Parameterized Joint Densities with Gaussian and Gaussian Mixture Marginals

F. Sawo, D. Brunn, U. Hanebeck
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引用次数: 12

Abstract

In this paper we attempt to lay the foundation for a novel filtering technique for the fusion of two random vectors with imprecisely known stochastic dependency. This problem mainly occurs in decentralized estimation, e.g., of a distributed phenomenon, where the stochastic dependencies between the individual states are not stored. Thus, we derive parameterized joint densities with both Gaussian marginals and Gaussian mixture marginals. These parameterized joint densities contain all information about the stochastic dependencies between their marginal densities in terms of a parameter vector xi, which can be regarded as a generalized correlation parameter. Unlike the classical correlation coefficient, this parameter is a sufficient measure for the stochastic dependency even characterized by more complex density functions such as Gaussian mixtures. Once this structure and the bounds of these parameters are known, bounding densities containing all possible density functions could be found
具有高斯和高斯混合边际的参数化关节密度
在本文中,我们试图为一种新的滤波技术奠定基础,该技术用于融合具有不精确已知随机相关性的两个随机向量。这个问题主要发生在去中心化估计中,例如,在分布式现象中,单个状态之间的随机依赖关系没有被存储。因此,我们导出了具有高斯边际和高斯混合边际的参数化关节密度。这些参数化的关节密度包含了它们的边缘密度之间的随机依赖关系的所有信息,其参数向量xi可以看作是一个广义的相关参数。不像经典的相关系数,这个参数是一个足够的测量随机依赖,甚至表征更复杂的密度函数,如高斯混合。一旦这种结构和这些参数的边界已知,就可以找到包含所有可能密度函数的边界密度
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