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name:-0.018224000930786
name:-0.011225938796997
name:-0.022068977355957
Sun; Deqing Patent Filings

Sun; Deqing

Patent Applications and Registrations

Patent applications and USPTO patent grants for Sun; Deqing.The latest application filed is for "learnable cost volume for determining pixel correspondence".

Company Profile
19.9.15
  • Sun; Deqing - Cambridge MA
  • Sun; Deqing - Providence RI
*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
Learnable Cost Volume for Determining Pixel Correspondence
App 20220189051 - Xiao; Taihong ;   et al.
2022-06-16
Training a neural network to predict superpixels using segmentation-aware affinity loss
Grant 11,256,961 - Tu , et al. February 22, 2
2022-02-22
Using Residual Video Data Resulting From A Compression Of Original Video Data To Improve A Decompression Of The Original Video Data
App 20210314629 - Tsai; Yi-Hsuan ;   et al.
2021-10-07
Using residual video data resulting from a compression of original video data to improve a decompression of the original video data
Grant 11,082,720 - Tsai , et al. August 3, 2
2021-08-03
Learning Rigidity Of Dynamic Scenes For Three-dimensional Scene Flow Estimation
App 20210150736 - Lv; Zhaoyang ;   et al.
2021-05-20
Scene flow estimation using shared features
Grant 10,986,325 - Sun , et al. April 20, 2
2021-04-20
Video Interpolation Using One Or More Neural Networks
App 20210067735 - Reda; Fitsum ;   et al.
2021-03-04
Learning rigidity of dynamic scenes for three-dimensional scene flow estimation
Grant 10,929,987 - Lv , et al. February 23, 2
2021-02-23
Training A Neural Network To Predict Superpixels Using Segmentation-aware Affinity Loss
App 20200334502 - Tu; Wei-Chih ;   et al.
2020-10-22
Superpixel sampling networks
Grant 10,789,678 - Jampani , et al. September 29, 2
2020-09-29
View Synthesis Using Neural Networks
App 20200294194 - Sun; Deqing ;   et al.
2020-09-17
Multi-frame video interpolation using optical flow
Grant 10,776,688 - Jiang , et al. September 15, 2
2020-09-15
Training a neural network to predict superpixels using segmentation-aware affinity loss
Grant 10,748,036 - Tu , et al. A
2020-08-18
Scene Flow Estimation Using Shared Features
App 20200084427 - Sun; Deqing ;   et al.
2020-03-12
System And Method For Optical Flow Estimation
App 20190362502 - Sun; Deqing ;   et al.
2019-11-28
Superpixel Sampling Networks
App 20190340728 - Jampani; Varun ;   et al.
2019-11-07
System and method for optical flow estimation
Grant 10,467,763 - Sun , et al. No
2019-11-05
System and method for optical flow estimation
Grant 10,424,069 - Sun , et al. Sept
2019-09-24
Using Residual Video Data Resulting From A Compression Of Original Video Data To Improve A Decompression Of The Original Video D
App 20190158884 - Tsai; Yi-Hsuan ;   et al.
2019-05-23
Training A Neural Network To Predict Superpixels Using Segmentation-aware Affinity Loss
App 20190156154 - Tu; Wei-Chih ;   et al.
2019-05-23
Bilateral Convolution Layer Network For Processing Point Clouds
App 20190147302 - Jampani; Varun ;   et al.
2019-05-16
Multi-frame Video Interpolation Using Optical Flow
App 20190138889 - Jiang; Huaizu ;   et al.
2019-05-09
Learning Rigidity Of Dynamic Scenes For Three-dimensional Scene Flow Estimation
App 20190057509 - Lv; Zhaoyang ;   et al.
2019-02-21
System And Method For Optical Flow Estimation
App 20180293737 - Sun; Deqing ;   et al.
2018-10-11

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