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Blind Non-parametric Statistics for Multichannel Detection Based on Statistical Covariances

机译:基于统计考族的多通道检测的盲非参数统计

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We consider the problem of detecting the presence of a spatially correlated multichannel signal corrupted by additive Gaussian noise (i.i.d across sensors). No prior knowledge is assumed about the system parameters such as the noise variance, number of sources and correlation among signals. The non-parametric detection statistics were formed based on the statistical covariances obtained through Bartlett decomposition of sample covariance matrix. They are designed such that the detection performance is immune to the uncertainty in the knowledge of noise variance. The analysis presented verifies the invariability of threshold value and identifies a few specific scenarios where the proposed statistics have better performance compared to generalised likelihood ratio test (GLRT) statistics. The sensitivity of the statistic to correlation among streams, number of sources and sample size at low signal to noise ratio are discussed.
机译:我们考虑检测通过附加高斯噪声损坏的空间相关多通道信号的存在(I.i.d横跨传感器)。没有先验知识,诸如系统参数,例如噪声方差,源次数和信号之间的相关性。基于通过样品协方差矩阵的Bartlett分解获得的统计考核来形成非参数检测统计。它们的设计使得检测性能对噪声方差知识中的不确定性免受不确定性。呈现的分析验证了阈值的不变性,并识别了与广义似然比测试(GLRT)统计数据相比具有更好性能的少数特定场景。讨论了统计学对噪声,源数和低信噪比下的样本量之间的相关性的敏感性。

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