SegBOMP:一种有效的块非稀疏信号恢复算法

Xushan Chen, Xiongwei Zhang, Jibin Yang, Meng Sun, Li Zeng
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引用次数: 0

摘要

块稀疏信号恢复方法在聚类时考虑了非零系数的块结构,引起了人们的广泛关注。与传统的压缩感知方法相比,该方法通过显式地利用块稀疏性,以较少的测量量获得更好的恢复性能。本文提出了一种分段版的块正交匹配追踪算法,该算法将任意向量划分为若干稀疏子向量。通过这样做,由于每个分割向量的测量维数减少,原始方法可以显着加速。实验结果表明,该方法在较低的复杂度下获得了与传统方法相同甚至更好的重构性能,传统方法采用标准的块稀疏方式处理信号。此外,在并非所有段都包含非零块的特定情况下,性能改进可以解释为噪声环境下“有效信噪比”的增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SegBOMP: An efficient algorithm for block non-sparse signal recovery
Block sparse signal recovery methods have attracted great interests which take the block structure of the nonzero coefficients into account when clustering. Compared with traditional compressive sensing methods, it can obtain better recovery performance with fewer measurements by utilizing the block-sparsity explicitly. In this paper we propose a segmented-version of the block orthogonal matching pursuit algorithm in which it divides any vector into several sparse sub-vectors. By doing this, the original method can be significantly accelerated due to the dimension reduction of measurements for each segmented vector. Experimental results showed that with low complexity the proposed method yielded identical or even better reconstruction performance than the conventional methods which treated the signal in the standard block-sparsity fashion. Furthermore, in the specific case, where not all segments contain nonzero blocks, the performance improvement can be interpreted as a gain in “effective SNR” in noisy environment.
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