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Clutter space-time covariance matrix estimate based on multi-polarised data

机译:基于多极化数据的杂波时空协方差矩阵估计

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The problem of training sample insufficiency is frequently encountered in the space-time adaptive processing and significantly degrades the performance of radar target detection. In this study, the authors propose a clutter covariance matrix estimation algorithm using multi-polarised data in the polarimetric radar system, which can mitigate this problem with an enlarged training sample set. Based on the space-time signal model, they validate that the clutter snapshots for different polarisations share a common spectral structure theoretically. Then, the maximum likelihood estimations of clutter covariance matrixes with multi-polarised training samples are deduced under Gaussian and non-Gaussian statistic. Finally, the performance improvement of our method with limited training samples is demonstrated with simulated data.
机译:在空时自适应处理中经常遇到训练样本不足的问题,这严重降低了雷达目标检测的性能。在这项研究中,作者提出了一种在极化雷达系统中使用多极化数据的杂波协方差矩阵估计算法,该算法可以通过扩大训练样本集来缓解此问题。他们基于时空信号模型,验证了不同极化的杂波快照在理论上共享相同的频谱结构。然后,根据高斯和非高斯统计量推导具有多极化训练样本的杂波协方差矩阵的最大似然估计。最后,通过模拟数据证明了我们的方法在有限训练样本下的性能改进。

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