Recovery of correlated row sparse signals using smoothed L_0-norm algorithm  

Recovery of correlated row sparse signals using smoothed L_0-norm algorithm

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作  者:LIU Yu MA Cong ZHU Xu-qi ZHANG Lin 

机构地区:[1]School of Information and Communication Engineering,Beijing University of Posts and Telecommunications

出  处:《The Journal of China Universities of Posts and Telecommunications》2012年第6期123-128,共6页中国邮电高校学报(英文版)

基  金:supported by the National Natural Science Foundation of China(61201149);the 111 Project(B08004);the Fundamental Research Funds for the Central Universities

摘  要:Distributed compressed sensing (DCS) is an emerging research field which exploits both intra-signal and inter-signal correlations. This paper focuses on the recovery of the sparse signals which can be modeled as joint sparsity model (JSM) 2 with different nonzero coefficients in the same location set. Smoothed L0 norm algorithm is utilized to convert a non-convex and intractable mixed L2,0 norm optimization problem into a solvable one. Compared with a series of single-measurement-vector problems, the proposed approach can obtain a better reconstruction performance by exploiting the inter-signal correlations. Simulation results show that our algorithm outperforms L1,1 norm optimization for both noiseless and noisy cases and is more robust against thermal noise compared with LI,2 recovery. Besides, with the help of the core concept of modified compressed sensing (CS) that utilizes partial known support as side information, we also extend this algorithm to decode correlated row sparse signals generated following JSM 1.Distributed compressed sensing (DCS) is an emerging research field which exploits both intra-signal and inter-signal correlations. This paper focuses on the recovery of the sparse signals which can be modeled as joint sparsity model (JSM) 2 with different nonzero coefficients in the same location set. Smoothed L0 norm algorithm is utilized to convert a non-convex and intractable mixed L2,0 norm optimization problem into a solvable one. Compared with a series of single-measurement-vector problems, the proposed approach can obtain a better reconstruction performance by exploiting the inter-signal correlations. Simulation results show that our algorithm outperforms L1,1 norm optimization for both noiseless and noisy cases and is more robust against thermal noise compared with LI,2 recovery. Besides, with the help of the core concept of modified compressed sensing (CS) that utilizes partial known support as side information, we also extend this algorithm to decode correlated row sparse signals generated following JSM 1.

关 键 词:DCS JSM row sparse signal smoothed L0-norm partially known support 

分 类 号:TN911.7[电子电信—通信与信息系统]

 

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