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A new divergence measure for basic probability assignment and its applications in extremely uncertain environments

机译:基本概率分配的新发散度量及其在极端不确定环境中的应用

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摘要

Information fusion under extremely uncertain environments is an important issue in pattern classification and decision-making problems. The Dempster-Shafer evidence theory (D-S theory) is more and more extensively applied in dealing with uncertain information. However, the results contrary to common sense are often obtained when combining different evidence using Dempster's combination rule. How to measure the difference between different evidence is still an open issue. In this paper, a new divergence is proposed based on the Kullback-Leibler divergence to measure the difference between different basic probability assignments (BPAs). Numerical examples are used to illustrate the computational process of the proposed divergence. Then, the similarity for different BPAs is also defined based on the proposed divergence. The basic knowledge about pattern recognition is introduced, and a new classification algorithm is presented using the proposed divergence and similarity under extremely uncertain environments. The effectiveness of the classification algorithm is illustrated by a small example handling robot sensing. The proposed method is motivated by the urgent need to develop intelligent systems, such as sensor-based data fusion manipulators, which are required to work in complicated, extremely uncertain environments. Sensory data satisfy the conditions (1) fragmentary and (2) collected from multiple levels of resolution.
机译:在极其不确定的环境下,信息融合是模式分类和决策问题中的重要问题。 Dempster-Shafer证据理论(D-S理论)在处理不确定信息方面越来越广泛地应用。但是,当使用Dempster的合并规则合并不同的证据时,通常会获得与常识相反的结果。如何衡量不同证据之间的差异仍然是一个悬而未决的问题。在本文中,基于Kullback-Leibler散度提出了一种新的散度,用于测量不同基本概率分配(BPA)之间的差异。数值例子用来说明所提出的散度的计算过程。然后,还基于提议的差异定义了不同BPA的相似性。介绍了有关模式识别的基本知识,并在极度不确定的环境下,利用所提出的散度和相似度,提出了一种新的分类算法。分类算法的有效性通过一个处理机器人感测的小例子说明。迫切需要开发智能系统(例如基于传感器的数据融合操纵器),从而推动这种方法的发展,这些系统需要在复杂,极其不确定的环境中工作。感官数据满足条件(1)零碎和(2)从多个分辨率级别收集。

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