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Adaptive detection of multichannel signals without training data

机译:在不训练数据的情况下自适应检测多通道信号

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摘要

Adaptive detection of multichannel signals in Gaussian background is studied in this paper, for the case where the existence of training data is not assumed. Four new detectors are designed for this detection problem, by using the generalized likelihood ratio test, Rao test, Wald test and a reduced-dimension (RD) approach; their probabilities of false alarm (PFAs) and detection (PDs) are analytically deduced. These PFAs indicate that the four new detectors possess the constant false alarm rate properties against the noise covariance matrix. Experimental results show that the RD-based detector achieves larger (smaller) PDs than the other three new detectors if limited (sufficient) test data are available. When mismatched signals are encountered, the RD- and Rao-based detectors perform more robust and more sensitive, respectively, than the other two new detectors.
机译:本文研究了高斯背景中的多声道信号的自适应检测,因为没有假设训练数据的存在的情况。通过使用广义似然比测试,RAO测试,WALD测试和减压(RD)方法,设计了四个新探测器。它们的假警报(PFAS)和检测(PDS)的概率在分析推导出来。这些PFA表示四个新探测器对噪声协方差矩阵具有恒定的误报率属性。实验结果表明,如果有限(足够的)测试数据,RD基探测器比其他三个新的检测器比其他三个新的检测器更大(更小)的PDS。当遇到不匹配的信号时,基于RD和RAO的检测器分别比其他两个新探测器分别执行更强大更敏感。

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