多侧信息分布式视频编码的增强型LDPC图

J. Ascenso, Catarina Brites, F. Pereira
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引用次数: 3

摘要

信道容量码(如turbo码和低密度奇偶校验码)的进步在新兴的分布式源编码范式中发挥了重要作用。LDPC码可以很容易地适应新的源编码策略,因为它们的自然表示为二部图和使用准最优解码算法,如信念传播。本文研究了分布式视频编码中的一个相关场景:当解码器有多个侧信息(SI)假设,每个侧信息假设根据不同的相关噪声信道与源相关时,有损源编码。因此,本文提出利用多个LDPC综合征解码器交换信息的高效联合解码技术,利用多个SI假设来提高编码效率。在解码器端,通过运动补偿帧插值创建多个SI假设,并在基于LDPC的新颖迭代Slepian-Wolf解码算法中融合在一起。通过创建多个SI假设和所提出的解码算法,可以在相似的解码质量下获得高达8.0%的比特率节省。
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Augmented LDPC graph for distributed video coding with multiple side information
The advances made in channel-capacity codes, such as turbo codes and low-density parity-check (LDPC) codes, have played a major role in the emerging distributed source coding paradigm. LDPC codes can be easily adapted to new source coding strategies due to their natural representation as bipartite graphs and the use of quasi-optimal decoding algorithms, such as belief propagation. This paper tackles a relevant scenario in distributed video coding: lossy source coding when multiple side information (SI) hypotheses are available at the decoder, each one correlated with the source according to different correlation noise channels. Thus, it is proposed to exploit multiple SI hypotheses through an efficient joint decoding technique with multiple LDPC syndrome decoders that exchange information to obtain coding efficiency improvements. At the decoder side, the multiple SI hypotheses are created with motion compensated frame interpolation and fused together in a novel iterative LDPC based Slepian-Wolf decoding algorithm. With the creation of multiple SI hypotheses and the proposed decoding algorithm, bitrate savings up to 8.0% are obtained for similar decoded quality.
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