On the Probability Distribution of the Outputs of the Diagonally Loaded Capon-MVDR Processor

R. Nadakuditi, A. Edelman
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引用次数: 1

Abstract

The Capon-MVDR algorithm has been widely studied by several authors. The famous Capon-Goodman result on the probability distribution of the Capon-MVDR spectral estimator was also used to accurately predict the bias and variance of the Capon-MVDR algorithm due to finite sample effects. The goal of this present analysis is to extend these results to compute the probability distribution, and hence the bias and variance, of the output of the Capon-MVDR processor when the sample covariance matrix is diagonally loaded. Of particular interest is the computation, for the first time, in the snapshot deficient scenario where the diagonal loading is used to combat the ill-conditioned or rank deficient sample covariance matrix.
对角加载Capon-MVDR处理器输出的概率分布
Capon-MVDR算法已被许多作者广泛研究。利用Capon-MVDR谱估计器概率分布的著名Capon-Goodman结果,准确预测了Capon-MVDR算法由于有限样本效应而产生的偏差和方差。本分析的目标是扩展这些结果,以计算当样本协方差矩阵被对角线加载时Capon-MVDR处理器输出的概率分布,从而计算偏差和方差。特别感兴趣的是计算,这是第一次,在快照不足的情况下,对角加载被用来对抗病态或秩不足的样本协方差矩阵。
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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