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MMV Subspace Pursuit (M-SP) Algorithm for Joint Sparse Multiple Measurement Vectors Recovery

机译:联合稀疏多测量向量恢复的MMV子空间追踪(M-SP)算法

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In this paper, MMV Subspace Pursuit (M-SP) algorithm is proposed for solving joint sparse multiple measurement vectors (MMV) problem. The pre-selection and backtracking mechanisms are used in M-SP, so M-SP not only has higher recovery performance than some existing algorithms, but also significantly reduces the iteration number for improving the signal recovery efficiency. Simulations results show that M-SP and Simultaneous Compressive Sampling Matching Pursuit (SCoSaMP) have almost identical recovery performance and iteration times, but M-SP significantly reduces the computation complexity in per iteration. For example, when sparsity K is 5, the computational complexity of M-SP is 24.0% of that of SCoSaMP in each iteration.
机译:本文提出了MMV子空间追踪(M-SP)算法来解决联合稀疏多测量向量(MMV)问题。 M-SP中使用了预选择和回溯机制,因此M-SP不仅具有比某些现有算法更高的恢复性能,而且还大大减少了迭代次数,从而提高了信号恢复效率。仿真结果表明,M-SP和同时压缩采样匹配追踪(SCoSaMP)具有几乎相同的恢复性能和迭代时间,但是M-SP显着降低了每次迭代的计算复杂度。例如,当稀疏度K为5时,每次迭代中M-SP的计算复杂度是SCoSaMP的24.0%。

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