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Robust Covariance Matrix Estimation in Heterogeneous Low Rank Context

机译:异构低秩上下文中的鲁棒协方差矩阵估计

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This paper addresses the problem of robust covariance matrix (CM) estimation in the context of a disturbance composed of a low rank (LR) heterogeneous clutter plus an additive white Gaussian noise. The LR clutter is modeled by a spherically invariant random vector with assumed high clutter-to-noise ratio. In such a context, adaptive process should require less training samples than classical methods to reach equivalent performance as in a “full rank” clutter configuration. The main issue is that classical robust estimators of the CM cannot be computed in the undersampled configuration. To overcome this issue, the current approach is based on regularization methods. Nevertheless, most of these solutions are enforcing the estimate to be well conditioned, while in our context, it should be LR structured. This paper, therefore, addresses this issue and derives an algorithm to compute the maximum likelihood estimator of the CM for the considered disturbance model. Several relaxations and robust generalizations of the result are discussed. Performance is finally illustrated on numerical simulations and on a space time adaptive processing for airborne radar application.
机译:本文针对由低秩(LR)异类杂波加上加性高斯白噪声构成的干扰,解决了鲁棒协方差矩阵(CM)估计问题。 LR杂波由具有恒定杂波噪声比的球形不变随机矢量建模。在这种情况下,与“满秩”杂波配置中的同等性能相比,自适应过程应比传统方法需要更少的训练样本。主要问题是无法在欠采样配置下计算CM的经典鲁棒估计量。为了克服这个问题,当前的方法基于正则化方法。但是,大多数这些解决方案都要求将估算值条件良好,而在我们的上下文中,应采用LR结构。因此,本文解决了这个问题,并推导了一种算法,用于针对所考虑的干扰模型计算CM的最大似然估计量。讨论了结果的几种松弛和鲁棒的概括。最后在数值模拟和机载雷达应用的时空自适应处理中说明了性能。

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