A restricted isometry property for structurally-subsampled unitary matrices

W. Bajwa, A. Sayeed, R. Nowak
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引用次数: 26

Abstract

Subsampled (or partial) Fourier matrices were originally introduced in the compressive sensing literature by Candès et al. Later, in papers by Candès and Tao and Rudelson and Vershynin, it was shown that (random) subsampling of the rows of many other classes of unitary matrices also yield effective sensing matrices. The key requirement is that the rows of U, the unitary matrix, must be highly incoherent with the basis in which the signal is sparse. In this paper, we consider acquisition systems that — despite sensing sparse signals in an incoherent domain — cannot randomly subsample rows from U. We consider a general class of systems in which the sensing matrix corresponds to subsampling of the rows of matrices of the form Φ = RU (instead of U), where R is typically a low-rank matrix whose structure reflects the physical/technological constraints of the acquisition system. We use the term “structurally-subsampled unitary matrices” to describe such sensing matrices. We investigate the restricted isometry property of a particular class of structurally-subsampled unitary matrices that arise naturally in application areas such as multiple-antenna channel estimation and sub-nyquist sampling. In addition, we discuss an immediate application of this work in the area of wireless channel estimation, where the main results of this paper can be applied to the estimation of multiple-antenna orthogonal frequency division multiplexing channels that have sparse impulse responses.
结构次抽样酉矩阵的限制等距性质
下采样(或部分)傅立叶矩阵最初是由candires等人在压缩感知文献中引入的。后来,在cand、Tao、Rudelson和Vershynin的论文中,证明了对许多其他类酉矩阵的行进行(随机)子抽样也能产生有效的感知矩阵。关键的要求是,酉矩阵U的行必须与信号稀疏的基高度不相干。在本文中,我们考虑采集系统-尽管在非相干域中感知稀疏信号-不能随机从U中抽取行。我们考虑一类一般系统,其中感知矩阵对应于形式为Φ = RU(而不是U)的矩阵行的子采样,其中R通常是一个低秩矩阵,其结构反映了采集系统的物理/技术约束。我们使用术语“结构下采样酉矩阵”来描述这样的传感矩阵。我们研究了一类特殊的结构下采样酉矩阵的限制等距性质,这些矩阵在多天线信道估计和次奈奎斯特采样等应用领域中自然出现。此外,我们讨论了这项工作在无线信道估计领域的直接应用,其中本文的主要结果可以应用于具有稀疏脉冲响应的多天线正交频分复用信道的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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