从paley图到具有实值gramn的确定性感知矩阵

A. Amini, Hamed Bagh-Sheikhi, F. Marvasti
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引用次数: 6

摘要

压缩感知场景下稀疏向量恢复的性能保证除了依赖于重构技术外,还依赖于感知矩阵的选择。所谓的受限等距特性(RIP)是确定和比较各种传感矩阵性能的常用工具之一。这是随机(高斯)矩阵高概率满足RIP的一个标准结果。然而,满足RIP的确定性矩阵的设计多年来一直是一个巨大的挑战。常用的设计技术是通过相干值(柱间最大模量相关)。本文在Paley图的基础上,引入了大小为q+1/2 × q的确定性矩阵,其幂为q的素数,使得对应的Gram矩阵为实值矩阵。我们证明了这些矩阵的相干性小于韦尔奇界的两倍,这是对一般矩阵有效的下界。需要说明的是,所引入的矩阵不同于由Paley差分集产生的大小为q-1/2 × q的等角紧框架(ETF)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From paley graphs to deterministic sensing matrices with real-valued Gramians
The performance guarantees in recovery of a sparse vector in a compressed sensing scenario, besides the reconstruction technique, depends on the choice of the sensing matrix. The so-called restricted isometry property (RIP) is one of the well-used tools to determine and compare the performance of various sensing matrices. It is a standard result that random (Gaussian) matrices satisfy RIP with high probability. However, the design of deterministic matrices that satisfy RIP has been a great challenge for many years now. The common design technique is through the coherence value (maximum modulus correlation between the columns). In this paper, based on the Paley graphs, we introduce deterministic matrices of size q+1/2 × q with q a prime power, such that the corresponding Gram matrix is real-valued. We show that the coherence of these matrices are less than twice the Welch bound, which is a lower bound valid for general matrices. It should be mentioned that the introduced matrix differs from the equiangular tight frame (ETF) of size q-1/2 × q arising from the Paley difference set.
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