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Asymptotic performance of the Low Rank Adaptive Normalized Matched Filter in a large dimensional regime

机译:低秩自适应归一化匹配滤波器在大维状态下的渐近性能

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The paper addresses the problem of approximating the detector distribution used in target detection embedded in a disturbance composed of a low rank Gaussian noise and a white Gaussian noise. In this context, it is interesting to use an adaptive version of the Low Rank Normalized Matched Filter (LR-ANMF) detector, which is a function of the estimated projector onto the low rank noise subspace. We will show that the traditional approximation of the LR-ANMF detector distribution is not always the better one. In this paper, we propose to perform its limits when the number of secondary data K and the data dimension m both tend to infinity at the same rate m/K → c∈2 (0;∞). Then, we give the theoretical distributions of these limits in the large dimensional regime and approximate the LR-ANMF detector distribution by them. The comparison of empirical and theoretical distributions on a jamming application shows the interest of our approach.
机译:本文解决了近似于嵌入目标检测中使用的检测器分布的问题,其嵌入于由低等级高斯噪声和白色高斯噪声组成的干扰中。在这种情况下,使用低等级归一化匹配过滤器(LR-ANMF)检测器的自适应版本是有趣的,这是估计投影仪在低排名噪声子空间上的函数。我们将表明,LR-ANMF检测器分布的传统近似并不总是更好的近似。在本文中,我们建议在次级数据k的数量和数据尺寸M倾向于相同速率m / k→c∈2(0;∞)时执行其限制。然后,我们在大维方针中提供了这些限制的理论分布,并近似于它们的LR-Anmf检测器分布。干扰申请对实证和理论分布的比较显示了我们方法的兴趣。

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