Block sparse signal reconstruction using block-sparse adaptive filtering algorithms

被引:0
|
作者
Ye C. [1 ]
Gui G. [2 ]
Matsushita S.-Y. [1 ]
Xu L. [1 ]
机构
[1] Department of Electronics and Information Systems, Akita Prefectural University, 84-4 Ebinokuchi, Tsuchiya Aza, Yurihonjo, Akita
[2] College of Telecommunication and Information Engineering, Nanjing University of Post and Telecommunications, No. 66, New Mofan Rd., Nanjing
来源
| 1600年 / Fuji Technology Press卷 / 20期
基金
日本学术振兴会;
关键词
Block-Structured Sparsity; Compressive Sensing; Least Mean Square; Sparse Constraint; Sparse Signal Reconstruction;
D O I
10.20965/jaciii.2016.p1119
中图分类号
TN911 [通信理论];
学科分类号
081002 ;
摘要
Sparse signal reconstruction (SSR) problems based on compressive sensing (CS) arise in a broad range of application fields. Among these are the so-called "blockstructured" or "block sparse" signals with nonzero atoms occurring in clusters that occur frequently in natural signals. To make block-structured sparsity use more explicit, many block-structure-based SSR algorithms, such as convex optimization and greedy pursuit, have been developed. Convex optimization algorithms usually pose a heavy computational burden, while greedy pursuit algorithms are overly sensitive to ambient interferences, so these two types of block-structure-based SSR algorithms may not be suited for solving large-scale problems in strong interference scenarios. Sparse adaptive filtering algorithms have recently been shown to solve large-scale CS problems effectively for conventional vector sparse signals. Encouraged by these facts, we propose two novel block-structure-based sparse adaptive filtering algorithms, i.e., the "block zero attracting least mean square" (BZA-LMS) algorithm and the "block l0-norm LMS" (BL0-LMS) algorithm, to exploit their potential performance gain. Experimental results presented demonstrate the validity and applicability of these proposed algorithms.
引用
收藏
页码:1119 / 1126
页数:7
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