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Enhanced stochastic mobility prediction with multi-output Gaussian processes
Authors
R Fitch
ST Lui
T Peynot
S Sukkarieh
Publication date
1 January 2015
Publisher
'Springer Science and Business Media LLC'
Doi
Cite
Abstract
© Springer International Publishing Switzerland 2016. Outdoor robots such as planetary rovers must be able to navigate safely and reliably in order to successfully perform missions in remote or hostile environments. Mobility prediction is critical to achieving this goal due to the inherent control uncertainty faced by robots traversing natural terrain. We propose a novel algorithm for stochastic mobility prediction based on multi-output Gaussian process regression. Our algorithm considers the correlation between heading and distance uncertainty and provides a predictive model that can easily be exploited by motion planning algorithms. We evaluate our method experimentally and report results from over 30 trials in a Mars-analogue environment that demonstrate the effectiveness of our method and illustrate the importance of mobility prediction in navigating challenging terrain
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oai:eprints.qut.edu.au:74587
Last time updated on 08/02/2018
Crossref
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info:doi/10.1007%2F978-3-319-0...
Last time updated on 03/08/2021
OPUS - University of Technology Sydney
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oai:opus.lib.uts.edu.au:10453/...
Last time updated on 18/10/2019