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首页> 外文期刊>IEEE Transactions on Signal Processing >Information Geometric Approach to Multisensor Estimation Fusion
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Information Geometric Approach to Multisensor Estimation Fusion

机译:信息几何方法在多传感器估计融合中的应用

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摘要

Distributed estimation fusion is concerned with the combination of local estimates from multiple distributed sensors to produce a fused result. In this paper, we characterize local estimates as posterior probability densities, and assume that they all belong to a parametric family. Our starting point is to consider this family as a Riemannian manifold by introducing the Fisher information metric. From the perspective of information geometry, the fused density is formulated as an informative barycenter in the space of probability densities and sought by minimizing the sum of its squared geodesic distances from the local posterior densities. Under Gaussian assumptions, a geodesic projection (GP) method and a Siegel distance (SD) method in the information-geometric framework are proposed to tackle the problem. The GP method gives a fusion result in accord with the covariance intersection estimate but under an information-geometric criterion, while the SD method appears to achieve a better approximation of the informative barycenter. Numerical examples are provided to demonstrate the performance of the proposed estimation fusion algorithms.
机译:分布式估计融合与来自多个分布式传感器的局部估计的组合产生融合结果有关。在本文中,我们将局部估计值表征为后验概率密度,并假设它们都属于一个参数族。我们的出发点是通过引入Fisher信息度量将这个族视为黎曼流形。从信息几何学的角度来看,融合密度被公式化为概率密度空间中的信息重心,并通过最小化其与局部后验密度的平方测地距离之和来寻求。在高斯假设下,提出了信息几何框架中的测地线投影(GP)方法和Siegel距离(SD)方法来解决该问题。 GP方法给出的融合结果符合协方差相交估计,但在信息几何条件下,而SD方法似乎可以更好地逼近信息重心。提供了数值示例来证明所提出的估计融合算法的性能。

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