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From the Cover: Deterministic matrices matching the compressed sensing phase transitions of Gaussian random matrices

机译:从封面开始:确定性矩阵与高斯随机矩阵的压缩传感相变匹配

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摘要

In compressed sensing, one takes samples of an N-dimensional vector using an matrix A, obtaining undersampled measurements . For random matrices with independent standard Gaussian entries, it is known that, when is k-sparse, there is a precisely determined phase transition: for a certain region in the (,)-phase diagram, convex optimization typically finds the sparsest solution, whereas outside that region, it typically fails. It has been shown empirically that the same property—with the same phase transition location—holds for a wide range of non-Gaussian random matrix ensembles. We report extensive experiments showing that the Gaussian phase transition also describes numerous deterministic matrices, including Spikes and Sines, Spikes and Noiselets, Paley Frames, Delsarte-Goethals Frames, Chirp Sensing Matrices, and Grassmannian Frames. Namely, for each of these deterministic matrices in turn, for a typical k-sparse object, we observe that convex optimization is successful over a region of the phase diagram that coincides with the region known for Gaussian random matrices. Our experiments considered coefficients constrained to for four different sets , and the results establish our finding for each of the four associated phase transitions.
机译:在压缩传感中,人们使用矩阵A对N维向量进行采样,从而获得欠采样的测量值。对于具有独立标准高斯项的随机矩阵,众所周知,当k为稀疏时,会精确地确定相变:对于(,)相图中的某个区域,凸优化通常会找到最稀疏的解,而在该区域之外,通常会失败。经验表明,具有相同的特性(具有相同的相变位置)可适用于各种非高斯随机矩阵集合。我们报告了大量实验,这些实验表明高斯相变还描述了许多确定性矩阵,包括尖峰和正弦,尖峰和噪声小波,Paley框架,Delsarte-Goethals框架,线性调频传感矩阵和Grassmannian框架。也就是说,对于这些确定性矩阵中的每一个,对于一个典型的k稀疏对象,我们依次观察到,凸优化在与高斯随机矩阵已知的区域重合的相图区域上是成功的。我们的实验考虑了针对四个不同集合的系数限制为,并且结果建立了我们对于四个关联相变中的每个相变的发现。

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