In this paper we analyze the behavior of adaptive filters or detectors when they are trained with $t$-distributed samples rather than Gaussian distributed samples. More precisely we investigate the impact on the distribution of some relevant statistics including the signal to noise ratio loss and the Gaussian generalized likelihood ratio test. Some properties of partitioned complex $F$ distributed matrices are derived which enable to obtain statistical representations in terms of independent chi-square distributed random variables. These representations are compared with their Gaussian counterparts and numerical simulations illustrate and quantify the induced degradation.
翻译:在本文中,我们分析了适应性过滤器或检测器在经过以美元分配的样本而不是高森分布式样本培训时的行为。更准确地说,我们调查了某些相关统计数据对分布的影响,包括噪音率损失信号和高西亚普遍概率比测试。分隔式复合体($F)分布式矩阵的某些特性可以得出独立基平方分布随机变量的统计表示。这些表示与高斯分布式样本进行比较,并用数字模拟来说明和量化诱发的降解。