Abstract

Dempster–Shafer (D–S) evidence theory is more and more extensively applied in multi-sensor data fusion. However, it is still an open issue that how to effectively combine highly conflicting evidence in D–S evidence theory. In this article, a novel divergence measure, called pignistic probability transformation divergence, is proposed to measure the difference between evidences. The proposed pignistic probability transformation divergence can reflect the interaction between single-element and multi-element subsets by introducing the pignistic probability transformation, and satisfies the properties of boundedness, non-degeneracy, and symmetry. Moreover, the pignistic probability transformation divergence can degenerate as Jensen–Shannon divergence when mass function and the probability distribution are consistent. Based on the pignistic probability transformation divergence, a new multi-sensor data fusion method is presented. The proposed method takes advantage of pignistic probability transformation divergence to measure the discrepancy between evidences in order to obtain the credibility weights, and belief entropy to measure the uncertainty of the evidences in order to obtain the information volume weights, which can fully mine the potential information between evidences. Then, the credibility weights and the information volume weights are integrated to generate an appropriate weighted average evidence before using Dempster’s combination rule. The results of two application cases illustrate that the proposed method outperforms other related methods for combining highly conflicting evidences.

Highlights

  • Multi-sensor data fusion is an information modeling process in which data from multiple sensors are comprehensively analyzed to realize decision-making

  • Based on the pignistic probability transformation (PPT) divergence and the Deng entropy, a new multi-sensor data fusion method is presented. This method takes advantage of PPT divergence to measure the discrepancy between evidences in order to obtain the credibility weights, and the Deng entropy to measure the uncertainty of the evidences in order to obtain the information volume weights, which can fully mine the potential information between evidences

  • The proposed PPT divergence can reflect the interaction between single-element and multi-element subsets by introducing the PPT, and overcome the shortcomings of the belief Jensen–Shannon (BJS) divergence which treats multi-element subset as single-element subset for calculation

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Summary

Introduction

Multi-sensor data fusion is an information modeling process in which data from multiple sensors are comprehensively analyzed to realize decision-making. The information collected by a single sensor cannot be used to describe a certain system in multiple levels and perspectives, so the results are not convincing. Multi-sensor data fusion can process data from multiple sensors comprehensively to obtain more reliable results than a single sensor. It is widely applied in massive applications in the real world. College of Electronic Science and Technology, National University of Defense Technology, Changsha, China.

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