
first series of probe signals may be transmitted in a first
channel. The second series of probe signals may be transmitted in a
second channel. The two channels may be same/different. The first
or second MAC address, first or second channel may be changed over
time. Any change may be according to a time table, rule, policy,
mode, condition, situation, and/or change.
[0113] The Type 1 device and another device may be controlled
and/or coordinated, physically attached, or may be of/in/of a
common device. They may be controlled by/connected to a common data
processor, or may be connected to a common bus
interconnect/network/LAN/Bluetooth network/NFC network/BLE
network/wired network/wireless network/mesh network/mobile
network/cloud. They may share a common memory, or be associated
with a common user, user device, profile, account, identity (ID),
identifier, household, house, physical address, location,
geographic coordinate, IP subnet, SSID, home device, office device,
and/or manufacturing device.
[0114] Each Type 1 device may be a signal source of a set of
respective Type 2 devices (i.e. it sends a respective signal (e.g.
respective series of probe signals) to the set of respective Type 2
devices). Each respective Type 2 device chooses the Type 1 device
from among all Type 1 devices as its signal source. Each Type 2
device may choose asynchronously. At least one TSCI may be obtained
by each respective Type 2 device from the respective series of
probe signals from the Type 1 device, the CI being of the channel
between the Type 2 device and the Type 1 device.
[0115] The respective Type 2 device chooses the Type 1 device from
among all Type 1 devices as its signal source based on identity
(ID) or identifier of Type 1/Type 2 device, task to be performed,
past signal source, history (e.g. of past signal source, Type 1
device, another Type 1 device, respective Type 2 receiver, and/or
another Type 2 receiver), threshold for switching signal source,
and/or information of a user, account, access info, parameter,
characteristics, and/or signal strength (e.g. associated with the
Type 1 device and/or the respective Type 2 receiver).
[0116] Initially, the Type 1 device may be signal source of a set
of initial respective Type 2 devices (i.e. the Type 1 device sends
a respective signal (series of probe signals) to the set of initial
respective Type 2 devices) at an initial time. Each initial
respective Type 2 device chooses the Type 1 device from among all
Type 1 devices as its signal source.
[0117] The signal source (Type 1 device) of a particular Type 2
device may be changed (e.g. adjusted, varied, modified) when (1)
time interval between two adjacent probe signals (e.g. between
current probe signal and immediate past probe signal, or between
next probe signal and current probe signal) received from current
signal source of the Type 2 device exceeds a first threshold; (2)
signal strength associated with current signal source of the Type 2
device is below a second threshold; (3) a processed signal strength
associated with current signal source of the Type 2 device is below
a third threshold, the signal strength processed with low pass
filter, band pass filter, median filter, moving average filter,
weighted averaging filter, linear filter and/or non-linear filter;
and/or (4) signal strength (or processed signal strength)
associated with current signal source of the Type 2 device is below
a fourth threshold for a significant percentage of a recent time
window (e.g. 70%, 80%, 90%, etc.). The percentage may exceed a
fifth threshold. The first, second, third, fourth and/or fifth
thresholds may be time varying.
[0118] Condition (1) may occur when the Type 1 device and the Type
2 device become progressively far away from each other, such that
some probe signal from the Type 1 device becomes too weak and is
not received by the Type 2 device. Conditions (2)-(4) may occur
when the two devices become far from each other such that the
signal strength becomes very weak.
[0119] The signal source of the Type 2 device may not change if
other Type 1 devices have signal strength weaker than a factor
(e.g. 1, 1.1, 1.2, or 1.5, etc.) of the current signal source.
[0120] If the signal source is changed (e.g. adjusted, varied,
modified), the new signal source may take effect at a near future
time (e.g. the respective next time). The new signal source may be
the Type 1 device with strongest signal strength, and/or processed
signal strength. The current and new signal source may be
same/different.
[0121] A list of available Type 1 devices may be initialized and
maintained by each Type 2 device. The list may be updated by
examining signal strength and/or processed signal strength
associated with the respective set of Type 1 devices.
[0122] A Type 2 device may choose between a first series of probe
signals from a first Type 1 device and a second series of probe
signals from a second Type 1 device based on: respective probe
signal rate, MAC addresses, channels,
characteristics/properties/states, task to be performed by the Type
2 device, signal strength of first and second series, and/or
another consideration.
[0123] The series of probe signals may be transmitted at a regular
rate (e.g. 100 Hz). The series of probe signals may be scheduled at
a regular interval (e.g. 0.01 s for 100 Hz), but each probe signal
may experience small time perturbation, perhaps due to timing
requirement, timing control, network control, handshaking, message
passing, collision avoidance, carrier sensing, congestion,
availability of resources, and/or another consideration.
[0124] The rate may be changed (e.g. adjusted, varied, modified).
The change may be according to a time table (e.g. changed once
every hour), rule, policy, mode, condition and/or change (e.g.
changed whenever some event occur). For example, the rate may
normally be 100 Hz, but changed to 1000 Hz in demanding situations,
and to 1 Hz in low power/standby situation. The probe signals may
be sent in burst.
[0125] The probe signal rate may change based on a task performed
by the Type 1 device or Type 2 device (e.g. a task may need 100 Hz
normally and 1000 Hz momentarily for 20 seconds). In one example,
the transmitters (Type 1 devices), receivers (Type 2 device), and
associated tasks may be associated adaptively (and/or dynamically)
to classes (e.g. classes that are: low-priority, high-priority,
emergency, critical, regular, privileged, non-subscription,
subscription, paying, and/or non-paying). A rate (of a transmitter)
may be adjusted for the sake of some class (e.g. high priority
class). When the need of that class changes, the rate may be
changed (e.g. adjusted, varied, modified). When a receiver has
critically low power, the rate may be reduced to reduce power
consumption of the receiver to respond to the probe signals.
[0126] In one example, probe signals may be used to transfer power
wirelessly to a receiver (Type 2 device), and the rate may be
adjusted to control the amount of power transferred to the
receiver.
[0127] The rate may be changed by (or based on): a server (e.g. hub
device), the Type 1 device and/or the Type 2 device. Control
signals may be communicated between them. The server may monitor,
track, forecast and/or anticipate the needs of the Type 2 device
and/or the tasks performed by the Type 2 device, and may control
the Type 1 device to change the rate. The server may make scheduled
changes to the rate according to a time table. The server may
detect an emergency situation and change the rate immediately. The
server may detect a developing condition and adjust the rate
gradually.
[0128] The characteristics and/or spatial-temporal information
(e.g. motion information) may be monitored individually based on a
TSCI associated with a particular Type 1 device and a particular
Type 2 device, and/or monitored jointly based on any TSCI
associated with the particular Type 1 device and any Type 2 device,
and/or monitored jointly based on any TSCI associated with the
particular Type 2 device and any Type 1 device, and/or monitored
globally based on any TSCI associated with any Type 1 device and
any Type 2 device. Any joint monitoring may be associated with: a
user, user account, profile, household, map of venue, and/or user
history, etc.
[0129] A first channel between a Type 1 device and a Type 2 device
may be different from a second channel between another Type 1
device and another Type 2 device. The two channels may be
associated with different frequency bands, bandwidth, carrier
frequency, modulation, wireless standards, coding, encryption,
payload characteristics, networks, network ID, SSID, network
characteristics, network settings, and/or network parameters,
etc.
[0130] The two channels may be associated with different kinds of
wireless system (e.g. two of the following: WiFi, LTE, LTE-A,
LTE-U, 2.5G, 3G, 3.5G, 4G, beyond 4G, 5G, 6G, 7G, a cellular
network standard, UMTS, 3GPP, GSM, EDGE, TDMA, FDMA, CDMA, WCDMA,
TD-SCDMA, 802.11 system, 802.15 system, 802.16 system, mesh
network, Zigbee, NFC, WiMax, Bluetooth, BLE, RFID, UWB, microwave
system, radar like system, etc.). For example, one is WiFi and the
other is LTE.
[0131] The two channels may be associated with similar kinds of
wireless system, but in different network. For example, the first
channel may be associated with a WiFi network named "Pizza and
Pizza" in the 2.4 GHz band with a bandwidth of 20 MHz while the
second may be associated with a WiFi network with SSID of "StarBud
hotspot" in the 5 GHz band with a bandwidth of 40 MHz. The two
channels may be different channels in same network (e.g. the
"StarBud hotspot" network).
[0132] In one embodiment, a wireless monitoring system may comprise
training a classifier of multiple events in a venue based on
training TSCI associated with the multiple events.
[0133] For each of the multiple known events happening in the venue
in a respective training time period associated with the known
event, a respective training wireless signal (e.g. a respective
series of training probe signals) may be transmitted by an antenna
of a first Type 1 heterogeneous wireless device using a processor,
a memory and a set of instructions of the first Type 1 device to at
least one first Type 2 heterogeneous wireless device through a
wireless multipath channel in the venue in the respective training
time period.
[0134] At least one respective time series of training CI (training
TSCI) may be obtained asynchronously by each of the at least one
first Type 2 device from the (respective) training signal. The CI
may be CI of the channel between the first Type 2 device and the
first Type 1 device in the training time period associated with the
known event. The at least one training TSCI may be
preprocessed.
[0135] For a current event happening in the venue in a current time
period, a current wireless signal (e.g. a series of current probe
signals) may be transmitted by an antenna of a second Type 1
heterogeneous wireless device using a processor, a memory and a set
of instructions of the second Type 1 device to at least one second
Type 2 heterogeneous wireless device through the channel in the
venue in the current time period associated with the current
event.
[0136] At least one time series of current CI (current TSCI) may be
obtained asynchronously by each of the at least one second Type 2
device from the current signal (e.g. the series of current probe
signals). The CI may be CI of the channel between the second Type 2
device and the second Type 1 device in the current time period
associated with the current event. The at least one current TSCI
may be preprocessed.
[0137] The classifier may be applied to classify at least one
current TSCI obtained from the series of current probe signals by
the at least one second Type 2 device, to classify at least one
portion of a particular current TSCI, and/or to classify a
combination of the at least one portion of the particular current
TSCI and another portion of another TSCI. The classifier may also
be applied to associate the current event with a known event, a
class/category/group/grouping/list/set of known events, an unknown
event, a class/category/group/grouping/list/set of unknown events,
and/or another event/class/category/group/grouping/list/set.
[0138] Each TSCI may comprise at least one CI each associated with
a respective timestamp.
[0139] Two TSCI associated with two Type 2 devices may be different
with different: starting time, duration, stopping time, amount of
CI, sampling frequency, sampling period. Their CI may have
different features.
[0140] The first and second Type 1 devices may be at same location
in the venue. They may be the same device.
[0141] The at least one second Type 2 device (or their locations)
may be a permutation of the at least one first Type 2 device (or
their locations). A particular second Type 2 device and a
particular first Type 2 device may be the same device.
[0142] A subset of the first Type 2 device and a subset of the
second Type 2 device may be the same. The at least one second Type
2 device and/or a subset of the at least one second Type 2 device
may be a subset of the at least one first Type 2 device.
[0143] The at least one first Type 2 device and/or a subset of the
at least one first Type 2 device may be a permutation of a subset
of the at least one second Type 2 device. The at least one second
Type 2 device and/or a subset of the at least one second Type 2
device may be a permutation of a subset of the at least one first
Type 2 device.
[0144] The at least one second Type 2 device and/or a subset of the
at least one second Type 2 device may be at same respective
location as a subset of the at least one first Type 2 device. The
at least one first Type 2 device and/or a subset of the at least
one first Type 2 device may be at same respective location as a
subset of the at least one second Type 2 device.
[0145] The antenna of the Type 1 device and the antenna of the
second Type 1 device may be at same location in the venue.
Antenna(s) of the at least one second Type 2 device and/or
antenna(s) of a subset of the at least one second Type 2 device may
be at same respective location as respective antenna(s) of a subset
of the at least one first Type 2 device. Antenna(s) of the at least
one first Type 2 device and/or antenna(s) of a subset of the at
least one first Type 2 device may be at same respective location(s)
as respective antenna(s) of a subset of the at least one second
Type 2 device.
[0146] A first section of a first time duration of the first TSCI
and a second section of a second time duration of the second
section of the second TSCI may be aligned. A map between items of
the first section and items of the second section may be
computed.
[0147] The first section may comprise a first segment (e.g. subset)
of the first TSCI with a first starting/ending time, and/or another
segment (e.g. subset) of a processed first TSCI. The processed
first TSCI may be the first TSCI processed by a first
operation.
[0148] The second section may comprise a second segment (e.g.
subset) of the second TSCI with a second starting time and a second
ending time, and another segment (e.g. subset) of a processed
second TSCI. The processed second TSCI may be the second TSCI
processed by a second operation.
[0149] The first operation and/or the second operation may
comprise: subsampling, re-sampling, interpolation, filtering,
transformation, feature extraction, pre-processing, and/or another
operation.
[0150] A first item of the first section may be mapped to a second
item of the second section. The first item of the first section may
also be mapped to another item of the second section. Another item
of the first section may also be mapped to the second item of the
second section. The mapping may be one-to-one, one-to-many,
many-to-one, many-to-many.
[0151] At least one function of at least one of: the first item of
the first section of the first TSCI, another item of the first
TSCI, timestamp of the first item, time difference of the first
item, time differential of the first item, neighboring timestamp of
the first item, another timestamp associated with the first item,
the second item of the second section of the second TSCI, another
item of the second TSCI, timestamp of the second item, time
difference of the second item, time differential of the second
item, neighboring timestamp of the second item, and another
timestamp associated with the second item, may satisfy at least one
constraint.
[0152] One constraint may be that a difference between the
timestamp of the first item and the timestamp of the second item
may be upper-bounded by an adaptive (and/or dynamically adjusted)
upper threshold and lower-bounded by an adaptive lower
threshold.
[0153] The first section may be the entire first TSCI. The second
section may be the entire second TSCI. The first time duration may
be equal to the second time duration.
[0154] A section of a time duration of a TSCI may be determined
adaptively (and/or dynamically). A tentative section of the TSCI
may be computed. A starting time and an ending time of a section
(e.g. the tentative section, the section) may be determined. The
section may be determined by removing a beginning portion and an
ending portion of the tentative section.
[0155] A beginning portion of a tentative section may be determined
as follows. Iteratively, items of the tentative section with
increasing timestamp may be considered as a current item, one item
at a time.
[0156] In each iteration, at least one activity measure/index may
be computed and/or considered. The at least one activity measure
may be associated with at least one of: the current item associated
with a current timestamp, past items of the tentative section with
timestamps not larger than the current timestamp, and/or future
items of the tentative section with timestamps not smaller than the
current timestamp. The current item may be added to the beginning
portion of the tentative section if at least one criterion (e.g.
quality criterion, signal quality condition) associated with the at
least one activity measure is satisfied.
[0157] The at least one criterion associated with the activity
measure may comprise at least one of: (a) the activity measure is
smaller than an adaptive (e.g. dynamically adjusted) upper
threshold, (b) the activity measure is larger than an adaptive
lower threshold, (c) the activity measure is smaller than an
adaptive upper threshold consecutively for at least a predetermined
amount of consecutive timestamps, (d) the activity measure is
larger than an adaptive lower threshold consecutively for at least
another predetermined amount of consecutive timestamps, (e) the
activity measure is smaller than an adaptive upper threshold
consecutively for at least a predetermined percentage of the
predetermined amount of consecutive timestamps, (f) the activity
measure is larger than an adaptive lower threshold consecutively
for at least another predetermined percentage of the another
predetermined amount of consecutive timestamps, (g) another
activity measure associated with another timestamp associated with
the current timestamp is smaller than another adaptive upper
threshold and larger than another adaptive lower threshold, (h) at
least one activity measure associated with at least one respective
timestamp associated with the current timestamp is smaller than
respective upper threshold and larger than respective lower
threshold, (i) percentage of timestamps with associated activity
measure smaller than respective upper threshold and larger than
respective lower threshold in a set of timestamps associated with
the current timestamp exceeds a threshold, and (j) another
criterion (e.g. a quality criterion, signal quality condition).
[0158] An activity measure/index associated with an item at time T1
may comprise at least one of: (1) a first function of the item at
time T1 and an item at time T1-D1, wherein D1 is a pre-determined
positive quantity (e.g. a constant time offset), (2) a second
function of the item at time T1 and an item at time T1+D1, (3) a
third function of the item at time T1 and an item at time T2,
wherein T2 is a pre-determined quantity (e.g. a fixed initial
reference time; T2 may be changed (e.g. adjusted, varied, modified)
over time; T2 may be updated periodically; T2 may be the beginning
of a time period and T1 may be a sliding time in the time period),
and (4) a fourth function of the item at time T1 and another
item.
[0159] At least one of: the first function, the second function,
the third function, and/or the fourth function may be a function
(e.g. F(X, Y, . . . )) with at least two arguments: X and Y.
[0160] The two arguments may be scalars. The function (e.g. F) may
be a function of at least one of: X, Y, (X-Y), (Y-X), abs(X-Y),
X{circumflex over ( )}a, Y{circumflex over ( )}b, abs(X{circumflex
over ( )}a-Y{circumflex over ( )}b), (X-Y){circumflex over ( )}a,
(X/Y), (X+a)/(Y+b), (X{circumflex over ( )}a/Y{circumflex over (
)}b), and ((X/Y){circumflex over ( )}a-b), wherein a and b are may
be some predetermined quantities. For example, the function may
simply be abs(X-Y), or (X-Y){circumflex over ( )}2,
(X-Y){circumflex over ( )}4. The function may be a robust function.
For example, the function may be (X-Y){circumflex over ( )}2 when
abs (X-Y) is less than a threshold T, and (X-Y)+a when abs(X-Y) is
larger than T. Alternatively, the function may be a constant when
abs(X-Y) is larger than T. The function may also be bounded by a
slowly increasing function when abs(X-y) is larger than T, so that
outliers cannot severely affect the result. Another example of the
function may be (abs(X/Y)-a), where a=1. In this way, if X=Y (i.e.
no change or no activity), the function will give a value of 0. If
X is larger than Y, (X/Y) will be larger than 1 (assuming X and Y
are positive) and the function will be positive. And if X is less
than Y, (X/Y) will be smaller than 1 and the function will be
negative.
[0161] In another example, both arguments X and Y may be n-tuples
such that X=(x_1, x_2, . . . , x_n) and Y=(y_1, y_2, . . . , y_n).
The function may be a function of at least one of: x_i, y_i,
(x_i-y_i), (y_i-x_i), abs(x_i-y_i), x_i{circumflex over ( )}a,
y_i{circumflex over ( )}b, abs(x_i{circumflex over (
)}a-y_i{circumflex over ( )}b), (x_i-y_i) {circumflex over ( )}a,
(x_i/y_i), (x_i+a)/(y_i+b), (x_i{circumflex over (
)}a/y_i{circumflex over ( )}b), and ((x_i/y_i){circumflex over (
)}a-b), wherein i is a component index of the n-tuple X and Y, and
1<=i<=n. E.g. component index of x_1 is i=1, component index
of x_2 is i=2.
[0162] The function may comprise a component-by-component summation
of another function of at least one of the following: x_i, y_i,
(x_i-y_i), (y_i-x_i), abs(x_i-y_i), x_i{circumflex over ( )}a,
y_i{circumflex over ( )}b, abs(x_i{circumflex over (
)}a-y_i{circumflex over ( )}b), (x_i-y_i){circumflex over ( )}a,
(x_i/y_i), (x_i+a)/(y_i+b), (x_i{circumflex over (
)}a/y_i{circumflex over ( )}b), and ((x_i/y_i){circumflex over (
)}a-b), wherein i is the component index of the n-tuple X and Y.
For example, the function may be in a form of sum_{i=1}{circumflex
over ( )}n (abs(x_i/y_i)-1)/n, or sum {i=1}{circumflex over ( )}n
w_i*(abs(x_i/y_i)-1), where w_i is some weight for component i.
[0163] The map may be computed using dynamic time warping (DTW).
The DTW may comprise a constraint on at least one of: the map, the
items of the first TSCI, the items of the second TSCI, the first
time duration, the second time duration, the first section, and/or
the second section. Suppose in the map, the i{circumflex over (
)}{th} domain item is mapped to the j{circumflex over ( )}{th}
range item. The constraint may be on admissible combination of i
and j (constraint on relationship between i and j).
[0164] Mismatch cost between a first section of a first time
duration of a first TSCI and a second section of a second time
duration of a second TSCI may be computed.
[0165] The first section and the second section may be aligned such
that a map comprising more than one links may be established
between first items of the first TSCI and second items of the
second TSCI. With each link, one of the first items with a first
timestamp may be associated with one of the second items with a
second timestamp.
[0166] A mismatch cost between the aligned first section and the
aligned second section may be computed. The mismatch cost may
comprise a function of: an item-wise cost between a first item and
a second item associated by a particular link of the map, and a
link-wise cost associated with the particular link of the map.
[0167] The aligned first section and the aligned second section may
be represented respectively as a first vector and a second vector
of same vector length. The mismatch cost may comprise at least one
of: an inner product, inner-product-like quantity, quantity based
on correlation, correlation indicator, quantity based on
covariance, discriminating score, distance, Euclidean distance,
absolute distance, Lk distance (e.g. L1, L2, . . . ), weighted
distance, distance-like quantity and/or another similarity value,
between the first vector and the second vector. The mismatch cost
may be normalized by the respective vector length.
[0168] A parameter derived from the mismatch cost between the first
section of the first time duration of the first TSCI and the second
section of the second time duration of the second TSCI may be
modeled with a statistical distribution. At least one of: a scale
parameter, location parameter and/or another parameter, of the
statistical distribution may be estimated.
[0169] The first section of the first time duration of the first
TSCI may be a sliding section of the first TSCI. The second section
of the second time duration of the second TSCI may be a sliding
section of the second TSCI.
[0170] A first sliding window may be applied to the first TSCI and
a corresponding second sliding window may be applied to the second
TSCI. The first sliding window of the first TSCI and the
corresponding second sliding window of the second TSCI may be
aligned.
[0171] Mismatch cost between the aligned first sliding window of
the first TSCI and the corresponding aligned second sliding window
of the second TSCI may be computed. The current event may be
associated with at least one of: the known event, the unknown event
and/or the another event, based on the mismatch cost.
[0172] The classifier may be applied to at least one of: each first
section of the first time duration of the first TSCI, and/or each
second section of the second time duration of the second TSCI, to
obtain at least one tentative classification results. Each
tentative classification result may be associated with a respective
first section and a respective second section.
[0173] The current event may be associated with at least one of:
the known event, the unknown event, a
class/category/group/grouping/list/set of unknown events, and/or
the another event, based on the mismatch cost.
[0174] The current event may be associated with at least one of:
the known event, the unknown event and/or the another event, based
on a largest number of tentative classification results in more
than one sections of the first TSCI and corresponding more than
sections of the second TSCI. For example, the current event may be
associated with a particular known event if the mismatch cost
points to the particular known event for N consecutive times (e.g.
N=10). In another example, the current event may be associated with
a particular known event if the percentage of mismatch cost within
the immediate past N consecutive N pointing to the particular known
event exceeds a certain threshold (e.g. >80%).
[0175] In another example, the current event may be associated with
a known event that achieve smallest mismatch cost for the most
times within a time period. The current event may be associated
with a known event that achieves smallest overall mismatch cost,
which is a weighted average of at least one mismatch cost
associated with the at least one first sections. The current event
may be associated with a particular known event that achieves
smallest of another overall cost.
[0176] The current event may be associated with the "unknown event"
if none of the known events achieve mismatch cost lower than a
first threshold T1 in a sufficient percentage of the at least one
first section. The current event may also be associated with the
"unknown event" if none of the events achieve an overall mismatch
cost lower than a second threshold T2.
[0177] The current event may be associated with at least one of:
the known event, the unknown event and/or the another event, based
on the mismatch cost and additional mismatch cost associated with
at least one additional section of the first TSCI and at least one
additional section of the second TSCI.
[0178] The known events may comprise at least one of: a door closed
event, door open event, window closed event, window open event,
multi-state event, on-state event, off-state event, intermediate
state event, continuous state event, discrete state event,
human-present event, human-absent event, sign-of-life-present
event, and/or a sign-of-life-absent event.
[0179] A projection for each CI may be trained using a dimension
reduction method based on the training TSCI. The dimension
reduction method may comprise at least one of: principal component
analysis (PCA), PCA with different kernel, independent component
analysis (ICA), Fisher linear discriminant, vector quantization,
supervised learning, unsupervised learning, self-organizing maps,
auto-encoder, neural network, deep neural network, and/or another
method. The projection may be applied to at least one of: the
training TSCI associated with the at least one events, and/or the
current TSCI, for the classifier.
[0180] The classifier of the at least one event may be trained
based on the projection and the training TSCI associated with the
at least one event. The at least one current TSCI may be
classified/categorized based on the projection and the current
TSCI.
[0181] The projection may be re-trained using at least one of: the
dimension reduction method, and another dimension reduction method,
based on at least one of: the training TSCI, at least one current
TSCI before retraining the projection, and/or additional training
TSCI.
[0182] The another dimension reduction method may comprise at least
one of: principal component analysis (PCA), PCA with different
kernels, independent component analysis (ICA), Fisher linear
discriminant, vector quantization, supervised learning,
unsupervised learning, self-organizing maps, auto-encoder, neural
network, deep neural network, and/or yet another method,
[0183] The classifier of the at least one event may be re-trained
based on at least one of: the re-trained projection, the training
TSCI associated with the at least one events, and/or at least one
current TSCI.
[0184] The at least one current TSCI may be classified based on:
the re-trained projection, the re-trained classifier, and/or the
current TSCI.
[0185] Each CI may comprise a vector of complex values. Each
complex value may be preprocessed to give the magnitude of the
complex value. Each CI may be preprocessed to give a vector of
non-negative real numbers comprising the magnitude of corresponding
complex values.
[0186] Each training TSCI may be weighted in the training of the
projection.
[0187] The projection may comprise more than one projected
components. The projection may comprise at least one most
significant projected component. The projection may comprise at
least one projected component that may be beneficial for the
classifier.
[0188] Channel/Channel Information/Venue/Spatial-Temporal
Info/Motion/Object
[0189] The channel information (CI) may be associated with/may
comprise signal strength, signal amplitude, signal phase, spectral
power measurement, modem parameters (e.g. used in relation to
modulation/demodulation in digital communication systems such as
WiFi, 4G/LTE, etc.), radio state (e.g. used in digital
communication systems to decode digital data, baseband processing
state, RF processing state, etc.), digital setting, gain setting,
RF filter setting, RF front end switch setting, DC offset setting,
DC correction setting, IQ compensation setting, received signal
strength indicator (RSSI), channel state information (CSI), channel
impulse response (CIR), channel frequency response (CFR),
characteristics of frequency components (e.g. subcarriers) in a
bandwidth, channel characteristics, channel filter response,
timestamp, auxiliary information, data, meta data, user data,
account data, access data, security data, session data, status
data, supervisory data, household data, identity (ID), identifier,
device data, network data, neighborhood data, environment data,
real-time data, sensor data, stored data, encrypted data,
compressed data, protected data, and/or another channel
information. Each CI may be associated with a time stamp, and/or an
arrival time. A CSI can be used to equalize/undo/minimize/reduce
the multipath channel effect (of the transmission channel) to
demodulate a signal similar to the one transmitted by the
transmitter through the multipath channel. The CI may be associated
with information associated with a frequency band, frequency
signature, frequency phase, frequency amplitude, frequency trend,
frequency characteristics, frequency-like characteristics, time
domain element, frequency domain element, time-frequency domain
element, orthogonal decomposition characteristics, and/or
non-orthogonal decomposition characteristics of the signal through
the channel.
[0190] The CI may be preprocessed, processed, postprocessed, stored
(e.g. in local memory, portable/mobile memory, removable memory,
storage network, cloud memory, in a volatile manner, in a
non-volatile manner), retrieved, transmitted and/or received. One
or more modem parameters and/or radio state parameters may be held
constant. The modem parameters may be applied to a radio subsystem.
The modem parameters may represent a radio state. A motion
detection signal (e.g. baseband signal, and/or packet
decoded/demodulated from the baseband signal, etc.) may be obtained
by processing (e.g. down-converting) the first wireless signal
(e.g. RF/WiFi/LTE/5G signal) by the radio subsystem using the radio
state represented by the stored modem parameters. The modem
parameters/radio state may be updated (e.g. using previous modem
parameters or previous radio state). Both the previous and updated
modem parameters/radio states may be applied in the radio subsystem
in the digital communication system. Both the previous and updated
modem parameters/radio states may be
compared/analyzed/processed/monitored in the task.
[0191] The channel information may also be modem parameters (e.g.
stored or freshly computed) used to process the wireless signal.
The wireless signal may comprise a plurality of probe signals. The
same modem parameters may be used to process more than one probe
signals. The same modem parameters may also be used to process more
than one wireless signals. The modem parameters may comprise
parameters that indicate settings or an overall configuration for
the operation of a radio subsystem or a baseband subsystem of a
wireless sensor device (or both). The modem parameters may include
one or more of: a gain setting, an RF filter setting, an RF front
end switch setting, a DC offset setting, or an IQ compensation
setting for a radio subsystem, or a digital DC correction setting,
a digital gain setting, and/or a digital filtering setting (e.g.
for a baseband subsystem).
[0192] The CI may also be associated with information associated
with a time period, time signature, timestamp, time amplitude, time
phase, time trend, and/or time characteristics of the signal. The
CI may be associated with information associated with a
time-frequency partition, signature, amplitude, phase, trend,
and/or characteristics of the signal. The CI may be associated with
a decomposition of the signal. The CI may be associated with
information associated with a direction, angle of arrival (AoA),
angle of a directional antenna, and/or a phase of the signal
through the channel. The CI may be associated with attenuation
patterns of the signal through the channel. Each CI may be
associated with a Type 1 device and a Type 2 device. Each CI may be
associated with an antenna of the Type 1 device and an antenna of
the Type 2 device.
[0193] The CI may be obtained from a communication hardware (e.g.
of Type 2 device, or Type 1 device) that is capable of providing
the CI. The communication hardware may be a WiFi-capable chip/IC
(integrated circuit), chip compliant with a 802.11 or 802.16 or
another wireless/radio standard, next generation WiFi-capable chip,
LTE-capable chip, 5G-capable chip, 6G/7G/8G-capable chip,
Bluetooth-enabled chip, NFC (near field communication)-enabled
chip, BLE (Bluetooth low power)-enabled chip, UWB chip, another
communication chip (e.g. Zigbee, WiMax, mesh network), etc. The
communication hardware computes the CI and stores the CI in a
buffer memory and make the CI available for extraction. The CI may
comprise data and/or at least one matrices related to channel state
information (CSI). The at least one matrices may be used for
channel equalization, and/or beam forming, etc.
[0194] The channel may be associated with a venue. The attenuation
may be due to signal propagation in the venue, signal
propagating/reflection/refraction/diffraction through/at/around air
(e.g. air of venue), refraction medium/reflection surface such as
wall, doors, furniture, obstacles and/or barriers, etc. The
attenuation may be due to reflection at surfaces and obstacles
(e.g. reflection surface, obstacle) such as floor, ceiling,
furniture, fixtures, objects, people, pets, etc.
[0195] Each CI may be associated with a timestamp. Each CI may
comprise N1 components (e.g. N1 frequency domain components in CFR,
N1 time domain components in CIR, or N1 decomposition components).
Each component may be associated with a component index. Each
component may be a real, imaginary, or complex quantity, magnitude,
phase, flag, and/or set. Each CI may comprise a vector or matrix of
complex numbers, a set of mixed quantities, and/or a
multi-dimensional collection of at least one complex numbers.
[0196] Components of a TSCI associated with a particular component
index may form a respective component time series associated with
the respective index. A TSCI may be divided into N1 component time
series. Each respective component time series is associated with a
respective component index. The characteristics/spatial-temporal
information of the motion of the object may be monitored based on
the component time series. In one example, one or more ranges of CI
components (e.g. one range being from component 11 to component 23,
a second range being from component 44 to component 50, and a third
range having only one component) may be selected based on some
criteria/cost function/signal quality metric (e.g. based on
signal-to-noise ratio, and/or interference level) for further
processing.
[0197] A component-wise characteristics of a component-feature time
series of a TSCI may be computed. The component-wise
characteristics may be a scalar (e.g. energy) or a function with a
domain and a range (e.g. an autocorrelation function, transform,
inverse transform). The characteristics/spatial-temporal
information of the motion of the object may be monitored based on
the component-wise characteristics.
[0198] A total characteristics (e.g. aggregate characteristics) of
the TSCI may be computed based on the component-wise
characteristics of each component time series of the TSCI. The
total characteristics may be a weighted average of the
component-wise characteristics. The
characteristics/spatial-temporal information of the motion of the
object may be monitored based on the total characteristics. An
aggregate quantity may be a weighted average of individual
quantities.
[0199] The Type 1 device and Type 2 device may support WiFi, WiMax,
3G/beyond 3G, 4G/beyond 4G, LTE, LTE-A, 5G, 6G, 7G, Bluetooth, NFC,
BLE, Zigbee, UWB, UMTS, 3GPP, GSM, EDGE, TDMA, FDMA, CDMA, WCDMA,
TD-SCDMA, mesh network, proprietary wireless system, IEEE 802.11
standard, 802.15 standard, 802.16 standard, 3GPP standard, and/or
another wireless system.
[0200] A common wireless system and/or a common wireless channel
may be shared by the Type 1 transceiver and/or the at least one
Type 2 transceiver. The at least one Type 2 transceiver may
transmit respective signal contemporaneously (or: asynchronously,
synchronously, sporadically, continuously, repeatedly,
concurrently, simultaneously and/or temporarily) using the common
wireless system and/or the common wireless channel. The Type 1
transceiver may transmit a signal to the at least one Type 2
transceiver using the common wireless system and/or the common
wireless channel.
[0201] Each Type 1 device and Type 2 device may have at least one
transmitting/receiving antenna. Each CI may be associated with one
of the transmitting antenna of the Type 1 device and one of the
receiving antenna of the Type 2 device. Each pair of a transmitting
antenna and a receiving antenna may be associated with a link, a
path, a communication path, signal hardware path, etc. For example,
if the Type 1 device has M (e.g. 3) transmitting antennas, and the
Type 2 device has N (e.g. 2) receiving antennas, there may be
M.times.N (e.g. 3.times.2=6) links or paths. Each link or path may
be associated with a TSCI.
[0202] The at least one TSCI may correspond to various antenna
pairs between the Type 1 device and the Type 2 device. The Type 1
device may have at least one antenna. The Type 2 device may also
have at least one antenna. Each TSCI may be associated with an
antenna of the Type 1 device and an antenna of the Type 2 device.
Averaging or weighted averaging over antenna links may be
performed. The averaging or weighted averaging may be over the at
least one TSCI. The averaging may optionally be performed on a
subset of the at least one TSCI corresponding to a subset of the
antenna pairs.
[0203] Timestamps of CI of a portion of a TSCI may be irregular and
may be corrected so that corrected timestamps of time-corrected CI
may be uniformly spaced in time. In the case of multiple Type 1
devices and/or multiple Type 2 devices, the corrected timestamp may
be with respect to the same or different clock.
[0204] An original timestamp associated with each of the CI may be
determined. The original timestamp may not be uniformly spaced in
time. Original timestamps of all CI of the particular portion of
the particular TSCI in the current sliding time window may be
corrected so that corrected timestamps of time-corrected CI may be
uniformly spaced in time.
[0205] The characteristics and/or spatial-temporal information
(e.g. motion information) may comprise: location, location
coordinate, change in location, position (e.g. initial position,
new position), position on map, height, horizontal location,
vertical location, distance, displacement, speed, acceleration,
rotational speed, rotational acceleration, angle of motion,
azimuth, direction of motion, rotation, path, deformation,
transformation, shrinking, expanding, gait, gait cycle, head
motion, repeated motion, periodic motion, pseudo-periodic motion,
impulsive motion, sudden motion, fall-down motion, transient
motion, behavior, transient behavior, period of motion, frequency
of motion, time trend, temporal profile, temporal characteristics,
occurrence, change, change in frequency, change in timing, change
of gait cycle, timing, starting time, ending time, duration,
history of motion, motion type, motion classification, frequency,
frequency spectrum, frequency characteristics, presence, absence,
proximity, approaching, receding, identity/identifier of the
object, composition of the object, head motion rate, head motion
direction, mouth-related rate, eye-related rate, breathing rate,
heart rate, tidal volume, depth of breath, inhale time, exhale
time, inhale time to exhale time ratio, airflow rate, heart
heat-to-beat interval, heart rate variability, hand motion rate,
hand motion direction, leg motion, body motion, walking rate, hand
motion rate, positional characteristics, characteristics associated
with movement (e.g. change in position/location) of the object,
tool motion, machine motion, complex motion, and/or combination of
multiple motions, event, motion statistics, motion parameter,
indication of motion detection, motion magnitude, motion phase,
similarity score, distance score, Euclidean distance, weighted
distance, L_1 norm, L_2 norm, L_k norm for k>2, statistical
distance, correlation, correlation indicator, auto-correlation,
covariance, auto-covariance, cross-covariance, inner product, outer
product, motion signal transformation, motion feature, presence of
motion, absence of motion, motion localization, motion
identification, motion recognition, presence of object, absence of
object, entrance of object, exit of object, a change of object,
motion cycle, motion count, gait cycle, motion rhythm, deformation
motion, gesture, handwriting, head motion, mouth motion, heart
motion, internal organ motion, motion trend, size, length, area,
volume, capacity, shape, form, tag, starting location, ending
location, starting quantity, ending quantity, event, fall-down
event, security event, accident event, home event, office event,
factory event, warehouse event, manufacturing event, assembly line
event, maintenance event, car-related event, navigation event,
tracking event, door event, door-open event, door-close event,
window event, window-open event, window-close event, repeatable
event, one-time event, consumed quantity, unconsumed quantity,
state, physical state, health state, well-being state, emotional
state, mental state, another event, and/or another information. The
processor shares computational workload with the Type 1
heterogeneous wireless device and Type 2 heterogeneous wireless
device.
[0206] The Type 1 device and/or Type 2 device may be a local
device. The local device may be: a smart phone, smart device, TV,
sound bar, set-top box, access point, router, repeater, remote
control, speaker, fan, refrigerator, microwave, oven, coffee
machine, hot water pot, utensil, table, chair, light, lamp, door
lock, camera, microphone, motion sensor, security device, fire
hydrant, garage door, switch, power adapter, computer, dongle,
computer peripheral, electronic pad, sofa, tile, accessory, home
device, vehicle device, office device, building device,
manufacturing device, watch, glasses, clock, television, oven,
air-conditioner, accessory, utility, appliance, smart machine,
smart vehicle, internet-of-thing (IoT) device, internet-enabled
device, computer, portable computer, tablet, smart house, smart
office, smart building, smart parking lot, smart system, and/or
another device.
[0207] Each Type 1 device may be associated with a respective
identifier (e.g. ID). Each Type 2 device may also be associated
with a respective identify (ID). The ID may comprise: numeral,
combination of text and numbers, name, password, account, account
ID, web link, web address, index to some information, and/or
another ID. The ID may be assigned. The ID may be assigned by
hardware (e.g. hardwired, via dongle and/or other hardware),
software and/or firmware. The ID may be stored (e.g. in database,
in memory, in server (e.g. hub device), in the cloud, stored
locally, stored remotely, stored permanently, stored temporarily)
and may be retrieved. The ID may be associated with at least one
record, account, user, household, address, phone number, social
security number, customer number, another ID, another identifier,
timestamp, and/or collection of data. The ID and/or part of the ID
of a Type 1 device may be made available to a Type 2 device. The ID
may be used for registration, initialization, communication,
identification, verification, detection, recognition,
authentication, access control, cloud access, networking, social
networking, logging, recording, cataloging, classification,
tagging, association, pairing, transaction, electronic transaction,
and/or intellectual property control, by the Type 1 device and/or
the Type 2 device.
[0208] The object may be person, passenger, child, older person,
baby, sleeping baby, baby in vehicle, patient, worker, high-value
worker, expert, specialist, waiter, customer in mall, traveler in
airport/train station/bus terminal/shipping terminals,
staff/worker/customer service personnel in
factory/mall/supermarket/office/workplace, serviceman in sewage/air
ventilation system/lift well, lifts in lift wells, elevator,
inmate, people to be tracked/monitored, animal, plant, living
object, pet, dog, cat, smart phone, phone accessory, computer,
tablet, portable computer, dongle, computing accessory, networked
devices, WiFi devices, IoT devices, smart watch, smart glasses,
smart devices, speaker, keys, smart key, wallet, purse, handbag,
backpack, goods, cargo, luggage, equipment, motor, machine, air
conditioner, fan, air conditioning equipment, light fixture,
moveable light, television, camera, audio and/or video equipment,
stationary, surveillance equipment, parts, signage, tool, cart,
ticket, parking ticket, toll ticket, airplane ticket, credit card,
plastic card, access card, food packaging, utensil, table, chair,
cleaning equipment/tool, vehicle, car, cars in parking facilities,
merchandise in warehouse/store/supermarket/distribution center,
boat, bicycle, airplane, drone, remote control car/plane/boat,
robot, manufacturing device, assembly line, material/unfinished
part/robot/wagon/transports on factory floor, object to be tracked
in airport/shopping mart/supermarket, non-object, absence of an
object, presence of an object, object with form, object with
changing form, object with no form, mass of fluid, mass of liquid,
mass of gas/smoke, fire, flame, electromagnetic (EM) source, EM
medium, and/or another object.
[0209] The object itself may be communicatively coupled with some
network, such as WiFi, MiFi, 3G/4G/LTE/5G/6G/7G, Bluetooth, NFC,
BLE, WiMax, Zigbee, UMTS, 3GPP, GSM, EDGE, TDMA, FDMA, CDMA, WCDMA,
TD-SCDMA, mesh network, adhoc network, and/or other network. The
object itself may be bulky with AC power supply, but is moved
during installation, cleaning, maintenance, renovation, etc. It may
also be installed in moveable platform such as lift, pad, movable,
platform, elevator, conveyor belt, robot, drone, forklift, car,
boat, vehicle, etc.
[0210] The object may have multiple parts, each part with different
movement (e.g. change in position/location). For example, the
object may be a person walking forward. While walking, his left
hand and right hand may move in different direction, with different
instantaneous speed, acceleration, motion, etc.
[0211] The wireless transmitter (e.g. Type 1 device), the wireless
receiver (e.g. Type 2 device), another wireless transmitter and/or
another wireless receiver may move with the object and/or another
object (e.g. in prior movement, current movement and/or future
movement. They may be communicatively coupled to one or more nearby
device. They may transmit TSCI and/or information associated with
the TSCI to the nearby device, and/or each other. They may be with
the nearby device.
[0212] The wireless transmitter and/or the wireless receiver may be
part of a small (e.g. coin-size, cigarette box size, or even
smaller), light-weight portable device. The portable device may be
wirelessly coupled with a nearby device.
[0213] The nearby device may be smart phone, iPhone, Android phone,
smart device, smart appliance, smart vehicle, smart gadget, smart
TV, smart refrigerator, smart speaker, smart watch, smart glasses,
smart pad, iPad, computer, wearable computer, notebook computer,
gateway. The nearby device may be connected to a cloud server,
local server (e.g. hub device) and/or other server via internet,
wired internet connection and/or wireless internet connection. The
nearby device may be portable.
[0214] The portable device, the nearby device, a local server (e.g.
hub device) and/or a cloud server may share the computation and/or
storage for a task (e.g. obtain TSCI, determine
characteristics/spatial-temporal information of the object
associated with the movement (e.g. change in position/location) of
the object, computation of time series of power (e.g. signal
strength) information, determining/computing the particular
function, searching for local extremum, classification, identifying
particular value of time offset, de-noising, processing,
simplification, cleaning, wireless smart sensing task, extract CI
from signal, switching, segmentation, estimate trajectory, process
the map, correction, corrective adjustment, adjustment, map-based
correction, detecting error, checking for boundary hitting,
thresholding, etc.) and information (e.g. TSCI).
[0215] The nearby device may/may not move with the object. The
nearby device may be portable/not portable/moveable/non-moveable.
The nearby device may use battery power, solar power, AC power
and/or other power source. The nearby device may have
replaceable/non-replaceable battery, and/or
rechargeable/non-rechargeable battery. The nearby device may be
similar to the object. The nearby device may have identical (and/or
similar) hardware and/or software to the object. The nearby device
may be a smart device, network enabled device, device with
connection to
WiFi/3G/4G/5G/6G/Zigbee/Bluetooth/NFC/UMTS/3GPP/GSM/EDGE/TDMA/FDMA/CDMA/W-
CDMA/TD-SCDMA/adhoc network/other network, smart speaker, smart
watch, smart clock, smart appliance, smart machine, smart
equipment, smart tool, smart vehicle, internet-of-thing (IoT)
device, internet-enabled device, computer, portable computer,
tablet, and another device.
[0216] The nearby device and/or at least one processor associated
with the wireless receiver, the wireless transmitter, the another
wireless receiver, the another wireless transmitter and/or a cloud
server (in the cloud) may determine the initial spatial-temporal
information of the object. Two or more of them may determine the
initial spatial-temporal info jointly. Two or more of them may
share intermediate information in the determination of the initial
spatial-temporal information (e.g. initial position).
[0217] In one example, the wireless transmitter (e.g. Type 1
device, or Tracker Bot) may move with the object. The wireless
transmitter may send the signal to the wireless receiver (e.g. Type
2 device, or Origin Register) or determining the initial
spatial-temporal information (e.g. initial position) of the object.
The wireless transmitter may also send the signal and/or another
signal to another wireless receiver (e.g. another Type 2 device, or
another Origin Register) for the monitoring of the motion
(spatial-temporal info) of the object. The wireless receiver may
also receive the signal and/or another signal from the wireless
transmitter and/or the another wireless transmitter for monitoring
the motion of the object. The location of the wireless receiver
and/or the another wireless receiver may be known.
[0218] In another example, the wireless receiver (e.g. Type 2
device, or Tracker Bot) may move with the object. The wireless
receiver may receive the signal transmitted from the wireless
transmitter (e.g. Type 1 device, or Origin Register) for
determining the initial spatial-temporal info (e.g. initial
position) of the object. The wireless receiver may also receive the
signal and/or another signal from another wireless transmitter
(e.g. another Type 1 device, or another Origin Register) for the
monitoring of the current motion (e.g. spatial-temporal info) of
the object. The wireless transmitter may also transmit the signal
and/or another signal to the wireless receiver and/or the another
wireless receiver (e.g. another Type 2 device, or another Tracker
Bot) for monitoring the motion of the object. The location of the
wireless transmitter and/or the another wireless transmitter may be
known.
[0219] The venue may be a space such as a room, house, office,
workplace, hallway, walkway, lift, lift well, escalator, elevator,
sewage system, air ventilations system, staircase, gathering area,
duct, air duct, pipe, tube, enclosed space, enclosed structure,
semi-enclosed structure, enclosed area, area with at least one
wall, plant, machine, engine, structure with wood, structure with
glass, structure with metal, structure with walls, structure with
doors, structure with gaps, structure with reflection surface,
structure with fluid, building, roof top, store, factory, assembly
line, hotel room, museum, classroom, school, university, government
building, warehouse, garage, mall, airport, train station, bus
terminal, hub, transportation hub, shipping terminal, government
facility, public facility, school, university, entertainment
facility, recreational facility, hospital, pediatric/neonatal
wards, seniors home, elderly care facility, geriatric facility,
community center, stadium, playground, park, field, sports
facility, swimming facility, track and/or field, basketball court,
tennis court, soccer stadium, baseball stadium, gymnasium, hall,
garage, shopping mart, mall, supermarket, manufacturing facility,
parking facility, construction site, mining facility,
transportation facility, highway, road, valley, forest, wood,
terrain, landscape, den, patio, land, path, amusement park, urban
area, rural area, suburban area, metropolitan area, garden, square,
plaza, music hall, downtown facility, over-air facility, semi-open
facility, closed area, train platform, train station, distribution
center, warehouse, store, distribution center, storage facility,
underground facility, space (e.g. above ground, outer-space)
facility, floating facility, cavern, tunnel facility, indoor
facility, open-air facility, outdoor facility with some
walls/doors/reflective barriers, open facility, semi-open facility,
car, truck, bus, van, container, ship/boat, submersible, train,
tram, airplane, vehicle, mobile home, cave, tunnel, pipe, channel,
metropolitan area, downtown area with relatively tall buildings,
valley, well, duct, pathway, gas line, oil line, water pipe,
network of interconnecting
pathways/alleys/roads/tubes/cavities/caves/pipe-like structure/air
space/fluid space, human body, animal body, body cavity, organ,
bone, teeth, soft tissue, hard tissue, rigid tissue, non-rigid
tissue, blood/body fluid vessel, windpipe, air duct, den, etc. The
venue may be indoor space, outdoor space, The venue may include
both the inside and outside of the space. For example, the venue
may include both the inside of a building and the outside of the
building. For example, the venue can be a building that has one
floor or multiple floors, and a portion of the building can be
underground. The shape of the building can be, e.g., round, square,
rectangular, triangle, or irregular-shaped. These are merely
examples. The disclosure can be used to detect events in other
types of venue or spaces.
[0220] The wireless transmitter (e.g. Type 1 device) and/or the
wireless receiver (e.g. Type 2 device) may be embedded in a
portable device (e.g. a module, or a device with the module) that
may move with the object (e.g. in prior movement and/or current
movement). The portable device may be communicatively coupled with
the object using a wired connection (e.g. through USB, microUSB,
Firewire, HDMI, serial port, parallel port, and other connectors)
and/or a connection (e.g. Bluetooth, Bluetooth Low Energy (BLE),
WiFi, LTE, NFC, ZigBee, etc.). The portable device may be a
lightweight device. The portable may be powered by battery,
rechargeable battery and/or AC power. The portable device may be
very small (e.g. at sub-millimeter scale and/or sub-centimeter
scale), and/or small (e.g. coin-size, card-size, pocket-size, or
larger). The portable device may be large, sizable, and/or bulky
(e.g. heavy machinery to be installed). The portable device may be
a WiFi hotspot, access point, mobile WiFi (MiFi), dongle with
USB/micro USB/Firewire/other connector, smartphone, portable
computer, computer, tablet, smart device, internet-of-thing (IoT)
device, WiFi-enabled device, LTE-enabled device, a smart watch,
smart glass, smart mirror, smart antenna, smart battery, smart
light, smart pen, smart ring, smart door, smart window, smart
clock, small battery, smart wallet, smart belt, smart handbag,
smart clothing/garment, smart ornament, smart packaging, smart
paper/book/magazine/poster/printed matter/signage/display/lighted
system/lighting system, smart key/tool, smart
bracelet/chain/necklace/wearable/accessory, smart pad/cushion,
smart tile/block/brick/building material/other material, smart
garbage can/waste container, smart food carriage/storage, smart
ball/racket, smart chair/sofa/bed, smart
shoe/footwear/carpet/mat/shoe rack, smart glove/hand wear/ring/hand
ware, smart hat/headwear/makeup/sticker/tattoo, smart mirror, smart
toy, smart pill, smart utensil, smart bottle/food container, smart
tool, smart device, IoT device, WiFi enabled device, network
enabled device, 3G/4G/5G/6G enabled device, UMTS devices, 3GPP
devices, GSM devices, EDGE devices, TDMA devices, FDMA devices,
CDMA devices, WCDMA devices, TD-SCDMA devices, embeddable device,
implantable device, air conditioner, refrigerator, heater, furnace,
furniture, oven, cooking device, television/set-top box (STB)/DVD
player/audio player/video player/remote control, hi-fi, audio
device, speaker, lamp/light, wall, door, window, roof, roof
tile/shingle/structure/attic
structure/device/feature/installation/fixtures, lawn mower/garden
tools/yard tools/mechanics tools/garage tools/, garbage
can/container, 20-ft/40-ft container, storage container,
factory/manufacturing/production device, repair tools, fluid
container, machine, machinery to be installed, vehicle, cart,
wagon, warehouse vehicle, car, bicycle, motorcycle, boat, vessel,
airplane, basket/box/bag/bucket/container, smart
plate/cup/bowl/pot/mat/utensils/kitchen tools/kitchen
devices/kitchen
accessories/cabinets/tables/chairs/tiles/lights/water
pipes/taps/gas range/oven/dishwashing machine/etc. The portable
device may have a battery that may be replaceable, irreplaceable,
rechargeable, and/or non-rechargeable. The portable device may be
wirelessly charged. The portable device may be a smart payment
card. The portable device may be a payment card used in parking
lots, highways, entertainment parks, or other venues/facilities
that need payment. The portable device may have an identifier (ID)
or identity as described above.
[0221] A event may be monitored based on the TSCI. The event may be
an object related event, such as fall-down of the object (e.g. an
person and/or a sick person), rotation, hesitation, pause, impact
(e.g. a person hitting a sandbag, door, window, bed, chair, table,
desk, cabinet, box, another person, animal, bird, fly, table,
chair, ball, bowling ball, tennis ball, football, soccer ball,
baseball, basketball, volley ball, etc.), two-body action (e.g. a
person letting go a balloon, catching a fish, molding a clay,
writing a paper, person typing on a computer, etc.), car moving in
a garage, person carrying a smart phone and walking around an
airport/mall/government building/office/etc., autonomous moveable
object/machine moving around (e.g. vacuum cleaner, utility vehicle,
car, drone, self-driving car, etc.).
[0222] The task or the wireless smart sensing task may comprise:
object detection, presence detection, object recognition, object
verification, object counting, tool detection, tool recognition,
tool verification, machine detection, machine recognition, machine
verification, human detection, human recognition, human
verification, baby detection, baby recognition, baby verification,
human breathing detection, motion detection, motion degree
estimation, motion estimation, motion verification, periodic motion
detection, periodic motion estimation, periodic motion
verification, repeated motion detection/estimation/verification,
stationary motion detection, stationary motion estimation,
stationary motion verification, cyclo-stationary motion detection,
cyclo-stationary motion estimation, cyclo-stationary motion
verification, transient motion detection, transient motion
estimation, transient motion verification, trend detection, trend
estimation, trend verification, breathing detection, breathing
estimation, breathing estimation, human biometrics detection, human
biometrics estimation, human biometrics verification, environment
informatics detection, environment informatics estimation,
environment informatics verification, gait detection, gait
estimation, gait verification, gesture detection, gesture
estimation, gesture verification, machine learning, supervised
learning, unsupervised learning, semi-supervised learning,
clustering, feature extraction, featuring training, principal
component analysis, eigen-decomposition, frequency decomposition,
time decomposition, time-frequency decomposition, functional
decomposition, other decomposition, training, discriminative
training, supervised training, unsupervised training,
semi-supervised training, neural network, sudden motion detection,
fall-down detection, danger detection, life-threat detection,
regular motion detection, stationary motion detection,
cyclo-stationary motion detection, intrusion detection, suspicious
motion detection, security, safety monitoring, navigation,
guidance, map-based processing, map-based correction, irregularity
detection, locationing, tracking, multiple object tracking, indoor
tracking, indoor position, indoor navigation, power transfer,
wireless power transfer, object counting, car tracking in parking
garage, patient detection, patient monitoring, patient
verification, activating a device/system (e.g. security system,
alarm, siren, speaker, camera, heater/air-conditioning (HVAC)
system, coffee machine, cooking device, cleaning device,
housekeeping device, etc.), wireless communication, data
communication, signal broadcasting, networking, coordination,
administration, encryption, protection, cloud computing, other
processing and/or other task. The task may be performed by the Type
1 device, the Type 2 device, another Type 1 device, another Type 2
device, a nearby device, a local server (e.g. hub device), edge
server, a cloud server, and/or another device.
[0223] A first part of the task may comprise at least one of:
preprocessing, signal conditioning, signal processing,
post-processing, denoising, feature extraction, coding, encryption,
transformation, mapping, motion detection, motion estimation,
motion change detection, motion pattern detection, motion pattern
estimation, motion pattern recognition, vital sign detection, vital
sign estimation, vital sign recognition, periodic motion detection,
periodic motion estimation, repeated motion detection/estimation,
breathing rate detection, breathing rate estimation, breathing
pattern detection, breathing pattern estimation, breathing pattern
recognition, heart beat detection, heart beat estimation, heart
pattern detection, heart pattern estimation, heart pattern
recognition, gesture detection, gesture estimation, gesture
recognition, speed detection, speed estimation, object locationing,
object tracking, navigation, acceleration estimation, acceleration
detection, fall-down detection, change detection, intruder
detection, baby detection, baby monitoring, patient monitoring,
object recognition, wireless power transfer, and/or wireless
charging.
[0224] A second part of the task may comprise at least one of: a
smart home task, smart office task, smart building task, smart
factory task (e.g. manufacturing using a machine or an assembly
line), smart internet-of-thing (IoT) task, smart system task, smart
home operation, smart office operation, smart building operation,
smart manufacturing operation (e.g. moving supplies/parts/raw
material to a machine/an assembly line), IoT operation, smart
system operation, turning on a light, turning off the light,
controlling the light in at least one of: a room, region, and/or
the venue, playing a sound clip, playing the sound clip in at least
one of: the room, the region, and/or the venue, playing the sound
clip of at least one of: a welcome, greeting, farewell, first
message, and/or a second message associated with the first part of
the task, turning on an appliance, turning off the appliance,
controlling the appliance in at least one of: the room, the region,
and/or the venue, turning on an electrical system, turning off the
electrical system, controlling the electrical system in at least
one of: the room, the region, and/or the venue, turning on a
security system, turning off the security system, controlling the
security system in at least one of: the room, the region, and/or
the venue, turning on a mechanical system, turning off a mechanical
system, controlling the mechanical system in at least one of: the
room, the region, and/or the venue, and/or controlling at least one
of: an air conditioning system, heating system, ventilation system,
lighting system, heating device, stove, entertainment system, door,
fence, window, garage, computer system, networked device, networked
system, home appliance, office equipment, lighting device, robot
(e.g. robotic arm), smart vehicle, smart machine, assembly line,
smart device, internet-of-thing (IoT) device, smart home device,
and/or a smart office device.
[0225] The task may include: detect a user returning home, detect a
user leaving home, detect a user moving from one room to another,
detect/control/lock/unlock/open/close/partially open a
window/door/garage door/blind/curtain/panel/solar panel/sun shade,
detect a pet, detect/monitor a user doing something (e.g. sleeping
on sofa, sleeping in bedroom, running on treadmill, cooking,
sitting on sofa, watching TV, eating in kitchen, eating in dining
room, going upstairs/downstairs, going outside/coming back, in the
rest room, etc.), monitor/detect location of a user/pet, do
something (e.g. send a message, notify/report to someone)
automatically upon detection, do something for the user
automatically upon detecting the user, turn on/off/dim a light,
turn on/off music/radio/home entertainment system, turn
on/off/adjust/control TV/HiFi/set-top-box (STB)/home entertainment
system/smart speaker/smart device, turn on/off/adjust air
conditioning system, turn on/off/adjust ventilation system, turn
on/off/adjust heating system, adjust/control curtains/light shades,
turn on/off/wake a computer, turn on/off/pre-heat/control coffee
machine/hot water pot, turn on/off/control/preheat
cooker/oven/microwave oven/another cooking device, check/adjust
temperature, check weather forecast, check telephone message box,
check mail, do a system check, control/adjust a system,
check/control/arm/disarm security system/baby monitor,
check/control refrigerator, give a report (e.g. through a speaker
such as Google home, Amazon Echo, on a display/screen, via a
webpage/email/messaging system/notification system, etc.).
[0226] For example, when a user arrives home in his car, the task
may be to, automatically, detect the user or his car approaching,
open the garage door upon detection, turn on the driveway/garage
light as the user approaches the garage, turn on air
conditioner/heater/fan, etc. As the user enters the house, the task
may be to, automatically, turn on the entrance light, turn off
driveway/garage light, play a greeting message to welcome the user,
turn on the music, turn on the radio and tuning to the user's
favorite radio news channel, open the curtain/blind, monitor the
user's mood, adjust the lighting and sound environment according to
the user's mood or the current/imminent event (e.g. do romantic
lighting and music because the user is scheduled to eat dinner with
girlfriend in 1 hour) on the user's daily calendar, warm the food
in microwave that the user prepared in the morning, do a diagnostic
check of all systems in the house, check weather forecast for
tomorrow's work, check news of interest to the user, check user's
calendar and to-do list and play reminder, check telephone answer
system/messaging system/email and give a verbal report using dialog
system/speech synthesis, remind (e.g. using audible tool such as
speakers/HiFi/speech synthesis/sound/voice/music/song/sound
field/background sound field/dialog system, using visual tool such
as TV/entertainment system/computer/notebook/smart
pad/display/light/color/brightness/patterns/symbols, using haptic
tool/virtual reality tool/gesture/tool, using a smart
device/appliance/material/furniture/fixture, using web
tool/server/hub device/cloud server/fog server/edge server/home
network/mesh network, using messaging tool/notification
tool/communication tool/scheduling tool/email, using user
interface/GUI, using scent/smell/fragrance/taste, using neural
tool/nervous system tool, using a combination, etc.) the user of
his mother's birthday and to call her, prepare a report, and give
the report (e.g. using a tool for reminding as discussed above).
The task may turn on the air conditioner/heater/ventilation system
in advance, or adjust temperature setting of smart thermostat in
advance, etc. As the user moves from the entrance to the living
room, the task may be to turn on the living room light, open the
living room curtain, open the window, turn off the entrance light
behind the user, turn on the TV and set-top box, set TV to the
user's favorite channel, adjust an appliance according to the
user's preference and conditions/states (e.g. adjust lighting and
choose/play music to build a romantic atmosphere), etc.
[0227] Another example may be: When the user wakes up in the
morning, the task may be to detect the user moving around in the
bedroom, open the blind/curtain, open the window, turn off the
alarm clock, adjust indoor temperature from night-time temperature
profile to day-time temperature profile, turn on the bedroom light,
turn on the restroom light as the user approaches the restroom,
check radio or streaming channel and play morning news, turn on the
coffee machine and preheat the water, turn off security system,
etc. When the user walks from bedroom to kitchen, the task may be
to turn on the kitchen and hallway lights, turn off the bedroom and
restroom lights, move the music/message/reminder from the bedroom
to the kitchen, turn on the kitchen TV, change TV to morning news
channel, lower the kitchen blind and open the kitchen window to
bring in fresh air, unlock backdoor for the user to check the
backyard, adjust temperature setting for the kitchen, etc.
[0228] Another example may be: When the user leaves home for work,
the task may be to detect the user leaving, play a farewell and/or
have-a-good-day message, open/close garage door, turn on/off garage
light and driveway light, turn off/dim lights to save energy (just
in case the user forgets), close/lock all windows/doors (just in
case the user forgets), turn off appliance (especially stove, oven,
microwave oven), turn on/arm the home security system to guard the
home against any intruder, adjust air
conditioning/heating/ventilation systems to "away-from-home"
profile to save energy, send alerts/reports/updates to the user's
smart phone, etc.
[0229] A motion may comprise at least one of: a no-motion, resting
motion, non-moving motion, movement, change in position/location,
deterministic motion, transient motion, fall-down motion, repeating
motion, periodic motion, pseudo-periodic motion, periodic/repeated
motion associated with breathing, periodic/repeated motion
associated with heartbeat, periodic/repeated motion associated with
living object, periodic/repeated motion associated with machine,
periodic/repeated motion associated with man-made object,
periodic/repeated motion associated with nature, complex motion
with transient element and periodic element, repetitive motion,
non-deterministic motion, probabilistic motion, chaotic motion,
random motion, complex motion with non-deterministic element and
deterministic element, stationary random motion, pseudo-stationary
random motion, cyclo-stationary random motion, non-stationary
random motion, stationary random motion with periodic
autocorrelation function (ACF), random motion with periodic ACF for
period of time, random motion that is pseudo-stationary for a
period of time, random motion of which an instantaneous ACF has a
pseudo-periodic/repeating element for a period of time, machine
motion, mechanical motion, vehicle motion, drone motion,
air-related motion, wind-related motion, weather-related motion,
water-related motion, fluid-related motion, ground-related motion,
change in electro-magnetic characteristics, sub-surface motion,
seismic motion, plant motion, animal motion, human motion, normal
motion, abnormal motion, dangerous motion, warning motion,
suspicious motion, rain, fire, flood, tsunami, explosion,
collision, imminent collision, human body motion, head motion,
facial motion, eye motion, mouth motion, tongue motion, neck
motion, finger motion, hand motion, arm motion, shoulder motion,
body motion, chest motion, abdominal motion, hip motion, leg
motion, foot motion, body joint motion, knee motion, elbow motion,
upper body motion, lower body motion, skin motion, below-skin
motion, subcutaneous tissue motion, blood vessel motion,
intravenous motion, organ motion, heart motion, lung motion,
stomach motion, intestine motion, bowel motion, eating motion,
breathing motion, facial expression, eye expression, mouth
expression, talking motion, singing motion, eating motion, gesture,
hand gesture, arm gesture, keystroke, typing stroke, user-interface
gesture, man-machine interaction, gait, dancing movement,
coordinated movement, and/or coordinated body movement.
[0230] The heterogeneous IC of the Type 1 device and/or any Type 2
receiver may comprise low-noise amplifier (LNA), power amplifier,
transmit-receive switch, media access controller, baseband radio,
2.4 GHz radio, 3.65 GHz radio, 4.9 GHz radio, 5 GHz radio, 5.9 GHz
radio, below 6 GHz radio, below 60 GHz radio and/or another
radio.
[0231] The heterogeneous IC may comprise a processor, a memory
communicatively coupled with the processor, and a set of
instructions stored in the memory to be executed by the processor.
The IC and/or any processor may comprise at least one of: general
purpose processor, special purpose processor, microprocessor,
multi-processor, multi-core processor, parallel processor, CISC
processor, RISC processor, microcontroller, central processing unit
(CPU), graphical processor unit (GPU), digital signal processor
(DSP), application specific integrated circuit (ASIC), field
programmable gate array (FPGA), embedded processor (e.g. ARM),
logic circuit, other programmable logic device, discrete logic,
and/or a combination.
[0232] The heterogeneous IC may support broadband network, wireless
network, mobile network, mesh network, cellular network, wireless
local area network (WLAN), wide area network (WAN), and
metropolitan area network (MAN), WLAN standard, WiFi, LTE, LTE-A,
LTE-U, 802.11 standard, 802.11a, 802.11b, 802.11g, 802.11n,
802.11ac, 802.11ad, 802.11af, 802.11ah, 802.11ax, 802.11ay, mesh
network standard, 802.15 standard, 802.16 standard, cellular
network standard, 3G, 3.5G, 4G, beyond 4G, 4.5G, 5G, 6G, 7G, 8G,
9G, UMTS, 3GPP, GSM, EDGE, TDMA, FDMA, CDMA, WCDMA, TD-SCDMA,
Bluetooth, Bluetooth Low-Energy (BLE), NFC, Zigbee, WiMax, and/or
another wireless network protocol.
[0233] The processor may comprise general purpose processor,
special purpose processor, microprocessor, microcontroller,
embedded processor, digital signal processor, central processing
unit (CPU), graphical processing unit (GPU), multi-processor,
multi-core processor, and/or processor with graphics capability,
and/or a combination.
[0234] The memory may be volatile, non-volatile, random access
memory (RAM), Read Only Memory (ROM), Electrically Programmable ROM
(EPROM), Electrically Erasable Programmable ROM (EEPROM), hard
disk, flash memory, CD-ROM, DVD-ROM, magnetic storage, optical
storage, organic storage, storage system, storage network, network
storage, cloud storage, edge storage, local storage, external
storage, internal storage, or other form of non-transitory storage
medium known in the art.
[0235] The set of instructions (machine executable code)
corresponding to the method steps may be embodied directly in
hardware, in software, in firmware, or in combinations thereof. The
set of instructions may be embedded, pre-loaded, loaded upon boot
up, loaded on the fly, loaded on demand, pre-installed, installed,
and/or downloaded.
[0236] The presentation may be a presentation in an audio-visual
way (e.g. using combination of visual, graphics, text, symbols,
color, shades, video, animation, sound, speech, audio, etc.),
graphical way (e.g. using GUI, animation, video), textual way (e.g.
webpage with text, message, animated text, etc.), symbolic way
(e.g. emoticon, signs, hand gesture, etc.), or mechanical way (e.g.
vibration, actuator movement, haptics, etc.).
[0237] Basic Computation
[0238] Computational workload associated with the method is shared
among the processor, the Type 1 heterogeneous wireless device, the
Type 2 heterogeneous wireless device, a local server (e.g. hub
device), a cloud server, and another processor.
[0239] An operation, pre-processing, processing and/or
postprocessing may be applied to data (e.g. TSCI, autocorrelation,
features of TSCI). An operation may be preprocessing, processing
and/or postprocessing. The preprocessing, processing and/or
postprocessing may be an operation. An operation may comprise
preprocessing, processing, post-processing, scaling, computing a
confidence factor, computing a function of the operands, filtering,
linear filtering, nonlinear filtering, folding, grouping, energy
computation, lowpass filtering, bandpass filtering, highpass
filtering, median filtering, rank filtering, quartile filtering,
percentile filtering, mode filtering, finite impulse response (FIR)
filtering, infinite impulse response (IIR) filtering, moving
average (MA) filtering, autoregressive (AR) filtering,
autoregressive moving averaging (ARMA) filtering, selective
filtering, adaptive filtering, interpolation, decimation,
subsampling, upsampling, resampling, time correction, time base
correction, phase correction, magnitude correction, phase cleaning,
magnitude cleaning, matched filtering, enhancement, restoration,
denoising, smoothing, signal conditioning, enhancement,
restoration, spectral analysis, linear transform, nonlinear
transform, inverse transform, frequency transform, inverse
frequency transform, Fourier transform (FT), discrete time FT
(DTFT), discrete FT (DFT), fast FT (FFT), wavelet transform,
Laplace transform, Hilbert transform, Hadamard transform,
trigonometric transform, sine transform, cosine transform, DCT,
power-of-2 transform, sparse transform, graph-based transform,
graph signal processing, fast transform, a transform combined with
zero padding, cyclic padding, padding, zero padding, feature
extraction, decomposition, projection, orthogonal projection,
non-orthogonal projection, over-complete projection,
eigen-decomposition, singular value decomposition (SVD), principle
component analysis (PCA), independent component analysis (ICA),
grouping, sorting, thresholding, soft thresholding, hard
thresholding, clipping, soft clipping, first derivative, second
order derivative, high order derivative, convolution,
multiplication, division, addition, subtraction, integration,
maximization, minimization, least mean square error, recursive
least square, constrained least square, batch least square, least
absolute error, least mean square deviation, least absolute
deviation, local maximization, local minimization, optimization of
a cost function, neural network, recognition, labeling, training,
clustering, machine learning, supervised learning, unsupervised
learning, semi-supervised learning, comparison with another TSCI,
similarity score computation, quantization, vector quantization,
matching pursuit, compression, encryption, coding, storing,
transmitting, normalization, temporal normalization, frequency
domain normalization, classification, clustering, labeling,
tagging, learning, detection, estimation, learning network,
mapping, remapping, expansion, storing, retrieving, transmitting,
receiving, representing, merging, combining, splitting, tracking,
monitoring, matched filtering, Kalman filtering, particle filter,
intrapolation, extrapolation, histogram estimation, importance
sampling, Monte Carlo sampling, compressive sensing, representing,
merging, combining, splitting, scrambling, error protection,
forward error correction, doing nothing, time varying processing,
conditioning averaging, weighted averaging, arithmetic mean,
geometric mean, harmonic mean, averaging over selected frequency,
averaging over antenna links, logical operation, permutation,
combination, sorting, AND, OR, XOR, union, intersection, vector
addition, vector subtraction, vector multiplication, vector
division, inverse, norm, distance, and/or another operation. The
operation may be the preprocessing, processing, and/or
post-processing. Operations may be applied jointly on multiple time
series or functions.
[0240] The function (e.g. function of operands) may comprise:
scalar function, vector function, discrete function, continuous
function, polynomial function, characteristics, feature, magnitude,
phase, exponential function, logarithmic function, trigonometric
function, transcendental function, logical function, linear
function, algebraic function, nonlinear function, piecewise linear
function, real function, complex function, vector-valued function,
inverse function, derivative of function, integration of function,
circular function, function of another function, one-to-one
function, one-to-many function, many-to-one function, many-to-many
function, zero crossing, absolute function, indicator function,
mean, mode, median, range, statistics, histogram, variance,
standard deviation, arithmetic mean, geometric mean, harmonic mean,
trimmed mean, percentile, square, cube, root, power, sine, cosine,
tangent, cotangent, secant, cosecant, elliptical function,
parabolic function, hyperbolic function, game function, zeta
function, absolute value, thresholding, limiting function, floor
function, rounding function, sign function, quantization, piecewise
constant function, composite function, function of function, time
function processed with an operation (e.g. filtering),
probabilistic function, stochastic function, random function,
ergodic function, stationary function, deterministic function,
periodic function, repeated function, transformation, frequency
transform, inverse frequency transform, discrete time transform,
Laplace transform, Hilbert transform, sine transform, cosine
transform, triangular transform, wavelet transform, integer
transform, power-of-2 transform, sparse transform, projection,
decomposition, principle component analysis (PCA), independent
component analysis (ICA), neural network, feature extraction,
moving function, function of moving window of neighboring items of
time series, filtering function, convolution, mean function,
histogram, variance/standard deviation function, statistical
function, short-time transform, discrete transform, discrete
Fourier transform, discrete cosine transform, discrete sine
transform, Hadamard transform, eigen-decomposition, eigenvalue,
singular value decomposition (SVD), singular value, orthogonal
decomposition, matching pursuit, sparse transform, sparse
approximation, any decomposition, graph-based processing,
graph-based transform, graph signal processing, classification,
identifying a class/group/category, labeling, learning, machine
learning, detection, estimation, feature extraction, learning
network, feature extraction, denoising, signal enhancement, coding,
encryption, mapping, remapping, vector quantization, lowpass
filtering, highpass filtering, bandpass filtering, matched
filtering, Kalman filtering, preprocessing, postprocessing,
particle filter, FIR filtering, IIR filtering, autoregressive (AR)
filtering, adaptive filtering, first order derivative, high order
derivative, integration, zero crossing, smoothing, median
filtering, mode filtering, sampling, random sampling, resampling
function, downsampling, down-converting, upsampling, up-converting,
interpolation, extrapolation, importance sampling, Monte Carlo
sampling, compressive sensing, statistics, short term statistics,
long term statistics, autocorrelation function, cross correlation,
moment generating function, time averaging, weighted averaging,
special function, Bessel function, error function, complementary
error function, Beta function, Gamma function, integral function,
Gaussian function, Poisson function, etc.
[0241] Machine learning, training, discriminative training, deep
learning, neural network, continuous time processing, distributed
computing, distributed storage, acceleration using
GPU/DSP/coprocessor/multicore/multiprocessing may be applied to a
step (or each step) of this disclosure.
[0242] A frequency transform may include Fourier transform, Laplace
transform, Hadamard transform, Hilbert transform, sine transform,
cosine transform, triangular transform, wavelet transform, integer
transform, power-of-2 transform, combined zero padding and
transform, Fourier transform with zero padding, and/or another
transform. Fast versions and/or approximated versions of the
transform may be performed. The transform may be performed using
floating point, and/or fixed point arithmetic.
[0243] An inverse frequency transform may include inverse Fourier
transform, inverse Laplace transform, inverse Hadamard transform,
inverse Hilbert transform, inverse sine transform, inverse cosine
transform, inverse triangular transform, inverse wavelet transform,
inverse integer transform, inverse power-of-2 transform, combined
zero padding and transform, inverse Fourier transform with zero
padding, and/or another transform. Fast versions and/or
approximated versions of the transform may be performed. The
transform may be performed using floating point, and/or fixed point
arithmetic.
[0244] A quantity from a TSCI may be computed. The quantity may
comprise statistic of at least one of: motion, location, map
coordinate, height, speed, acceleration, movement angle, rotation,
size, volume, time trend, pattern, one-time pattern, repeating
pattern, evolving pattern, time pattern, mutually excluding
patterns, related/correlated patterns, cause-and-effect,
correlation, short-term/long-term correlation, tendency,
inclination, statistics, typical behavior, atypical behavior, time
trend, time profile, periodic motion, repeated motion, repetition,
tendency, change, abrupt change, gradual change, frequency,
transient, breathing, gait, action, event, suspicious event,
dangerous event, alarming event, warning, belief, proximity,
collision, power, signal, signal power, signal strength, received
signal strength indicator (RSSI), signal amplitude, signal phase,
signal frequency component, signal frequency band component,
channel state information (CSI), map, time, frequency,
time-frequency, decomposition, orthogonal decomposition,
non-orthogonal decomposition, tracking, breathing, heart beat,
statistical parameters, cardiopulmonary statistics/analytics, daily
activity statistics/analytics, chronic disease
statistics/analytics, medical statistics/analytics, an early (or
instantaneous or contemporaneous or delayed)
indication/suggestion/sign/indicator/verifier/detection/symptom of
a disease/condition/situation, biometric, baby, patient, machine,
device, temperature, vehicle, parking lot, venue, lift, elevator,
spatial, road, fluid flow, home, room, office, house, building,
warehouse, storage, system, ventilation, fan, pipe, duct, people,
human, car, boat, truck, airplane, drone, downtown, crowd,
impulsive event, cyclo-stationary, environment, vibration,
material, surface, 3-dimensional, 2-dimensional, local, global,
presence, and/or another.
[0245] Sliding Window/Algorithm
[0246] Sliding time window may have time varying window width. It
may be smaller at the beginning to enable fast acquisition and may
increase over time to a steady-state size. The steady-state size
may be related to the frequency, repeated motion, transient motion,
and/or spatial-temporal information to be monitored. Even in steady
state, the window size may be adaptively (and/or dynamically)
changed (e.g. adjusted, varied, modified) based on battery life,
power consumption, available computing power, change in amount of
targets, the nature of motion to be monitored, etc.
[0247] The time shift between two sliding time windows at adjacent
time instance may be constant/variable/locally adaptive/dynamically
adjusted over time. When shorter time shift is used, the update of
any monitoring may be more frequent which may be used for fast
changing situations, object motions, and/or objects. Longer time
shift may be used for slower situations, object motions, and/or
objects.
[0248] The window width/size and/or time shift may be changed (e.g.
adjusted, varied, modified) upon a user request/choice. The time
shift may be changed automatically (e.g. as controlled by
processor/computer/server/hub device/cloud server) and/or
adaptively (and/or dynamically).
[0249] At least one characteristics of a function (e.g.
auto-correlation function, auto-covariance function,
cross-correlation function, cross-covariance function, power
spectral density, time function, frequency domain function,
frequency transform) may be determined (e.g. by an object tracking
server, the processor, the Type 1 heterogeneous device, the Type 2
heterogeneous device, and/or another device). The at least one
characteristics of the function may include: a local maximum, local
minimum, local extremum, local extremum with positive time offset,
first local extremum with positive time offset, n{circumflex over (
)}th local extremum with positive time offset, local extremum with
negative time offset, first local extremum with negative time
offset, n{circumflex over ( )}th local extremum with negative time
offset, constrained (with argument within constraint) maximum,
minimum, constrained maximum, constrained minimum, constrained
extremum, slope, derivative, higher order derivative, maximum
slope, minimum slope, local maximum slope, local maximum slope with
positive time offset, local minimum slope, constrained maximum
slope, constrained minimum slope, maximum higher order derivative,
minimum higher order derivative, constrained higher order
derivative, zero-crossing, zero crossing with positive time offset,
n{circumflex over ( )}th zero crossing with positive time offset,
zero crossing with negative time offset, n{circumflex over ( )}th
zero crossing with negative time offset, constrained zero-crossing,
zero-crossing of slope, zero-crossing of higher order derivative,
and/or another characteristics. At least one argument of the
function associated with the at least one characteristics of the
function may be identified. Some quantity (e.g. spatial-temporal
information of the object) may be determined based on the at least
one argument of the function.
[0250] A characteristics (e.g. characteristics of motion of an
object in the venue) may comprise at least one of: an instantaneous
characteristics, short-term characteristics, repetitive
characteristics, recurring characteristics, history, incremental
characteristics, changing characteristics, deviational
characteristics, phase, magnitude, degree, time characteristics,
frequency characteristics, time-frequency characteristics,
decomposition characteristics, orthogonal decomposition
characteristics, non-orthogonal decomposition characteristics,
deterministic characteristics, probabilistic characteristics,
stochastic characteristics, autocorrelation function (ACF), mean,
variance, standard deviation, statistics, duration, timing, trend,
periodic characteristics, repetition characteristics, long-term
characteristics, historical characteristics, average
characteristics, current characteristics, past characteristics,
future characteristics, predicted characteristics, location,
distance, height, speed, direction, velocity, acceleration, change
of the acceleration, angle, angular speed, angular velocity,
angular acceleration of the object, change of the angular
acceleration, orientation of the object, angular of rotation,
deformation of the object, shape of the object, change of shape of
the object, change of size of the object, change of structure of
the object, and/or change of characteristics of the object.
[0251] At least one local maximum and at least one local minimum of
the function may be identified. At least one local
signal-to-noise-ratio-like (SNR-like) parameter may be computed for
each pair of adjacent local maximum and local minimum. The SNR-like
parameter may be a function (e.g. linear, log, exponential
function, monotonic function) of a fraction of a quantity (e.g.
power, magnitude, etc.) of the local maximum over the same quantity
of the local minimum. It may also be the function of a difference
between the quantity of the local maximum and the same quantity of
the local minimum.
[0252] Significant local peaks may be identified or selected. Each
significant local peak may be a local maximum with SNR-like
parameter greater than a threshold T1 and/or a local maximum with
amplitude greater than a threshold T2.
[0253] The at least one local minimum and the at least one local
minimum in the frequency domain may be identified/computed using a
persistence-based approach.
[0254] A set of selected significant local peaks may be selected
from the set of identified significant local peaks based on a
selection criterion (e.g. a quality criterion, a signal quality
condition). The characteristics/spatial-temporal information of the
object may be computed based on the set of selected significant
local peaks and frequency values associated with the set of
selected significant local peaks.
[0255] In one example, the selection criterion may always
correspond to select the strongest peaks in a range. While the
strongest peaks may be selected, the unselected peaks may still be
significant (rather strong).
[0256] Unselected significant peaks may be stored and/or monitored
as "reserved" peaks for use in future selection in future sliding
time windows. As an example, there may be a particular peak (at a
particular frequency) appearing consistently over time. Initially,
it may be significant but not selected (as other peaks may be
stronger). But in later time, the peak may become stronger and more
dominant and may be selected. When it became "selected", it may be
back-traced in time and made "selected" in the earlier time when it
was significant but not selected. In such case, the back-traced
peak may replace a previously selected peak in an early time. The
replaced peak may be the relatively weakest, or a peak that appear
in isolation in time (i.e. appearing only briefly in time).
[0257] In another example, the selection criterion may not
correspond to select the strongest peaks in the range. Instead, it
may consider not only the "strength" of the peak, but the "trace"
of the peak--peaks that may have happened in the past, especially
those peaks that have been identified for a long time.
[0258] For example, if a finite state machine (FSM) is used, it may
select the peak(s) based on the state of the FSM. Decision
thresholds may be computed adaptively (and/or dynamically) based on
the state of the FSM.
[0259] A similarity score and/or component similarity score may be
computed (e.g. by a server (e.g. hub device), the processor, the
Type 1 device, the Type 2 device, a local server, a cloud server,
and/or another device) based on a pair of temporally adjacent CI of
a TSCI. The pair may come from the same sliding window or two
different sliding windows. The similarity score may also be based
on a pair of, temporally adjacent or not so adjacent, CI from two
different TSCI. The similarity score and/or component similar score
may be/comprise: time reversal resonating strength (TRRS),
correlation, cross-correlation, auto-correlation, correlation
indicator, covariance, cross-covariance, auto-covariance, inner
product of two vectors, distance score, norm, metric, quality
metric, signal quality condition, statistical characteristics,
discrimination score, neural network, deep learning network,
machine learning, training, discrimination, weighted averaging,
preprocessing, denoising, signal conditioning, filtering, time
correction, timing compensation, phase offset compensation,
transformation, component-wise operation, feature extraction,
finite state machine, and/or another score. The characteristics
and/or spatial-temporal information may be determined/computed
based on the similarity score.
[0260] Any threshold may be pre-determined, adaptively (and/or
dynamically) determined and/or determined by a finite state
machine. The adaptive determination may be based on time, space,
location, antenna, path, link, state, battery life, remaining
battery life, available power, available computational resources,
available network bandwidth, etc.
[0261] A threshold to be applied to a test statistics to
differentiate two events (or two conditions, or two situations, or
two states), A and B, may be determined. Data (e.g. CI, channel
state information (CSI), power parameter, etc.) may be collected
under A and/or under B in a training situation. The test statistics
may be computed based on the data. Distributions of the test
statistics under A may be compared with distributions of the test
statistics under B (reference distribution), and the threshold may
be chosen according to some criteria. The criteria may comprise:
maximum likelihood (ML), maximum aposterior probability (MAP),
discriminative training, minimum Type 1 error for a given Type 2
error, minimum Type 2 error for a given Type 1 error, and/or other
criteria (e.g. a quality criterion, signal quality condition). The
threshold may be adjusted to achieve different sensitivity to the
A, B and/or another event/condition/situation/state. The threshold
adjustment may be automatic, semi-automatic and/or manual. The
threshold adjustment may be applied once, sometimes, often,
periodically, repeatedly, occasionally, sporadically, and/or on
demand. The threshold adjustment may be adaptive (and/or
dynamically adjusted). The threshold adjustment may depend on the
object, object movement/location/direction/action, object
characteristics/spatial-temporal
information/size/property/trait/habit/behavior, the venue,
feature/fixture/furniture/barrier/material/machine/living
thing/thing/object/boundary/surface/medium that is in/at/of the
venue, map, constraint of the map, the
event/state/situation/condition, time, timing, duration, current
state, past history, user, and/or a personal preference, etc.
[0262] A stopping criterion (or skipping or bypassing or blocking
or pausing or passing or rejecting criterion) of an iterative
algorithm may be that change of a current parameter (e.g. offset
value) in the updating in an iteration is less than a threshold.
The threshold may be 0.5, 1, 1.5, 2, or another number. The
threshold may be adaptive (and/or dynamically adjusted). It may
change as the iteration progresses. For the offset value, the
adaptive threshold may be determined based on the task, particular
value of the first time, the current time offset value, the
regression window, the regression analysis, the regression
function, the regression error, the convexity of the regression
function, and/or an iteration number.
[0263] The local extremum may be determined as the corresponding
extremum of the regression function in the regression window. The
local extremum may be determined based on a set of time offset
values in the regression window and a set of associated regression
function values. Each of the set of associated regression function
values associated with the set of time offset values may be within
a range from the corresponding extremum of the regression function
in the regression window.
[0264] The searching for a local extremum may comprise robust
search, minimization, maximization, optimization, statistical
optimization, dual optimization, constraint optimization, convex
optimization, global optimization, local optimization an energy
minimization, linear regression, quadratic regression, higher order
regression, linear programming, nonlinear programming, stochastic
programming, combinatorial optimization, constraint programming,
constraint satisfaction, calculus of variations, optimal control,
dynamic programming, mathematical programming, multi-objective
optimization, multi-modal optimization, disjunctive programming,
space mapping, infinite-dimensional optimization, heuristics,
metaheuristics, convex programming, semidefinite programming, conic
programming, cone programming, integer programming, quadratic
programming, fractional programming, numerical analysis, simplex
algorithm, iterative method, gradient descent, subgradient method,
coordinate descent, conjugate gradient method, Newton's algorithm,
sequential quadratic programming, interior point method, ellipsoid
method, reduced gradient method, quasi-Newton method, simultaneous
perturbation stochastic approximation, interpolation method,
pattern search method, line search, non-differentiable
optimization, genetic algorithm, evolutionary algorithm, dynamic
relaxation, hill climbing, particle swarm optimization, gravitation
search algorithm, simulated annealing, memetic algorithm,
differential evolution, dynamic relaxation, stochastic tunneling,
Tabu search, reactive search optimization, curve fitting, least
square, simulation based optimization, variational calculus, and/or
variant. The search for local extremum may be associated with an
objective function, loss function, cost function, utility function,
fitness function, energy function, and/or an energy function.
[0265] Regression may be performed using regression function to fit
sampled data (e.g. CI, feature of CI, component of CI) or another
function (e.g. autocorrelation function) in a regression window. In
at least one iteration, a length of the regression window and/or a
location of the regression window may change. The regression
function may be linear function, quadratic function, cubic
function, polynomial function, and/or another function.
[0266] The regression analysis may minimize at least one of: error,
aggregate error, component error, error in projection domain, error
in selected axes, error in selected orthogonal axes, absolute
error, square error, absolute deviation, square deviation, higher
order error (e.g. third order, fourth order, etc.), robust error
(e.g. square error for smaller error magnitude and absolute error
for larger error magnitude, or first kind of error for smaller
error magnitude and second kind of error for larger error
magnitude), another error, weighted sum (or weighted mean) of
absolute/square error (e.g. for wireless transmitter with multiple
antennas and wireless receiver with multiple antennas, each pair of
transmitter antenna and receiver antenna form a link), mean
absolute error, mean square error, mean absolute deviation, and/or
mean square deviation, etc. Error associated with different links
may have different weights. One possibility is that some links
and/or some components with larger noise or lower signal quality
metric may have smaller or bigger weight), weighted sum of square
error, weighted sum of higher order error, weighted sum of robust
error, weighted sum of the another error, absolute cost, square
cost, higher order cost, robust cost, another cost, weighted sum of
absolute cost, weighted sum of square cost, weighted sum of higher
order cost, weighted sum of robust cost, and/or weighted sum of
another cost.
[0267] The regression error determined may be an absolute error,
square error, higher order error, robust error, yet another error,
weighted sum of absolute error, weighted sum of square error,
weighted sum of higher order error, weighted sum of robust error,
and/or weighted sum of the yet another error.
[0268] The time offset associated with maximum regression error (or
minimum regression error) of the regression function with respect
to the particular function in the regression window may become the
updated current time offset in the iteration.
[0269] A local extremum may be searched based on a quantity
comprising a difference of two different errors (e.g. a difference
between absolute error and square error). Each of the two different
errors may comprise an absolute error, square error, higher order
error, robust error, another error, weighted sum of absolute error,
weighted sum of square error, weighted sum of higher order error,
weighted sum of robust error, and/or weighted sum of the another
error.
[0270] The quantity may be compared with a reference data or a
reference distribution, such as an F-distribution, central
F-distribution, another statistical distribution, threshold,
threshold associated with probability/histogram, threshold
associated with probability/histogram of finding false peak,
threshold associated with the F-distribution, threshold associated
the central F-distribution, and/or threshold associated with the
another statistical distribution.
[0271] The regression window may be determined based on at least
one of: the movement (e.g. change in position/location) of the
object, quantity associated with the object, the at least one
characteristics and/or spatial-temporal information of the object
associated with the movement of the object, estimated location of
the local extremum, noise characteristics, estimated noise
characteristics, signal quality metric, F-distribution, central
F-distribution, another statistical distribution, threshold, preset
threshold, threshold associated with probability/histogram,
threshold associated with desired probability, threshold associated
with probability of finding false peak, threshold associated with
the F-distribution, threshold associated the central
F-distribution, threshold associated with the another statistical
distribution, condition that quantity at the window center is
largest within the regression window, condition that the quantity
at the window center is largest within the regression window,
condition that there is only one of the local extremum of the
particular function for the particular value of the first time in
the regression window, another regression window, and/or another
condition.
[0272] The width of the regression window may be determined based
on the particular local extremum to be searched. The local extremum
may comprise first local maximum, second local maximum, higher
order local maximum, first local maximum with positive time offset
value, second local maximum with positive time offset value, higher
local maximum with positive time offset value, first local maximum
with negative time offset value, second local maximum with negative
time offset value, higher local maximum with negative time offset
value, first local minimum, second local minimum, higher local
minimum, first local minimum with positive time offset value,
second local minimum with positive time offset value, higher local
minimum with positive time offset value, first local minimum with
negative time offset value, second local minimum with negative time
offset value, higher local minimum with negative time offset value,
first local extremum, second local extremum, higher local extremum,
first local extremum with positive time offset value, second local
extremum with positive time offset value, higher local extremum
with positive time offset value, first local extremum with negative
time offset value, second local extremum with negative time offset
value, and/or higher local extremum with negative time offset
value.
[0273] A current parameter (e.g. time offset value) may be
initialized based on a target value, target profile, trend, past
trend, current trend, target speed, speed profile, target speed
profile, past speed trend, the motion or movement (e.g. change in
position/location) of the object, at least one characteristics
and/or spatial-temporal information of the object associated with
the movement of object, positional quantity of the object, initial
speed of the object associated with the movement of the object,
predefined value, initial width of the regression window, time
duration, value based on carrier frequency of the signal, value
based on subcarrier frequency of the signal, bandwidth of the
signal, amount of antennas associated with the channel, noise
characteristics, signal h metric, and/or an adaptive (and/or
dynamically adjusted) value. The current time offset may be at the
center, on the left side, on the right side, and/or at another
fixed relative location, of the regression window.
[0274] In the presentation, information may be displayed with a map
of the venue. The information may comprise: location, zone, region,
area, corrected location, approximate location, location with
respect to (w.r.t.) a map of the venue, location w.r.t. a
segmentation of the venue, direction, a path, a path w.r.t. the map
and/or the segmentation, a trace (e.g. location within a time
window such as the past 5 seconds, or past 10 seconds; the time
window duration may be adjusted adaptively (and/or dynamically);
the time window duration may be adaptively (and/or dynamically)
adjusted w.r.t. speed, acceleration, etc.), a history of a path,
approximate regions/zones along a path, a history/summary of past
locations, a history of past locations of interest,
frequently-visited areas, customer traffic, crowd distribution,
crowd behavior, crowd control information, speed, acceleration,
motion statistics, breathing rate, heart rate, presence/absence of
motion, presence/absence of people or pets or object,
presence/absence of vital sign, gesture, gesture control (control
of devices using gesture), location-based gesture control,
information of a location-based operation, an identity (ID) or
identifier of the respect object (e.g. a pet, a person, an
self-guided machine/device, a vehicle, a drone, a car, a boat, a
bicycle, a self-guided vehicle, a machine with a fan, an
air-conditioner, a TV, a machine with a movable part), an
identification of a user (e.g. a person), an information of the
user, a
location/speed/acceleration/direction/motion/gesture/gesture
control/motion trace of the user, an ID or identifier of the user,
an activity of the u