Eigenvector peeling approach to coherent multiple source location problem

S. Reddi, A. Gershman
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Abstract

We propose a novel preprocessing scheme, referred to as vector peeling, as an alternate to the conventional spatial smoothing for solving the multiple source location problem involving coherent sources or a rank deficient source covariance matrix. The essence of the technique is to preprocess the signal sub-space eigenvectors rather than the covariance matrix as in spatial smoothing. It is shown by analysis and computer simulations that these two approaches are related, and that vector peeling slightly outperforms spatial smoothing when employed with the MUSIC-type DOA estimators. In certain instances, vector peeling offers advantages in terms of computational simplicity and flexibility. The latter is especially true with eigenstructure DOA estimators in adaptive estimation problems, i.e., when the signal subspace eigenvectors are updated using fast adaptive algorithms.
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相干多源定位问题的特征向量剥离方法
我们提出了一种新的预处理方案,称为矢量剥离,作为传统空间平滑的替代方案,用于解决涉及相干源或秩不足源协方差矩阵的多源定位问题。该技术的实质是对信号子空间特征向量进行预处理,而不是像空间平滑那样对协方差矩阵进行预处理。分析和计算机模拟表明,这两种方法是相关的,当与music类型的DOA估计器一起使用时,矢量剥离略优于空间平滑。在某些情况下,向量剥离在计算简单性和灵活性方面具有优势。后者尤其适用于自适应估计问题中的特征结构DOA估计,即当使用快速自适应算法更新信号子空间特征向量时。
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