Distributed Compressed Sensing of Jointly Sparse Signals

M. F. Duarte, S. Sarvotham, D. Baron, M. Wakin, Richard Baraniuk
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引用次数: 577

Abstract

Compressed sensing is an emerging field based on the revelation that a small collection of linear projections of a sparse signal contains enough information for recon- struction. In this paper we expand our theory for distributed compressed sensing (DCS) that enables new distributed cod- ing algorithms for multi-signal ensembles that exploit both intra- and inter-signal correlation structures. The DCS the- ory rests on a new concept that we term the joint sparsity of a signal ensemble. We present a second new model for jointly sparse signals that allows for joint recovery of multi- ple signals from incoherent projections through simultane- ous greedy pursuit algorithms. We also characterize theo- retically and empirically the number of measurements per sensor required for accurate reconstruction.
联合稀疏信号的分布式压缩感知
压缩感知是一个新兴的领域,它揭示了稀疏信号的一小部分线性投影包含了足够的重构信息。在本文中,我们扩展了我们的分布式压缩感知(DCS)理论,使新的分布式编码算法能够用于利用信号内和信号间相关结构的多信号集成。DCS理论建立在一个新的概念上,我们称之为信号集合的联合稀疏性。我们提出了联合稀疏信号的第二个新模型,该模型允许通过同时贪婪追踪算法从非相干投影中联合恢复多个信号。我们还从理论上和经验上描述了精确重建所需的每个传感器的测量次数。
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