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name:-0.017951011657715
name:-0.015594005584717
name:-0.01584005355835
Rippel; Oren Patent Filings

Rippel; Oren

Patent Applications and Registrations

Patent applications and USPTO patent grants for Rippel; Oren.The latest application filed is for "parameter map for machine-learned video compression".

Company Profile
14.13.17
  • Rippel; Oren - Mountain View CA
  • Rippel; Oren - Vancouver CA
  • Rippel; Oren - Brookline MA
*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
Deep learning based adaptive arithmetic coding and codelength regularization
Grant 11,423,310 - Rippel , et al. August 23, 2
2022-08-23
Parameter Map For Machine-learned Video Compression
App 20220224914 - Anderson; Alexander G. ;   et al.
2022-07-14
Machine-learned In-loop Predictor For Video Compression
App 20220224934 - Rippel; Oren ;   et al.
2022-07-14
Using generative adversarial networks in compression
Grant 11,315,011 - Rippel , et al. April 26, 2
2022-04-26
Data compression for machine learning tasks
Grant 11,256,984 - Bourdev , et al. February 22, 2
2022-02-22
Deep Learning Based Adaptive Arithmetic Coding And Codelength Regularization
App 20210295164 - Rippel; Oren ;   et al.
2021-09-23
Deep learning based adaptive arithmetic coding and codelength regularization
Grant 11,100,394 - Rippel , et al. August 24, 2
2021-08-24
Deep learning based adaptive arithmetic coding and codelength regularization
Grant 11,062,211 - Rippel , et al. July 13, 2
2021-07-13
Enhanced coding efficiency with progressive representation
Grant 10,977,553 - Rippel , et al. April 13, 2
2021-04-13
Machine-learning based video compression
Grant 10,860,929 - Rippel , et al. December 8, 2
2020-12-08
Deep Learning Based Adaptive Arithmetic Coding And Codelength Regularization
App 20200334534 - Rippel; Oren ;   et al.
2020-10-22
Deep Learning Based Adaptive Arithmetic Coding And Codelength Regularization
App 20200334535 - Rippel; Oren ;   et al.
2020-10-22
Machine-Learning Based Video Compression
App 20200272903 - Rippel; Oren ;   et al.
2020-08-27
Deep learning based adaptive arithmetic coding and codelength regularization
Grant 10,748,062 - Rippel , et al. A
2020-08-18
Machine-learning based video compression
Grant 10,685,282 - Rippel , et al.
2020-06-16
Adaptive quantization
Grant 10,594,338 - Lew , et al.
2020-03-17
Autoencoding image residuals for improving upsampled images
Grant 10,565,499 - Bourdev , et al. Feb
2020-02-18
Machine-Learning Based Video Compression
App 20200036995 - Rippel; Oren ;   et al.
2020-01-30
Dynamic Control For A Machine Learning Autoencoder
App 20200034709 - Rippel; Oren ;   et al.
2020-01-30
Adaptive compression based on content
Grant 10,402,722 - Rippel , et al. Sep
2019-09-03
Enhanced Coding Efficiency With Progressive Representation
App 20190266490 - Rippel; Oren ;   et al.
2019-08-29
Enhanced coding efficiency with progressive representation
Grant 10,332,001 - Rippel , et al.
2019-06-25
Autoencoding Image Residuals For Improving Upsampled Images
App 20180174275 - Bourdev; Lubomir ;   et al.
2018-06-21
Enhanced Coding Efficiency With Progressive Representation
App 20180173994 - Rippel; Oren ;   et al.
2018-06-21
Data Compression For Machine Learning Tasks
App 20180174047 - Bourdev; Lubomir ;   et al.
2018-06-21
Adaptive Compression Based On Content
App 20180176578 - Rippel; Oren ;   et al.
2018-06-21
Deep Learning Based On Image Encoding And Decoding
App 20180176570 - Rippel; Oren ;   et al.
2018-06-21
Deep Learning Based Adaptive Arithmetic Coding And Codelength Regularization
App 20180176576 - Rippel; Oren ;   et al.
2018-06-21
Using Generative Adversarial Networks In Compression
App 20180174052 - Rippel; Oren ;   et al.
2018-06-21
Identifying Content Items Using a Deep-Learning Model
App 20170132510 - Paluri; Balmanohar ;   et al.
2017-05-11

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