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Joint Sensing Matrix Design And Recovery Based On Normalized Iterative Hard Thesholding for Sparse Systems

机译:基于归一化迭代硬阈值的稀疏系统联合传感矩阵设计与恢复

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In this work, we present a joint sensing matrix design and recovery algorithm based on the normalized iterative hard thresholding (NIHT) algorithm for cost-effectively solving the problem of sparse recovery. In particular, we consider both the Gram of the sensing matrix and a gradient-based algorithm based on the real mutual coherence (RMC) to compute the sensing matrix, so that the Gram of the matrix can closely approach the relaxed equiangular tight frame (ETF. By optimizing the sensing matrix together with its column normalization, a better recovery performance can be achieved. Simulations assess the performance of the proposed approach versus other iterative hard thresholding-based algorithms and show that the proposed approach achieves the best recovery performance.
机译:在这项工作中,我们提出了一种基于归一化迭代硬阈值(NIHT)算法的联合感知矩阵设计和恢复算法,可以经济高效地解决稀疏恢复问题。特别是,我们考虑了感测矩阵的Gram和基于实相干(RMC)的基于梯度的算法来计算感测矩阵,从而使矩阵的Gram可以紧密地接近松弛等角紧密框架(ETF)通过优化感测矩阵及其列归一化,可以实现更好的恢复性能,仿真评估了该方法相对于其他基于迭代硬阈值的算法的性能,并表明该方法实现了最佳的恢复性能。

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