Nonasymptotic Analysis of Direct-Augmentation ESPRIT for Localization of More Sources Than Sensors Using Sparse Arrays

Zai Yang, Kai Wang
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Abstract

Direction augmentation (DA), followed by a subspace method such as MUSIC or ESPRIT, is a successful approach that enables localization of more uncorrelated sources than sensors with a proper sparse linear array. In this paper, we carry out a nonasymptotic performance analysis of DA-ESPRIT in the practical scenario with finitely many snapshots. We show that more uncorrelated sources than sensors are guaranteed, with overwhelming probability, to be localized using DA-ESPRIT if the number of snapshots is greater than an explicit, problem-dependent threshold. Our result does not require a fixed source separation condition, which makes it unique among existing results. Numerical results corroborating our analysis are provided.
使用稀疏阵列对多于传感器的来源进行定位的直接增强 ESPRIT 非渐近分析
与使用适当稀疏线性阵列的传感器相比,使用方向增强(DA)和子空间方法(如 MUSIC 或 ESPRIT)可以定位更多不相关的信号源,是一种成功的方法。在本文中,我们对具有有限多个快照的实际场景中的 DA-ESPRIT 进行了非渐近性能分析。我们的研究表明,如果快照数量大于一个明确的、与问题相关的阈值,那么使用 DA-ESPRIT 可以保证以压倒性的概率定位到比传感器更多的不相关源。我们的结果不需要固定的源分离条件,这使得它在现有结果中独一无二。我们提供的数值结果证实了我们的分析。
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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