Fault-tolerant probabilistic sensor fusion for Multi-Agent Systems

Abdolkarim Pahliani, M. Spaan, P. Lima
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引用次数: 3

Abstract

In this work we focus on the problem of probabilistic sensor fusion in Multi-Robot Multi-Sensor Systems (MRMS), taking into account that some sensors might fail or produce erroneous information. We study fusion methods that can successfully cope with situations of agreement, partial agreement, and disagreement between sensors. We define a set of specifications for fusion methods appropriate for MRMS environments. In light of these specifications, we review two popular algorithms for probabilistic sensor fusion, Linear Opinion Pool (LOP) and Logarithmic Opinion Pool (LGP). To overcome difficulties of applying them to a MRMS setting, a new method is introduced, p-norm Opinion Pool (POP). Comparing to LOP and LGP, POP is more compatible with the specifications and more flexible, successfully handling situations of agreement and disagreement between sensors. Through simulation and real-world experiments, we check performance of the POP and compare it with LOP and LGP. We also implement a real-world experiment through which the performance of POP is examined.
多智能体系统的容错概率传感器融合
在这项工作中,我们关注多机器人多传感器系统(MRMS)中的概率传感器融合问题,考虑到一些传感器可能失效或产生错误信息。我们研究了能够成功处理传感器之间一致、部分一致和不一致情况的融合方法。我们为适合MRMS环境的融合方法定义了一组规范。根据这些规范,我们回顾了两种流行的概率传感器融合算法,线性意见池(LOP)和对数意见池(LGP)。为了克服将它们应用于MRMS设置的困难,引入了一种新的方法,p-范数意见池(POP)。与LOP和LGP相比,POP具有更强的规格兼容性和更大的灵活性,能够成功处理传感器之间一致和不一致的情况。通过仿真和实际实验,验证了POP的性能,并与LOP和LGP进行了比较。我们还实现了一个真实世界的实验,通过该实验来检验POP的性能。
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