Tree Structure Based Analyses on Compressive Sensing for Binary Sparse Sources

Jingjing Fu, Zhouchen Lin, B. Zeng, Feng Wu
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引用次数: 5

Abstract

This paper proposes a new approach to theoretically analyze compressive sensing directly from the randomly sampling matrix phi instead of a certain recovery algorithm. For simplifying our analyses, we assume both input source and random sampling matrix as binary. Taking anyone of source bits, we can constitute a tree by parsing the randomly sampling matrix, where the selected source bit as the root. In the rest of tree, measurement nodes and source nodes are connected alternatively according to phi. With the tree, we can formulate the probability if one source bit can be recovered from randomly sampling measurements. The further analyses upon the tree structure reveal the relation between the un-recovery probability with random measurements and the un-recovery probability with source sparsity. The conditions of successful recovery are proven on the parameter S-M plane. Then the results of the tree structure based analyses are compared with the actual recovery process.
基于树结构的二值稀疏源压缩感知分析
本文提出了一种直接从随机抽样矩阵phi中对压缩感知进行理论分析的新方法,取代了一定的恢复算法。为了简化我们的分析,我们假设输入源和随机抽样矩阵都是二进制的。取任意一个源比特,我们可以通过解析随机采样矩阵构成一棵树,其中选择的源比特为根。在树的其余部分,测量节点和源节点根据phi交替连接。有了树,我们可以计算出从随机采样测量中恢复一个源比特的概率。进一步对树结构进行分析,揭示了随机测量下的不恢复概率与源稀疏度下的不恢复概率之间的关系。在参数S-M平面上证明了成功回收的条件。然后将基于树形结构的分析结果与实际采油过程进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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