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Iterative Reweighted src='/images/tex/19311.gif' alt='ell _{2}/ell _{1}'> Recovery Algorithms for Compressed Sensing of Block Sparse Signals

机译:迭代重新加权 src =“ / images / tex / 19311.gif” alt =“ ell _ {2} / ell _ {1}”> 用于压缩感知的恢复算法阻止稀疏信号

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摘要

In many applications of compressed sensing the signal is block sparse, i.e., the non-zero elements of the sparse signal are clustered in blocks. Here, we propose a family of iterative algorithms for the recovery of block sparse signals. These algorithms, referred to as iterative reweighted minimization algorithms , solve a weighted minimization in each iteration. Our simulation and analytical results on the recovery of both ideally and approximately block sparse signals show that the proposed iterative algorithms have significant advantages in terms of accuracy and the number of required measurements over non-iterative approaches as well as existing iterative methods. In particular, we demonstrate that, by increasing the block length, the performance of the proposed algorithms approaches the Wu-Verdú theoretical limit. The improvement in performance comes at a rather small cost in complexity increase. Further improvement in performance is achieved by using a priori information about the location of non-zero blocks, even if such a priori information is not perfectly reliable.
机译:在压缩感测的许多应用中,信号是块稀疏的,即,稀疏信号的非零元素被聚集在块中。在这里,我们提出了一种用于块稀疏信号恢复的迭代算法。这些算法称为迭代重新加权最小化算法,可在每次迭代中求解加权最小化。我们对理想和近似块稀疏信号的恢复的仿真和分析结果表明,与非迭代方法以及现有的迭代方法相比,所提出的迭代算法在准确性和所需测量次数方面具有显着优势。特别是,我们证明,通过增加块长度,所提出算法的性能接近Wu-Verdú理论极限。性能的提高以复杂度增加的代价很小。通过使用关于非零块的位置的先验信息,即使这样的先验信息不是十分可靠,也可以实现性能的进一步改善。

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