Compressive Sensing Using The Modified Entropy Functional

DIGITAL SIGNAL PROCESSING(2014)

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摘要
In most compressive sensing problems, l(1) norm is used during the signal reconstruction process. In this article, a modified version of the entropy functional is proposed to approximate the l(1) norm. The proposed modified version of the entropy functional is continuous, differentiable and convex. Therefore, it is possible to construct globally convergent iterative algorithms using Bregman's row-action method for compressive sensing applications. Simulation examples with both 1D signals and images are presented. (C) 2013 Elsevier Inc. All rights reserved.
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关键词
Compressive sensing,Modified entropy functional,Projection onto convex sets,Iterative row-action methods,Bregman-projection,Proximal splitting
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