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A sparsity based GLRT for moving target detection in distributed MIMO radar on moving platforms

机译:基于稀疏性的GLRT用于移动平台上分布式MIMO雷达中的移动目标检测

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This paper examines moving target detection (MTD) in distributed multi-input multi-output (MIMO) radar with sensors placed on moving platforms. Unlike previous works which were focused on the case of stationary platforms, we consider explicitly the effects of platform motion, which exacerbate the location-induced clutter non-homogeneity inherent in such systems and thus make the MTD problem significantly more challenging. We propose a sparsity based detector which, by exploiting a sparse representation of the clutter in the Doppler domain, adaptively estimates from the test signal the clutter subspace, which is allowed to be distinct for different transmit/receive (Tx/Rx) pairs and, moreover, may spread over the entire Doppler bandwidth. The proposed detector requires no range training signals that are indispensable for conventional detectors but are difficult to obtain in practice. Numerical results indicate that the proposed range training-free detector offers improved detection performance over covariance matrix based detectors when the latter are provided with a moderate amount of training signals.
机译:本文研究了将传感器放置在移动平台上的分布式多输入多输出(MIMO)雷达中的移动目标检测(MTD)。与以前的工作侧重于固定平台的情况不同,我们明确考虑了平台运动的影响,这加剧了此类系统固有的位置诱发的杂波非均匀性,从而使MTD问题变得更具挑战性。我们提出了一种基于稀疏性的检测器,该检测器通过利用多普勒域中杂波的稀疏表示,从测试信号中自适应估计杂波子空间,该子空间对于不同的发射/接收(Tx / Rx)对是不同的,而且,可能会扩展到整个多普勒带宽。所提出的检测器不需要对于常规检测器必不可少但实际上难以获得的范围训练信号。数值结果表明,与基于协方差矩阵的检测器相比,当向其提供中等数量的训练信号时,提出的无范围训练的检测器提供了更高的检测性能。

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