ON THE BLOCK-SPARSITY OF MULTIPLE-MEASUREMENT VECTORS.

Mohammad Shekaramiz, Todd K Moon, Jacob H Gunther
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引用次数: 7

Abstract

Based on the compressive sensing (CS) theory, it is possible to recover signals, which are either compressible or sparse under some suitable basis, via a small number of non-adaptive linear measurements. In this paper, we investigate recovering of block-sparse signals via multiple measurement vectors (MMVs) in the presence of noise. In this case, we consider one of the existing algorithms which provides a satisfactory estimate in terms of minimum mean-squared error but a non-sparse solution. Here, the algorithm is first modified to result in sparse solutions. Then, further modification is performed to account for the unknown block sparsity structure in the solution, as well. The performance of the proposed algorithm is demonstrated by experimental simulations and comparisons with some other algorithms for the sparse recovery problem.

多测量向量的块稀疏性。
基于压缩感知(CS)理论,可以通过少量的非自适应线性测量来恢复在适当基下可压缩或稀疏的信号。在本文中,我们研究了在存在噪声的情况下,用多测量向量(mmv)恢复块稀疏信号。在这种情况下,我们考虑一种现有的算法,该算法在最小均方误差方面提供了令人满意的估计,但是非稀疏解。在这里,首先修改算法以得到稀疏解。然后,进一步进行修改,以解释解决方案中未知的块稀疏性结构。通过实验仿真和与其他稀疏恢复算法的比较,验证了该算法的性能。
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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