使用综合征的分布式源编码(DISCUS):设计和构建

S. Pradhan, K. Ramchandran
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引用次数: 1072

摘要

我们解决了分布式源编码的问题,即压缩不位于同一位置和/或不能相互通信的相关源,以最小化它们的联合描述成本。在这项工作中,我们解决了压缩与仅在解码器上可用的另一个源相关的源的相关问题。与先前的信息论方法相比,我们引入了一种新的结构和实用框架来解决基于明智地将信道编码原则纳入该源编码问题的问题。我们将我们的方法称为使用综合征的分布式源代码编码(DISCUS)。在本文中,我们将重点放在框架的网格结构结构上,以说明其实用性。仿真结果证实了DISCUS的强大功能,为分布式源编码问题开辟了一个新的、令人兴奋的建设性领域。对于相互具有“相关信噪比”(correlation-SNR)在12 ~ 20 dB范围内的相关i.i.d高斯源的噪声版本的分布式编码,DISCUS方法使用源的“朴素”独立编码,比香农边界获得7 ~ 15 dB的信噪比增益。
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Distributed source coding using syndromes (DISCUS): design and construction
We address the problem of distributed source coding, i.e. compression of correlated sources that are not co-located and/or cannot communicate with each other to minimize their joint description cost. In this work we tackle the related problem of compressing a source that is correlated with another source which is available only at the decoder. In contrast to prior information-theoretic approaches, we introduce a new construction and practical framework for tackling the problem based on the judicious incorporation of channel coding principles into this source coding problem. We dub our approach as distributed source coding using syndromes (DISCUS). We focus in this paper on trellis-structured constructions of the framework to illustrate its utility. Simulation results confirm the power of DISCUS, opening up a new and exciting constructive playing-ground for the distributed source coding problem. For the distributed coding of correlated i.i.d. Gaussian sources that are noisy versions of each other with "correlation-SNR" in the range of 12 to 20 dB, the DISCUS method attains gains of 7-15 dB in SNR over the Shannon-bound using "naive" independent coding of the sources.
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