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面向压缩感知的块稀疏度自适应迭代算法
引用本文:付宁,乔立岩,曹离然.面向压缩感知的块稀疏度自适应迭代算法[J].电子学报,2011,39(Z1).
作者姓名:付宁  乔立岩  曹离然
作者单位:哈尔滨工业大学自动化测试与控制系,哈尔滨工业大学3033信箱,黑龙江哈尔滨,150080
摘    要:块稀疏信号是一种典型的稀疏信号,目前在块稀疏信号的压缩感知问题中,大多数信号重构算法要求信号的块稀疏度已知且算法复杂度高.针对实际应用中信号块稀疏度未知的情况,提出了一种块稀疏度自适应迭代算法,用于信号重构.首先,该算法初始化一个块稀疏度,其值按设定步长进行增加.对每一个块稀疏度的迭代,算法都会找到信号支撑块的一个子集,并修正更新上一次找到的信号支撵块,最后找到信号的整个支撑块,从而重构出源信号.该算法不需要信号的块稀疏度作为先验知识,而且算法复杂度低.仿真实验表明,该算法的重构概率较已有大多数块稀疏信号重构算法的重构概率高,在块稀疏信号的压缩感知问题中具有实际意义.

关 键 词:压缩感知  块稀疏  自适应  重构概率

Block Sparsity Adaptive Iteration Algorithm for Compressed Sensing
FU Ning,QIAO Li-yan,CAO Li-ran.Block Sparsity Adaptive Iteration Algorithm for Compressed Sensing[J].Acta Electronica Sinica,2011,39(Z1).
Authors:FU Ning  QIAO Li-yan  CAO Li-ran
Affiliation:FU Ning,QIAO Li-yan,CAO Li-ran(Department of Automatic Test and Control,Harbin Institute of Technology,P.O.Box 3033,Harbin,Heilongjiang,150080 China)
Abstract:Block-sparse signal is a typical sparse signal.Among the block-sparse signal problems for compressed sensing,the most existing recovery algorithms require block sparsity as prior knowledge and have a high complexity.In this paper,a block sparsity adaptive iteration algorithm for compressed sensing has been proposed when the block sparsity is unknown.Firstly,the algorithm initializes a block sparsity which will increase by steps.Subsequently,for each block sparsity,a sub-set of the signal support set can be ...
Keywords:compressed sensing  block-sparse  adaptive  recovery probability  
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