International audienceThis paper introduces a novel framework for end-to-end learned video coding. Image compression is generalized through conditional coding to exploit information from reference frames, allowing to process intra and inter frames with the same coder. The system is trained through the minimization of a rate-distortion cost, with no pre-training or proxy loss. Its flexibility is assessed under three coding configurations (All Intra, Low-delay P and Random Access), where it is shown to achieve performance competitive with the state-of-the-art video codec HEVC
This paper introduces AIVC, an end-to-end neural video codec. It is based on two conditional autoenc...
International audienceLight fields have additional storage requirements compared to conventional ima...
High Efficiency Video Coding (HEVC) is currently being prepared as the newest video coding standard ...
International audienceThis paper introduces a novel framework for end-to-end learned video coding. I...
International audienceThis paper introduces a practical learned video codec. Conditional coding and ...
The increase of video content and video resolution drive more exploration of video compression techn...
International audienceIn 2021, a new track has been initiated in the Challenge for Learned Image Com...
Although learned approaches to video compression have been proposed with promising results, hand-eng...
This project investigates into two video coding paradigms: the start-of-the-art standard and an emer...
The rise of variational autoencoders for image and video compression has opened the door to many ela...
This book discusses in detail the basic algorithms of video compression that are widely used in mode...
In this study, we investigate a variable-resolution approach to video compression based on Condition...
Video has become the predominant medium for information dissemination, driving the need for efficien...
Over the past few years, learning-based video compression has become an active research area. Howeve...
In this study, we investigate a variable-resolution approach to video compression based on Condition...
This paper introduces AIVC, an end-to-end neural video codec. It is based on two conditional autoenc...
International audienceLight fields have additional storage requirements compared to conventional ima...
High Efficiency Video Coding (HEVC) is currently being prepared as the newest video coding standard ...
International audienceThis paper introduces a novel framework for end-to-end learned video coding. I...
International audienceThis paper introduces a practical learned video codec. Conditional coding and ...
The increase of video content and video resolution drive more exploration of video compression techn...
International audienceIn 2021, a new track has been initiated in the Challenge for Learned Image Com...
Although learned approaches to video compression have been proposed with promising results, hand-eng...
This project investigates into two video coding paradigms: the start-of-the-art standard and an emer...
The rise of variational autoencoders for image and video compression has opened the door to many ela...
This book discusses in detail the basic algorithms of video compression that are widely used in mode...
In this study, we investigate a variable-resolution approach to video compression based on Condition...
Video has become the predominant medium for information dissemination, driving the need for efficien...
Over the past few years, learning-based video compression has become an active research area. Howeve...
In this study, we investigate a variable-resolution approach to video compression based on Condition...
This paper introduces AIVC, an end-to-end neural video codec. It is based on two conditional autoenc...
International audienceLight fields have additional storage requirements compared to conventional ima...
High Efficiency Video Coding (HEVC) is currently being prepared as the newest video coding standard ...