实用的源网络解码

G. Maierbacher, J. Barros, M. Médard
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引用次数: 21

摘要

当相关源要通过网络传输到多个接收器时,通常需要联合源-网络编码来实现信息理论上的最佳传输。而在编码器方面,基于线性码的简单随机化方案就足够了,解码器需要执行联合源网络解码,这是计算昂贵的。专注于最大后验解码器(或者,在连续源的情况下,条件平均估计器),我们展示了如何利用有关网络拓扑的(结构)知识以及源相关性,从而产生有效的解码器实现(在某些情况下,甚至对节点数量具有线性依赖)。特别是,我们展示了如何通过一个因子图来统计地表示整个系统(包括数据包),在这个因子图上可以运行和积算法。在三源两汇的情况下,以工作解码器的形式提供概念验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practical source-network decoding
When correlated sources are to be communicated over a network to more than one sink, joint source-network coding is, in general, required for information theoretically optimal transmission. Whereas on the encoder side simple randomized schemes based on linear codes suffice, the decoder is required to perform joint source-network decoding which is computationally expensive. Focusing on maximum a-posteriori decoders (or, in the case of continuous sources, conditional mean estimators), we show how to exploit (structural) knowledge about the network topology as well as the source correlations giving rise to an efficient decoder implementation (in some cases even with linear dependency on the number of nodes). In particular, we show how to statistically represent the overall system (including the packets) by a factor-graph on which the sum-product algorithm can be run. A proof-of-concept is provided in the form of a working decoder for the case of three sources and two sinks.
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