Performance analysis of support recovery with joint sparsity constraints

Gongguo Tang, A. Nehorai
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引用次数: 2

Abstract

In this paper, we analyze the performance of estimating the common support for jointly sparse signals based on their projections onto lower-dimensional space. We formulate support recovery as a multiple-hypothesis testing problem and derive both upper and lower bounds on the probability of error for general measurement matrices, by using Cher-noff bound and Fano's inequality, respectively. When applied to Gaussian measurement ensembles, these bounds give necessary and sufficient conditions to guarantee a vanishing probability of error for majority realizations of the measurement matrix. Our results offer surprising insights into sparse signal reconstruction based on their projections. For example, as far as support recovery is concerned, the well-known bound in compressive sensing is generally not sufficient if the Gaussian ensemble is used. Our study provides an alternative performance measure, one that is natural and important in practice, for signal recovery in com-pressive sensing as well as other application areas taking advantage of signal sparsity.
联合稀疏约束下支架回收性能分析
本文分析了基于联合稀疏信号在低维空间上的投影估计共同支持度的性能。我们将支持恢复表述为一个多假设检验问题,并分别利用Cher-noff界和Fano不等式推导出一般测量矩阵误差概率的上界和下界。当应用于高斯测量集合时,这些边界给出了保证测量矩阵大多数实现误差消失概率的充分必要条件。我们的结果提供了令人惊讶的见解稀疏信号重建基于他们的预测。例如,就支持恢复而言,如果使用高斯系综,压缩感知中众所周知的界通常是不够的。我们的研究为压缩传感中的信号恢复以及利用信号稀疏性的其他应用领域提供了一种替代性能度量,这在实践中是自然而重要的。
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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