基于原子范数最小化的压缩多信道频率估计的平均案例分析

Zai Yang, Yonina C. Eldar, Lihua Xie
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引用次数: 1

摘要

压缩多通道频率估计是指从多个信号的压缩样本中提取多个信号共享的频率分布的过程。最近的一种解决该问题的方法依赖于原子范数最小化,该方法利用通道之间的联合稀疏性,使用凸优化来解决,并且具有很强的理论保证。本文通过假设频率幅值的适当随机性,给出了原子范数最小化的平均情况分析。我们表明,从无噪声样本进行精确频率估计所需的每个通道的样本量随着通道数量的增加而减少,其数量级为$K\displaystyle \log K\left(1+\frac{1}{L}\log N\right)$,其中K是频率数量,L是通道数量,N是与采样窗口大小成正比的固定参数,与所需分辨率成反比。
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Average Case Analysis of Compressive Multichannel Frequency Estimation Using Atomic Norm Minimization
Compressive multichannel frequency estimation refers to the process of retrieving the frequency profile shared by multiple signals from their compressive samples. A recent approach to this problem relies on atomic norm minimization which exploitsjoint sparsity among the channels, is solved using convex optimization, and has strong theoretical guarantees. We provide in this paper an average-case analysis for atomic norm minimization by assuming proper randomness on the amplitudes of the frequencies. We show that the sample size per channel required for exact frequency estimation from noiseless samples decreases as the number of channels increases and is on the order of $K\displaystyle \log K\left(1+\frac{1}{L}\log N\right)$, where K is the number of frequencies, L is the number of channels, and N is a fixed parameter proportional to the sampling window size and inversely proportional to the desired resolution.
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