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Knowledge-Aided Subspace Detector for Second-Order Gaussian Signal in Nonhomogeneous Environments

机译:非均匀环境中用于二阶高斯信号的知识辅助子空间检测器

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Traditional subspace detection for the second-order Gaussian (SOG) model signal is generally considered in the homogeneous or partially homogeneous environments. This paper addresses the problem of the subspace detection for the SOG signal in the presence of the nonhomogeneous noise whose covariance matrices in the primary and secondary data are assumed to be random, with some appropriate distributions. Within this nonhomogeneous framework, a novel adaptive subspace detector is proposed in terms of an approximate generalized likelihood ratio test (AGLRT) and the Gibbs sampling strategy. The numerical result evaluates the performance of the subspace detector with Monte Carlo method under nonhomogeneity.
机译:通常在同质或部分同质环境中考虑用于二阶高斯(SOG)模型信号的传统子空间检测。本文解决了在存在非均匀噪声的情况下对SOG信号进行子空间检测的问题,该噪声的主要和次要数据的协方差矩阵假定为随机的,并且分布合理。在这种非均匀框架内,根据近似广义似然比检验(AGLRT)和吉布斯采样策略,提出了一种新颖的自适应子空间检测器。数值结果用蒙特卡罗方法评估了非均匀性下子空间检测器的性能。

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