Multi-Sensor Conflict Measurement and Information Fusion
Pan Wei, John E. Ball, Derek T. Anderson

TL;DR
This paper introduces a conflict measure for multi-sensor data that assesses sensor output overlap to improve fusion accuracy, especially when some sensors provide lower quality data.
Contribution
It proposes a novel conflict measure based on interval overlaps and a fusion algorithm that reduces the influence of conflicting sensors, enhancing fusion robustness.
Findings
Conflict measure effectively identifies sensor disagreement.
Fusion with conflict-based weighting improves accuracy.
Method tested on simulated and stereo camera data.
Abstract
In sensing applications where multiple sensors observe the same scene, fusing sensor outputs can provide improved results. However, if some of the sensors are providing lower quality outputs, the fused results can be degraded. In this work, a multi-sensor conflict measure is proposed which estimates multi-sensor conflict by representing each sensor output as interval-valued information and examines the sensor output overlaps on all possible n-tuple sensor combinations. The conflict is based on the sizes of the intervals and how many sensors output values lie in these intervals. In this work, conflict is defined in terms of how little the output from multiple sensors overlap. That is, high degrees of overlap mean low sensor conflict, while low degrees of overlap mean high conflict. This work is a preliminary step towards a robust conflict and sensor fusion framework. In addition, a…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Robotics and Sensor-Based Localization · Infrared Target Detection Methodologies
