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Covariance matrix estimation via geometric barycenters and its application to radar training data selection

机译:基于几何重心的协方差矩阵估计及其在雷达训练数据选择中的应用

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摘要

This study deals with the problem of covariance matrix estimation for radar signal processing applications. The authors propose and analyse a class of estimators that do not require any knowledge about the probability distribution of the sample support and exploit the characteristics of the positive-definite matrix space. Any estimator of the class is associated with a suitable distance in the considered space and is defined as the geometric barycenter of some basic covariance matrix estimates obtained from the available secondary data set. Then, the authors introduce an adaptive detection structure, exploiting the new covariance matrix estimators, based on two stages. The former consists of a data selector screening among the training data, whereas the latter is a conventional adaptive matched filter taking the final decision about the target presence. At the analysis stage, the authors assess the performance of the proposed two-stage scheme in terms of probability of correct outliers excision, constant false alarm rate behaviour and detection probability. The analysis is conducted both on simulated data and on the challenging KASSPER datacube.
机译:这项研究解决了雷达信号处理应用中协方差矩阵估计的问题。作者提出并分析了一类不需要对样本支持的概率分布有任何了解的估计量,并利用了正定矩阵空间的特征。该类的任何估计量都与所考虑的空间中的合适距离相关联,并被定义为从可用辅助数据集获得的一些基本协方差矩阵估计量的几何重心。然后,作者基于两个阶段,利用新的协方差矩阵估计器,介绍了一种自适应检测结构。前者由训练数据中的数据选择器筛选组成,而后者是对目标存在做出最终决定的常规自适应匹配滤波器。在分析阶段,作者根据正确的异常值切除概率,恒定的误报率行为和检测概率评估提出的两阶段方案的性能。分析是在模拟数据和具有挑战性的KASSPER数据立方体上进行的。

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