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Clutter Subspace Estimation in Low Rank Heterogeneous Noise Context

机译:低秩异构噪声环境下的杂波子空间估计

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摘要

This paper addresses the problem of the Clutter Subspace Projector (CSP) estimation in the context of a disturbance composed of a Low Rank (LR) heterogeneous clutter, modeled here by a Spherically Invariant Random Vector (SIRV), plus a white Gaussian noise (WGN). In such context, the corresponding LR adaptive filters and detectors require less training vectors than classical methods to reach equivalent performance. Unlike classical adaptive processes, which are based on an estimate of the noise Covariance Matrix (CM), the LR processes are based on a CSP estimate. This CSP estimate is usually derived from a Singular Value Decomposition (SVD) of the CM estimate. However, no Maximum Likelihood Estimator (MLE) of the CM has been derived for the considered disturbance model. In this paper, we introduce the fixed point equation that MLE of the CSP satisfies for a disturbance composed of a LR-SIRV clutter plus a zero mean WGN. A recursive algorithm is proposed to compute this solution. Numerical simulations validate the introduced estimator and illustrate its interest compared to the current state of art.
机译:本文解决了由低秩(LR)异类杂波组成的扰动情况下杂波子空间投影仪(CSP)估计的问题,此处通过球面不变随机矢量(SIRV)加上白高斯噪声(WGN)进行建模)。在这种情况下,与经典方法相比,相应的LR自适应滤波器和检测器需要较少的训练矢量才能达到等效性能。与经典自适应过程不同,经典自适应过程基于噪声协方差矩阵(CM)的估计,而LR过程则基于CSP估计。此CSP估计值通常是从CM估计值的奇异值分解(SVD)得出的。但是,对于所考虑的干扰模型,尚未导出CM的最大似然估计器(MLE)。在本文中,我们介绍了CSP的MLE满足由LR-SIRV杂波加零均值WGN组成的扰动的不动点方程。提出了一种递归算法来计算该解决方案。数值模拟验证了引入的估计量,并说明了与当前技术水平相比的兴趣。

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