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name:-0.010864019393921
name:-0.0033001899719238
Schrier; Madeline Jane Patent Filings

Schrier; Madeline Jane

Patent Applications and Registrations

Patent applications and USPTO patent grants for Schrier; Madeline Jane.The latest application filed is for "low-and high-fidelity classifiers applied to road-scene images".

Company Profile
3.8.13
  • Schrier; Madeline Jane - Palo Alto CA
*profile and listings may contain filings by different individuals or companies with the same name. Review application materials to confirm ownership/assignment.
Patent Activity
PatentDate
Low-And High-Fidelity Classifiers Applied To Road-Scene Images
App 20220004807 - Nariyambut Murali; Vidya ;   et al.
2022-01-06
Low- and high-fidelity classifiers applied to road-scene images
Grant 11,200,447 - Nariyambut Murali , et al. December 14, 2
2021-12-14
Fixation Generation For Machine Learning
App 20210334610 - Schrier; Madeline Jane ;   et al.
2021-10-28
Fixation generation for machine learning
Grant 11,087,186 - Schrier , et al. August 10, 2
2021-08-10
Detecting an animal proximate a vehicle
Grant 10,665,104 - Sivashankar , et al.
2020-05-26
Fixation Generation For Machine Learning
App 20200050905 - Schrier; Madeline Jane ;   et al.
2020-02-13
Fixation generation for machine learning
Grant 10,489,691 - Schrier , et al. Nov
2019-11-26
Low- And High-Fidelity Classifiers Applied To Road-Scene Images
App 20190311221 - Nariyambut Murali; Vidya ;   et al.
2019-10-10
Communicating animal proximity to a vehicle
Grant 10,410,522 - Sivashankar , et al. Sept
2019-09-10
Low- and high-fidelity classifiers applied to road-scene images
Grant 10,373,019 - Nariyambut Murali , et al.
2019-08-06
Communicating Animal Proximity to a Vehicle
App 20180350240 - Sivashankar; Nithika ;   et al.
2018-12-06
Detecting an Animal Proximate a Vehicle
App 20180286243 - Sivashankar; Nithika ;   et al.
2018-10-04
Collision Avoidance Using Auditory Data Augmented With Map Data
App 20180186369 - Reiff; Brielle ;   et al.
2018-07-05
Collision avoidance using auditory data augmented with map data
Grant 9,937,922 - Reiff , et al. April 10, 2
2018-04-10
Self-recognition of autonomous vehicles in mirrored or reflective surfaces
Grant 9,881,219 - Reiff , et al. January 30, 2
2018-01-30
Low- And High-fidelity Classifiers Applied To Road-scene Images
App 20170206434 - Nariyambut Murali; Vidya ;   et al.
2017-07-20
Fixation Generation For Machine Learning
App 20170206440 - Schrier; Madeline Jane ;   et al.
2017-07-20
Pedestrian Detection With Saliency Maps
App 20170206426 - Schrier; Madeline Jane ;   et al.
2017-07-20
Low- And High-fidelity Classifiers Applied To Road-scene Images
App 20170200063 - Nariyambut Murali; Vidya ;   et al.
2017-07-13
Self-Recognition of Autonomous Vehicles in Mirrored or Reflective Surfaces
App 20170103270 - Reiff; Brielle ;   et al.
2017-04-13
Collision Avoidance Using Auditory Data Augmented With Map Data
App 20170096138 - Reiff; Brielle ;   et al.
2017-04-06

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