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Structured random measurements in signal processing

机译:信号处理中的结构化随机测量

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摘要

Compressed sensing and its extensions have recently triggered interest in randomized signal acquisition. A key finding is that random measurements provide sparse signal reconstruction guarantees for efficient and stable algorithms with a minimal number of samples. While this was first shown for (unstructured) Gaussian random measurement matrices, applications require certain structure of the measurements leading to structured random measurement matrices. Near optimal recovery guarantees for such structured measurements have been developed over the past years in a variety of contexts. This article surveys the theory in three scenarios: compressed sensing (sparse recovery), low rank matrix recovery, and phaseless estimation. The random measurement matrices to be considered include random partial Fourier matrices, partial random circulant matrices (subsampled convolutions), matrix completion, and phase estimation from magnitudes of Fourier type measurements. The article concludes with a brief discussion of the mathematical techniques for the analysis of such structured random measurements.
机译:压缩感测及其扩展最近引起了对随机信号采集的兴趣。一个关键的发现是,随机测量可以以最少的样本数量为有效而稳定的算法提供稀疏的信号重建保证。虽然这是首次针对(非结构化)高斯随机测量矩阵显示的,但应用程序需要特定的测量结构,从而导致结构化随机测量矩阵。在过去的几年中,已经为这种结构化测量开发了接近最佳的恢复保证。本文在三种情况下研究了该理论:压缩感测(稀疏恢复),低秩矩阵恢复和无相估计。要考虑的随机测量矩阵包括随机局部傅里叶矩阵,局部随机循环矩阵(二次抽样卷积),矩阵完成度以及根据傅立叶类型测量值的相位进行估计。本文最后简要讨论了用于分析此类结构化随机测量的数学技术。

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