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False Alarm Rate of the GLRT for Subspace Signals in Subspace Interference Plus Gaussian Noise

机译:子空间干扰子空间信号的GLRT的误报率加上高斯噪声

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摘要

In the presence of interference and Gaussian noise with unknown covariance matrix, a generalized likelihood ratio test (GLRT) detector has already been developed for detecting a distributed target. The target signal and interference are described with subspace models, namely, the target signals (or interference) are modeled as linear combinations of the linearly independent columns of a known subspace matrix. In this paper, we obtain statistical properties of this GLRT detector, and prove its constant false alarm rate against the noise covariance matrix. Moreover, we derive analytical expressions for the probability of false alarm of the GLRT detector. Specifically, exact expressions for the probability of false alarm are obtained for six cases where the target subspace dimension (denoted by p) is 1, 2, and 3, and the number of range cells (denoted by H) the distributed target occupies is 1, 2, and 3. For the general case where p >= 4 and H >= 4, we derive an approximate expression for the probability of false alarm. Monte Carlo simulations show that the exact expressions are valid, and the accuracy of the approximate expression is acceptable for moderate or large training data size. In practice, these expressions can greatly facilitate the threshold setting for the GIRT detector for any preassigned probability of false alarm.
机译:在具有未知协方差矩阵的干扰和高斯噪声的情况下,已经开发了广义似然比测试(GLRT)检测器用于检测分布式目标。通过子空间模型描述目标信号和干扰,即目标信号(或干扰)被建模为已知子空间矩阵的线性独立列的线性组合。在本文中,我们获得该GLRT检测器的统计特性,并对噪声协方差矩阵证明其恒定的误报率。此外,我们推导了GLRT检测器的误报概率的分析表达式。具体地,获得针对误报概率的精确表达式,以获得六个情况,其中目标子空间尺寸(由p)为1,2和3,以及分布式目标占用的范围细胞数(由h表示)为1 2,和3.对于P> = 4和H> = 4的一般情况,我们导出了误报概率的近似表达。蒙特卡罗模拟表明,确切的表达有效,近似表达的准确性对于中等或大型训练数据大小是可接受的。在实践中,这些表达式可以极大地促进GIRT探测器的阈值设置,以便为虚假警报的任何预测概率进行任何预测。

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