Alice Combernoux, F. Pascal, M. Lesturgie, G. Ginolhac
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引用次数: 7
摘要
研究了在低阶高斯杂波和高斯白噪声干扰下的目标检测问题。在这种情况下,使用低秩归一化匹配滤波器检测器的自适应版本是很有趣的,标记为LR-ANMF,它是对杂波子空间的投影估计的函数。在本文中,我们表明,LR-ANMF探测器基于样本协方差矩阵K一致当辅助数据的数量趋于无穷时为一个固定的数据尺寸m但不一致当m和K都以同样的速度趋于无穷,即m / c K→∈(0,1)。使用随机矩阵理论的结果,然后,我们提出一个新版本的LR-ANMF一致的在这两种情况下,比较前一版本,LR-GSCM探测器。随机矩阵理论的检测器在STAP(时空自适应处理)数据上的应用表明了我们方法的兴趣。
Performances of low rank detectors based on random matrix theory with application to STAP
The paper addresses the problem of target detection embedded in a disturbance composed of a low rank Gaussian clutter and a white Gaussian noise. In this context, it is interesting to use an adaptive version of the Low Rank Normalized Matched Filter detector, denoted LR-ANMF, which is a function of the estimation of the projector onto the clutter subspace. In this paper, we show that the LR-ANMF detector based on the sample covariance matrix is consistent when the number of secondary data K tends to infinity for a fixed data dimension m but not consistent when m and K both tend to infinity at the same rate, i.e. m/K → c ∈ (0, 1). Using the results of random matrix theory, we then propose a new version of the LR-ANMF which is consistent in both cases and compare it to a previous version, the LR-GSCM detector. The application of the detectors from random matrix theory on STAP (Space Time Adaptive Processing) data shows the interest of our approach.