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增强型下采样分布式视频编码方案

Sub-Sampling Enhanced Distributed Video Coding

中文摘要英文摘要

近年来低复杂度的视频编码得到了广泛的关注,其中分布式视频编码(DVC)和压缩感知(CS)是两种有效的技术手段。一方面,DVC可以利用译码端数据的相关性将计算负担从编码端转移到译码端;另一方面,相比经典的Shannon-Nyquist采样定理获取数据方法,基于CS技术的架构能够利用更少的采样值恢复稀疏信号。本文中结合这两种技术的优势,我们引入一种增强型下采样DVC结构(SSED);结构中分两层传输,基本层利用视频标准对数据进行处理,增强层通过下采样的CS操作来提高基本层的信号质量。与传统的全采样结构相比,SSED结构通过下采样操作能够节省大量的采样和存储开销,不仅如此,SSED除了保证视频恢复质量之外还有很多的优势:传输速率的减小,对信道丢包的鲁棒性和较低的操作复杂度,本文将对以上优势进行仿真验证。

he video encoder with low-complexity has received a lot of attention in recent years, where distributed video coding (DVC) and compressive sensing (CS) are proposed as two enabling techniques. On one hand, by exploiting the correlation at the decoder rather than the encoder, DVC shifts the computation burden from the encoder to the decoder. On the other hand, the framework of CS has shown that sparse signals can be recovered from far less samples than that required by the classical Shannon-Nyquist Theorem. In this paper, to utilize advantages of both two techniques, we introduce a sub-sampling enhanced DVC (SSED) framework. Two layers are transmitted in SSED, where the base layer is generated by a standard video coder, while the sub-sampling enhancement layer is generated by CS operation to improve the signal quality in the base layer. When compared with the traditional fully-sampling framework, SSED saves huge sampling and storage costs due to the sub-sampling operation. Furthermore, without compromising the recovered video quality, SSED is shown to enjoy more favorable features, i.e., rate reduction, robustness to channel loss and lower operation complexity, which are verified by simulations. These results demonstrate that SSED is a promising framework in video streaming applications.

汪滢

通信无线通信电视

分布式视频编码压缩感知Slepian-Wolf 编码下采样Wyner-Ziv编码

ompressive sensingdistributed video codingSlepian-Wolf codingsub-samplingWyner-Ziv coding

汪滢.增强型下采样分布式视频编码方案[EB/OL].(2010-08-03)[2025-08-23].http://www.paper.edu.cn/releasepaper/content/201008-41.点此复制

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