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Analysis and Comparison of Probability Transformations for Fusing Sensors with Uncertain Detection Performance

机译:检测性能不确定的融合传感器的概率转换分析与比较

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摘要

In a recent paper by Davey, Legg and El-Mahassni a way of fusing sensors with uncertain performance was outlined using the Transferable Belief Model (TBM) theory. It showed that if the target prior was uncertain, then the resulting fused mass was also uncertain. That is, some belief mass was assigned to the case that the presence or absence of a target was unknown. Various methods have been proposed to transform an uncertain belief function into a probability mass. This paper analyses the relationship between an important subset of these methods and compares the resulting probability masses with those obtained via Bayesian methods using random priors.
机译:在Davey,Legg和El-Mahassni的最新论文中,使用可转移信念模型(TBM)理论概述了一种融合性能不确定的传感器的方法。结果表明,如果目标先验不确定,则融合质量也不确定。即,将某种信念量分配给目标的存在与否未知的情况。已经提出了各种方法来将不确定的置信函数转换为概率质量。本文分析了这些方法的重要子集之间的关系,并将得到的概率质量与使用随机先验通过贝叶斯方法获得的概率质量进行了比较。

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