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arxiv: 1312.3379 · v1 · pith:CI7J6KORnew · submitted 2013-12-12 · 💻 cs.IT · math.IT· math.OC

On RIC bounds of Compressed Sensing Matrices for Approximating Sparse Solutions Using ell_q Quasi Norms

classification 💻 cs.IT math.ITmath.OC
keywords sparsedeltasolutionminimizationsensingthoseapproximatingbounds
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This paper follows the recent discussion on the sparse solution recovery with quasi-norms $\ell_q,~q\in(0,1)$ when the sensing matrix possesses a Restricted Isometry Constant $\delta_{2k}$ (RIC). Our key tool is an improvement on a version of "the converse of a generalized Cauchy-Schwarz inequality" extended to the setting of quasi-norm. We show that, if $\delta_{2k}\le 1/2$, any minimizer of the $l_q$ minimization, at least for those $q\in(0,0.9181]$, is the sparse solution of the corresponding underdetermined linear system. Moreover, if $\delta_{2k}\le0.4931$, the sparse solution can be recovered by any $l_q, q\in(0,1)$ minimization. The values $0.9181$ and $0.4931$ improves those reported previously in the literature.

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