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Estimation of Toeplitz Covariance Matrices in Large Dimensional Regime With Application to Source Detection

机译:大尺寸区域Toeplitz协方差矩阵的估计及其在源检测中的应用

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摘要

In this paper, we derive concentration inequalities for the spectral norm of two classical sample estimators of large dimensional Toeplitz covariance matrices, demonstrating in particular their asymptotic almost sure consistence. The consistency is then extended to the case where the aggregated matrix of time samples is corrupted by a rank one (or more generally, low rank) matrix. As an application of the latter, the problem of source detection in the context of large dimensional sensor networks within a temporally correlated noise environment is studied. As opposed to standard procedures, this application is performed online, i.e., without the need to possess a learning set of pure noise samples.
机译:在本文中,我们推导了两个大维Toeplitz协方差矩阵的经典样本估计量的频谱范数的浓度不等式,尤其证明了它们的渐近几乎确定的一致性。然后,将一致性扩展到以下情况:时间样本的聚合矩阵被秩为1(或更通常为低秩)的矩阵所破坏。作为后者的应用,研究了在时间相关的噪声环境中的大型传感器网络环境中的源检测问题。与标准程序相反,此应用程序是在线执行的,即无需拥有纯噪声样本的学习集。

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