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Binary Matrices for Compressed Sensing

机译:压缩感测的二元矩阵

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摘要

For an m x n binary matrix with d nonzero elements per column, it is interesting to identify the minimal column degree d that corresponds to the best recovery performance. Consider this problem is hard to be addressed with currently known performance parameters, we propose a new performance parameter, the average of nonzero correlations between normalized columns. The parameter is proved to perform better than the known coherence parameter, namely the maximum correlation between normalized columns, when used to estimate the performance of binary matrices with high compression ratios n/m and low column degrees d. By optimizing the proposed parameter, we derive an ideal column degree d = [√m 1, around which the best recovery performance is expected to be obtained. This is verified by simulations. Given the ideal number d of nonzero elements in each column, we further determine their specific distribution by minimizing the coherence with a greedy method. The resulting binary matrices achieve comparable or even better recovery performance than random binary matrices.
机译:对于每列具有d个非零元素的m x n二进制矩阵,确定与最佳恢复性能相对应的最小列度d很有趣。考虑到当前已知的性能参数很难解决这个问题,我们提出了一个新的性能参数,即标准化列之间非零相关性的平均值。当用于估计具有高压缩比n / m和低列度d的二元矩阵的性能时,该参数的性能优于已知的相干参数,即归一化列之间的最大相关性。通过优化建议的参数,我们得出了理想的色谱柱度d = [√m1,在该色谱柱度附近,有望获得最佳的回收性能。通过仿真验证了这一点。给定每列中非零元素的理想数量d,我们通过使用贪心方法使相干性最小化来进一步确定其特定分布。所得的二进制矩阵与随机二进制矩阵相比,具有可比甚至更好的恢复性能。

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