Multi-Objective Autonomous Exploration on Real-Time Continuous Occupancy Maps
Autonomous exploration in unknown environments using mobile robots is the pillar of many robotic applications. Existing exploration frameworks either select the nearest geometric frontier or the nearest information-theoretic frontier. However, just because a frontier itself is informative does not n...
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Zusammenfassung: | Autonomous exploration in unknown environments using mobile robots is the
pillar of many robotic applications. Existing exploration frameworks either
select the nearest geometric frontier or the nearest information-theoretic
frontier. However, just because a frontier itself is informative does not
necessarily mean that the robot will be in an informative area after reaching
that frontier. To fill this gap, we propose to use a multi-objective variant of
Monte-Carlo tree search that provides a non-myopic Pareto optimal action
sequence leading the robot to a frontier with the greatest extent of unknown
area uncovering. We also adopted Bayesian Hilbert Map (BHM) for continuous
occupancy mapping and made it more applicable to real-time tasks. |
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DOI: | 10.48550/arxiv.2111.00067 |