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Radar detection schemes for joint temporal and spatial correlated clutter using vector ARMA models

机译:使用矢量ARMA模型的时空相关杂波联合雷达检测方案

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Adaptive radar detection and estimation schemes are often based on the independence of the training data used for building estimators and detectors. This paper relaxes this constraint and deals with the non-trivial problem of deriving detection and estimation schemes for joint spatial and temporal correlated radar measurements. In order to estimate these two joint correlation matrices, we propose to use the Vector ARMA (VARMA) methodology. The estimation of the VARMA model parameters are performed with Maximum Likelihood Estimators in Gaussian and non-Gaussian environment. These two joint estimates of the spatial and temporal covariance matrices leads to build Adaptive Radar Detectors, like Adaptive Normalized Matched Filter (ANMF). Their corresponding performance are analyzed through simulated datasets. We show that taking into account the spatial covariance matrix may lead to significant performance improvements compared to classical procedures ignoring the spatial correlation.
机译:自适应雷达检测和估算方案通常基于用于建筑物估算器和检测器的训练数据的独立性。本文放宽了这一约束,并处理了推导联合时空相关雷达测量的检测和估计方案的非平凡问题。为了估计这两个联合相关矩阵,我们建议使用向量ARMA(VARMA)方法。在高斯和非高斯环境中,使用最大似然估计器执行VARMA模型参数的估计。空间和时间协方差矩阵的这两个联合估计导致构建自适应雷达检测器,例如自适应归一化匹配滤波器(ANMF)。通过模拟数据集分析了它们的相应性能。我们表明,与传统的忽略空间相关性的过程相比,考虑空间协方差矩阵可能会导致显着的性能改进。

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