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首页> 外文期刊>Automatic Control, IEEE Transactions on >Modeling and Unsupervised Classification of Multivariate Hidden Markov Chains With Copulas
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Modeling and Unsupervised Classification of Multivariate Hidden Markov Chains With Copulas

机译:Copulas的多元隐马尔可夫链的建模与无监督分类

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Parametric modeling and estimation of non-Gaussian multidimensional probability density function is a difficult problem whose solution is required by many applications in signal and image processing. A lot of efforts have been devoted to escape the usual Gaussian assumption by developing perturbed Gaussian models such as spherically invariant random vectors (SIRVs). In this work, we introduce an alternative solution based on copulas that enables theoretically to represent any multivariate distribution. Estimation procedures are proposed for some mixtures of copula-based densities and are compared in the hidden Markov chain setting, in order to perform statistical unsupervised classification of signals or images. Useful copulas and SIRV for multivariate signal classification are particularly studied through experiments.
机译:非高斯多维概率密度函数的参数建模和估计是一个难题,其解决方案是信号和图像处理中许多应用程序所需要的。通过开发扰动的高斯模型(例如球不变的随机矢量(SIRV)),人们付出了很多努力来摆脱通常的高斯假设。在这项工作中,我们介绍了一种基于copulas的替代解决方案,该解决方案理论上可以表示任何多元分布。提出了一些针对基于copula的密度的混合物的估计程序,并在隐马尔可夫链设置中进行了比较,以便对信号或图像进行统计无监督分类。通过实验特别研究了用于多变量信号分类的有用copula和SIRV。

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