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STATISTICAL MODEL-AIDED DECODING OF CONTINUOUS-VALUED SYNDROMES FOR SOURCE CODING WITH SIDE INFORMATION

机译:统计模型 - 具有侧面信息的源编码的连续值综合征的解码

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The concept of syndrome plays undoubtedly a central role in distributed source coding. With known source-side correlation, systems based on continuous-valued syndromes have indeed been shown to perform close to the Wyner-Ziv bound, both in theory and in practice. This paper investigates the application of the continuous-valued syndrome-based approach to the real case, where little or no knowledge regarding the source-side correlation is available at the encoder. Since in this case the encoder cannot operate at his best, traditional maximum likelihood decoding do not perform well. Iterative, factor graph based, statistical model-aided decoding is instead able to provide more accurate results. The experiments show in particular that model-aided decoding leads to about one order of magnitude less reconstruction errors within a few decoder iterations, which amounts to an increase of the signal-to-noise ratio of up to 3 dB.
机译:综合征概念毫无疑问地在分布式源编码中发挥着核心作用。具有已知的来源侧相关性,基于连续值综合符的系统确实被证明可以在理论和实践中执行接近Wyner-Ziv界限。本文调查了持续值综合征的方法在实际情况下的应用,在编码器上有很少或没有关于源侧相关的知识。由于在这种情况下,编码器无法以他的最佳方式运行,因此传统的最大可能性解码不会表现良好。迭代,因子图基于,统计模型辅助解码替代能够提供更准确的结果。该实验尤其表明,模型 - 辅助解码导致几个数量级的重建误差在几个解码器迭代中达到大约一个数量级,这使得增加了最多3dB的信噪比的增加。

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