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MIMO Radar Detection in Non-Gaussian and Heterogeneous Clutter

机译:非高斯和非均质杂波中的MIMO雷达检测

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摘要

In this paper, the generalized likelihood ratio test-linear quadratic (GLRT-LQ) has been extended to the multiple-input multiple-output (MIMO) case where all transmit–receive subarrays are considered jointly as a system such that only one detection threshold is used. The GLRT-LQ detector has been derived based on the Spherically Invariant Random Vector (SIRV) model and is constant false alarm rate (CFAR) with respect to the clutter power fluctuations (also known as the texture). The new MIMO detector is then shown to be texture-CFAR as well. The theoretical performance of this new detector is first analytically derived and then validated using Monte Carlo simulations. Its detection performance is then compared to that of the well-known Optimum Gaussian Detector (OGD) under Gaussian and non-Gaussian clutter. Next, the adaptive version of the detector is investigated. The covariance matrix is estimated using the Fixed Point (FP) algorithm which enables the detector to remain texture- and matrix-CFAR. The effects of the estimation of the covariance matrix on the detection performance are also investigated.
机译:在本文中,广义似然比测试线性二次方(GLRT-LQ)已扩展到多输入多输出(MIMO)情况,在该情况下,所有发射-接收子阵列被共同视为一个系统,因此只有一个检测阈值用来。 GLRT-LQ检测器是基于球不变随机矢量(SIRV)模型得出的,相对于杂波功率波动(也称为纹理),它是恒定的虚警率(CFAR)。然后,新的MIMO检测器也显示为纹理CFAR。首先通过分析得出这种新型探测器的理论性能,然后使用蒙特卡洛模拟对其进行验证。然后将其检测性能与著名的最佳高斯检测器(OGD)在高斯和非高斯杂波下的检测性能进行比较。接下来,研究探测器的自适应版本。使用不动点(FP)算法估计协方差矩阵,该算法使检测器能够保持纹理CFCF和矩阵CFAR。还研究了协方差矩阵估计对检测性能的影响。

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