2020
DOI: 10.48550/arxiv.2010.11179
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On Compressed Sensing Matrices Breaking the Square-Root Bottleneck

Abstract: Compressed sensing is a celebrated framework in signal processing and has many practical applications. One of challenging problems in compressed sensing is to construct deterministic matrices having restricted isometry property (RIP). So far, there are only a few publications providing deterministic RIP matrices beating the square-root bottleneck on the sparsity level. In this paper, we investigate RIP of certain matrices defined by higher power residues modulo primes. Moreover, we prove that the widely-believ… Show more

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