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Sandwiched Video Compression: Efficiently Extending the Reach of Standard Codecs with Neural Wrappers

20 March 2023
Berivan Isik
O. Guleryuz
Danhang Tang
Jonathan Taylor
P. Chou
ArXiv (abs)PDFHTML
Abstract

We propose sandwiched video compression -- a video compression system that wraps neural networks around a standard video codec. The sandwich framework consists of a neural pre- and post-processor with a standard video codec between them. The networks are trained jointly to optimize a rate-distortion loss function with the goal of significantly improving over the standard codec in various compression scenarios. End-to-end training in this setting requires a differentiable proxy for the standard video codec, which incorporates temporal processing with motion compensation, inter/intra mode decisions, and in-loop filtering. We propose differentiable approximations to key video codec components and demonstrate that the neural codes of the sandwich lead to significantly better rate-distortion performance compared to compressing the original frames of the input video in two important scenarios. When transporting high-resolution video via low-resolution HEVC, the sandwich system obtains 6.5 dB improvements over standard HEVC. More importantly, using the well-known perceptual similarity metric, LPIPS, we observe  30%~30 \% 30% improvements in rate at the same quality over HEVC. Last but not least we show that pre- and post-processors formed by very modestly-parameterized, light-weight networks can closely approximate these results.

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