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FIXED-POINT CONTINUATION APPLIED TO COMPRESSED SENSING:IMPLEMENTATION AND NUMERICAL EXPERIMENTS 被引量:7

FIXED-POINT CONTINUATION APPLIED TO COMPRESSED SENSING:IMPLEMENTATION AND NUMERICAL EXPERIMENTS
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摘要 Fixed-point continuation (FPC) is an approach, based on operator-splitting and continuation, for solving minimization problems with l1-regularization:min ||x||1+uf(x).We investigate the application of this algorithm to compressed sensing signal recovery, in which f(x) = 1/2||Ax-b||2M,A∈m×n and m≤n. In particular, we extend the original algorithm to obtain better practical results, derive appropriate choices for M and u under a given measurement model, and present numerical results for a variety of compressed sensing problems. The numerical results show that the performance of our algorithm compares favorably with that of several recently proposed algorithms. Fixed-point continuation (FPC) is an approach, based on operator-splitting and continuation, for solving minimization problems with l1-regularization:min ||x||1+uf(x).We investigate the application of this algorithm to compressed sensing signal recovery, in which f(x) = 1/2||Ax-b||2M,A∈m×n and m≤n. In particular, we extend the original algorithm to obtain better practical results, derive appropriate choices for M and u under a given measurement model, and present numerical results for a variety of compressed sensing problems. The numerical results show that the performance of our algorithm compares favorably with that of several recently proposed algorithms.
作者 Elaine T.Hale
出处 《Journal of Computational Mathematics》 SCIE CSCD 2010年第2期170-194,共25页 计算数学(英文)
基金 supported by an NSF VIGRE grant (DMS-0240058) supported in part by NSF CAREER Award DMS-0748839 and ONR Grant N00014-08-1-1101 supported in part by NSF Grant DMS-0811188 and ONR Grant N00014-08-1-1101
关键词 l1 regularization Fixed-point algorithm CONTINUATION Compressed sensing Numerical experiments. l1 regularization, Fixed-point algorithm, Continuation, Compressed sensing,Numerical experiments.
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