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Statistical Mechanical Analysis of Compressed Sensing Utilizing Correlated Compression Matrix

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 نشر من قبل Koujin Takeda
 تاريخ النشر 2010
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We investigate a reconstruction limit of compressed sensing for a reconstruction scheme based on the L1-norm minimization utilizing a correlated compression matrix with a statistical mechanics method. We focus on the compression matrix modeled as the Kronecker-type random matrix studied in research on multi-input multi-output wireless communication systems. We found that strong one-dimensional correlations between expansion bases of original information slightly degrade reconstruction performance.



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