Compressed sensing of correlated signals using belief propagation

Compressed Sensing (CS) has developed rapidly as an innovation in signal processing domain. Considering the situation that there are multiple sparse signals with redundancy, the correlation between them need to be properly utilized for further compression. To this end, a CS scheme based on Belief Pr...

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Bibliographic Details
Published in2011 18th International Conference on Telecommunications pp. 146 - 150
Main Authors Xuqi Zhu, Yu Liu, Bin Li, Xun Wang, Wenbo Zhang, Lin Zhang
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.05.2011
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ISBN9781457700255
1457700255
DOI10.1109/CTS.2011.5898907

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Summary:Compressed Sensing (CS) has developed rapidly as an innovation in signal processing domain. Considering the situation that there are multiple sparse signals with redundancy, the correlation between them need to be properly utilized for further compression. To this end, a CS scheme based on Belief Propagation (BP) algorithm is proposed to compress correlated sparse (compressible) signals in this paper. The BP algorithm is a kind of solution of Bayesian CS by considering CS problem as an analogy of channel coding. Inspired by this, we modify the original BP algorithm by the side information available only at the decoder to obtain better recovery performance with the same sensing rate. The simulation results show that the proposed scheme is superior to the separate BP scheme and the joint L1 scheme for the correlated sparse signals.
ISBN:9781457700255
1457700255
DOI:10.1109/CTS.2011.5898907