QUALCOMM Incorporated
Video compression using deep generative models

Last updated:

Abstract:

Certain aspects of the present disclosure are directed to methods and apparatus for compressing video content using deep generative models. One example method generally includes receiving video content for compression. The received video content is generally encoded into a latent code space through an auto-encoder, which may be implemented by a first artificial neural network. A compressed version of the encoded video content is generally generated through a trained probabilistic model, which may be implemented by a second artificial neural network, and output for transmission.

Status:
Grant
Type:

Utility

Filling date:

21 Mar 2019

Issue date:

12 Jul 2022