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Non-Gaussian random vector identification using spherically invariant random processes

机译:使用球形不变随机过程的非高斯随机矢量识别

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摘要

With the modeling of non-Gaussian radar clutter in mind, elegant and tractable techniques are presented for characterizing the probability density function (PDF) of a correlated non-Gaussian radar vector. The need for a library of multivariable correlated non-Gaussian PDFs in order to characterize various clutter scenarios is discussed. Specifically,. the theory of spherically invariant random processes (SIRPs) is examined in detail. Approaches based on the marginal envelope PDF and the marginal characteristic function have been used to obtain several multivariate non-Gaussian PDFs. An important result providing the PDF of the quadratic form of a spherically invariant random vector (SIRV) is presented. This result enables the problem of distributed identification of a SIRV to be addressed.
机译:考虑到非高斯雷达杂波的建模,提出了用于描述相关非高斯雷达向量的概率密度函数(PDF)的优雅且易于处理的技术。讨论了需要一个多变量相关非高斯PDF库来表征各种混乱情况。特别,。详细研究了球不变随机过程(SIRP)的理论。基于边际包络PDF和边际特征函数的方法已被用于获得多个多元非高斯PDF。提供了一个重要结果,该结果提供了球形不变随机矢量(SIRV)的二次形式的PDF。该结果使得能够解决SIRV的分布式识别的问题。

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