A Randomized Algorithm for Sparse Recovery

Hui-Jong Yu, M. Cheng, Ying-Ling Lu
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Abstract

This paper considers the problem of sparse signal recovery where there is a structure in the signal. Efficient recovery schemes can be designed to leverage the signal structure. Following the model-based compressive sensing framework, we have developed an efficient algorithm for both head and tail approximations for the model-projection problem. The problem is modeled as a constrained graph optimization problem, which is an NP-hard optimization problem. Solving the NP-hard optimization program is then transformed to solving a linear program and finding a randomized algorithm to find an integral solution. The integral solution is optimal-in-expectation. The algorithm is proved to have the same geometric convergence as previous work. The algorithm has been tested on various compressing matrices. The proposed algorithm demonstrated improved recoverability and used fewer number of iterations to recover the signal.
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稀疏恢复的随机化算法
本文研究了信号中存在结构的稀疏信号恢复问题。可以设计有效的恢复方案来利用信号结构。根据基于模型的压缩感知框架,我们开发了一种有效的算法,用于模型投影问题的头部和尾部近似。该问题被建模为一个约束图优化问题,是一个NP-hard优化问题。然后将求解NP-hard优化方案转化为求解线性方案和寻找随机算法来求积分解。积分解是期望最优解。证明了该算法具有与前人相同的几何收敛性。该算法已在各种压缩矩阵上进行了测试。该算法具有较好的可恢复性,并且使用较少的迭代次数恢复信号。
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