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Detection performance of Roy's largest root test when the noise covariance matrix is arbitrary

机译:噪声协方差矩阵为任意时Roy最大根检验的检测性能

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Detecting the presence of a signal embedded in noise from a multi-sensor system is a fundamental problem in signal and array processing. In this paper we consider the case where the noise covariance matrix is arbitrary and unknown but we are given both signal bearing and noise-only samples. Using a matrix perturbation approach, combined with known results on the eigenvalues of inverse Wishart matrices, we study the behavior of the largest eigenvalue of the relevant covariance matrix, and derive an approximate expression for the detection probability of Roy's largest root test. The accuracy of our expressions is confirmed by simulations.
机译:检测来自多传感器系统的噪声中嵌入的信号的存在是信号和阵列处理中的一个基本问题。在本文中,我们考虑了噪声协方差矩阵是任意且未知的情况,但同时给出了信号承载样本和纯噪声样本。使用矩阵摄动方法,结合已知的逆Wishart矩阵特征值的结果,研究相关协方差矩阵的最大特征值的行为,并得出Roy最大根检验的检测概率的近似表达式。我们的表达式的准确性已通过仿真得到证实。

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