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Distributed Simultaneous Localisation and Auto-Calibration Using Gaussian Belief Propagation

Riku Murai, Ignacio Alzugaray, Paul H J Kelly, Andrew J Davison

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Abstract

We present a novel scalable, fully distributed, and online method for simultaneous localisation and extrinsic cal- ibration for multi-robot setups. Individual a priori unknown robot poses are probabilistically inferred as robots sense each other while simultaneously calibrating their sensors and markers extrinsic using Gaussian Belief Propagation. In the presented experiments, we show how our method not only yields accu- rate robot localisation and auto-calibration but also is able to perform under challenging circumstances such as highly noisy measurements, significant communication failures or limited communication range.

Index terms

Distributed Robot Systems Localization Calibration and Identification