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Open AccessJournal ArticleDOI

Deep Learning-Based Video Coding: A Review and A Case Study

TLDR
Deep Learning Video Coding (DLVC) as discussed by the authors is a deep learning-based video coding framework, which is based on convolutional neural network (CNN) and block adaptive resolution coding (BARC).
Abstract
The past decade has witnessed great success of deep learning technology in many disciplines, especially in computer vision and image processing. However, deep learning-based video coding remains in its infancy. This paper reviews the representative works about using deep learning for image/video coding, which has been an actively developing research area since the year of 2015. We divide the related works into two categories: new coding schemes that are built primarily upon deep networks (deep schemes), and deep network-based coding tools (deep tools) that shall be used within traditional coding schemes or together with traditional coding tools. For deep schemes, pixel probability modeling and auto-encoder are the two approaches, that can be viewed as predictive coding scheme and transform coding scheme, respectively. For deep tools, there have been several proposed techniques using deep learning to perform intra-picture prediction, inter-picture prediction, cross-channel prediction, probability distribution prediction, transform, post- or in-loop filtering, down- and up-sampling, as well as encoding optimizations. In the hope of advocating the research of deep learning-based video coding, we present a case study of our developed prototype video codec, namely Deep Learning Video Coding (DLVC). DLVC features two deep tools that are both based on convolutional neural network (CNN), namely CNN-based in-loop filter (CNN-ILF) and CNN-based block adaptive resolution coding (CNN-BARC). Both tools help improve the compression efficiency by a significant margin. With the two deep tools as well as other non-deep coding tools, DLVC is able to achieve on average 39.6\% and 33.0\% bits saving than HEVC, under random-access and low-delay configurations, respectively. The source code of DLVC has been released for future researches.

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Citations
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Journal ArticleDOI

A bird's-eye view of deep learning in bioimage analysis.

TL;DR: A bird’s-eye view at the past, present, and future developments of deep learning, starting from science at large, to biomedical imaging, and bioimage analysis in particular.
Journal ArticleDOI

BVI-DVC: A Training Database for Deep Video Compression

TL;DR: A new extensive and representative video database, BVI-DVC, is presented for training CNN-based video compression systems, with specific emphasis on machine learning tools that enhance conventional coding architectures, including spatial resolution and bit depth up-sampling, post-processing and in-loop filtering.
Journal ArticleDOI

Deep Architectures for Image Compression: A Critical Review

TL;DR: Deep learning architectures are now pervasive and filled almost all applications under image processing, computer vision, and biometrics as discussed by the authors, and they have solved a lot of conventional image processing problems with much improved performance and efficiency.
Journal ArticleDOI

ViSTRA2: Video coding using spatial resolution and effective bit depth adaptation

TL;DR: A new video compression framework (ViSTRA2) which exploits adaptation of spatial resolution and effective bit depth, down-sampled these parameters at the encoder based on perceptual criteria, and up-sampling at the decoder using a deep convolution neural network is presented.
Journal ArticleDOI

Video Compression with CNN-based Post Processing

TL;DR: A new convolutional neural network based postprocessing approach, which has been integrated with two state-of-the-art coding standards, versatile video coding (VVC) and AOMedia Video (AV1), which shows consistent coding gains on all tested sequences at various spatial resolutions.
References
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Proceedings Article

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A mathematical theory of communication

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TL;DR: Deep learning is making major advances in solving problems that have resisted the best attempts of the artificial intelligence community for many years, and will have many more successes in the near future because it requires very little engineering by hand and can easily take advantage of increases in the amount of available computation and data.
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Image quality assessment: from error visibility to structural similarity

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