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Low-Complexity Approaches to Slepian–Wolf Near-Lossless Distributed Data Compression

机译:Slepian-Wolf近无损分布式数据压缩的低复杂度方法

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摘要

This paper discusses the Slepian–Wolf problem of distributed near-lossless compression of correlated sources. We introduce practical new tools for communicating at all rates in the achievable region. The technique employs a simple “source-splitting” strategy that does not require common sources of randomness at the encoders and decoders. This approach allows for pipelined encoding and decoding so that the system operates with the complexity of a single user encoder and decoder. Moreover, when this splitting approach is used in conjunction with iterative decoding methods, it produces a significant simplification of the decoding process. We demonstrate this approach for synthetically generated data. Finally, we consider the Slepian–Wolf problem when linear codes are used as syndrome-formers and consider a linear programming relaxation to maximum-likelihood (ML) sequence decoding. We note that the fractional vertices of the relaxed polytope compete with the optimal solution in a manner analogous to that observed when the “min-sum” iterative decoding algorithm is applied. This relaxation exhibits the ML-certificate property: if an integral solution is found, it is the ML solution. For symmetric binary joint distributions, we show that selecting easily constructable “expander”-style low-density parity check codes (LDPCs) as syndrome-formers admits a positive error exponent and therefore provably good performance.
机译:本文讨论了相关源的分布式近无损压缩的Slepian-Wolf问题。我们介绍了实用的新工具,可以在可实现的区域中以各种速率进行交流。该技术采用了一种简单的“源分离”策略,该策略不需要在编码器和解码器处使用通用的随机源。这种方法允许流水线式的编码和解码,以便系统以单个用户编码器和解码器的复杂性运行。此外,当这种分裂方法与迭代解码方法结合使用时,它会大大简化解码过程。我们将针对合成生成的数据演示这种方法。最后,当线性码用作校验子形成者时,我们考虑了Slepian-Wolf问题,并考虑了线性规划松弛对最大似然(ML)序列的解码。我们注意到,松弛多位点的分数顶点与最优解竞争,其方式类似于在应用“最小和”迭代解码算法时观察到的方式。这种放松表现出了ML-certificate属性:如果找到一个整体解,则它是ML解决方案。对于对称的二进制联合分布,我们表明选择容易构造的“扩展器”式低密度奇偶校验码(LDPCs)作为综合症形成者会接受正误差指数,因此可证明具有良好的性能。

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