基于学习视频压缩的运动编码方案研究

Peng Chen, C. Lin, Wen-Hsiao Peng
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引用次数: 0

摘要

本文研究了用于学习视频压缩的运动编码方案。大多数学习过的视频压缩系统明确地发出光流映射来表征视频帧之间的运动,以进行运动补偿。流映射通常与视频帧大小相同,代表了压缩比特流的相当一部分。本文研究了几种对流图进行非线性预测的方案,以实现高效的运动编码。这些包括在编码帧和源自流图预测器的运动补偿帧之间发出递增流图的信号。在形成流图预测器时,我们提出了一个学习运动外推模块和一个运动前向扭曲方案。它们进一步结合到两种新方法中,称为双翘曲和帧合成与运动前向翘曲,通过结合增量流和流图预测器来创建帧间预测器。通过大量的实验分析了这些变体的优缺点,并证明了它们相对于预测运动编码和运动内编码的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study of Motion Coding Schemes for Learned Video Compression
This paper presents a study of motion coding schemes for learned video compression. Most learned video compression systems explicitly signal optical flow maps to characterize motion between video frames for motion compensation. The flow maps, usually of the same size as the video frames, represent a considerable portion of the compressed bitstream. This work studies several schemes to make a non-linear prediction of the flow maps for efficient motion coding. These include signaling an incremental flow map between a coding frame and a motion-compensated frame derived from the flow map predictor. In forming the flow map predictor, we propose a learned motion extrapolation module and a motion forward warping scheme. They are further incorporated into two novel approaches, termed double warping and frame synthesis with motion forward warping, in creating an inter-frame predictor by combining the incremental flow and the flow map predictor. Extensive experiments are conducted to analyze the merits and faults of these variants, and demonstrate their superiority to predictive motion coding and intra motion coding.
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