Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
7155393 | Communications in Nonlinear Science and Numerical Simulation | 2015 | 17 Pages |
Abstract
This paper proposes a completely perturbed mixed â2/âp minimization to deal with a model of completely perturbed block-sparse compressed sensing. Based on the block restricted isometry property (BRIP), the paper extends the study to a complete perturbation model which considers not only noise but also perturbation, establishes a sufficient condition for efficiently recovering the block-sparse signal under the complete perturbation case, and offers eventually a superior approximation precision. The precision, in this paper, can be characterized in terms of the total noise and the best K-term approximation. The adopted mixed â2/âp minimization also gains better robustness and stability than ever that on recovering the block-sparse signal with the presence of total noise. Especially, the analysis of this study shows the condition is the best sufficient condition δ2Kâ<â1 [20] when p tends to zero and aâ>â1 for the complete perturbation and block-sparse signal. The numerical experiments carried out confirm excellently the assessed performance.
Keywords
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Mechanical Engineering
Authors
Jianjun Wang, Jing Zhang, Wendong Wang, Chanyun Yang,