A new backtracking-based sparsity adaptive algorithm for distributed compressed sensing

被引:0
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作者
Yong Xu
Yu-jie Zhang
Jing Xing
Hong-wei Li
机构
[1] China University of Geosciences,School of Mathematics and Physics
[2] Hubei University of Economics,Institute of Statistics
[3] China University of Geosciences,Hubei Subsurface Multi
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关键词
distributed compressed sensing; sparsiy; backtracking; soft thresholding;
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摘要
A new iterative greedy algorithm based on the backtracking technique was proposed for distributed compressed sensing (DCS) problem. The algorithm applies two mechanisms for precise recovery soft thresholding and cutting. It can reconstruct several compressed signals simultaneously even without any prior information of the sparsity, which makes it a potential candidate for many practical applications, but the numbers of non-zero (significant) coefficients of signals are not available. Numerical experiments are conducted to demonstrate the validity and high performance of the proposed algorithm, as compared to other existing strong DCS algorithms.
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页码:3946 / 3956
页数:10
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