Sensory Steering for Sampling-Based Motion Planning

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GRASP
Kodlab
Electrical and Computer Engineering
Engineering
Systems Engineering

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This work was supported in part by AFRL grant FA865015D1845 (subcontract 669737–1).

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Sampling-based algorithms offer computationally efficient, practical solutions to the path finding problem in high-dimensional complex configuration spaces by approximately capturing the connectivity of the underlying space through a (dense) collection of sample configurations joined by simple local planners. In this paper, we address a long-standing bottleneck associated with the difficulty of finding paths through narrow passages. Whereas most prior work considers the narrow passage problem as a sampling issue (and the literature abounds with heuristic sampling strategies) very little attention has been paid to the design of new effective local planners. Here, we propose a novel sensory steering algorithm for sampling- based motion planning that can “feel” a configuration space locally and significantly improve the path planning performance near difficult regions such as narrow passages. We provide computational evidence for the effectiveness of the proposed local planner through a variety of simulations which suggest that our proposed sensory steering algorithm outperforms the standard straight-line planner by significantly increasing the connectivity of random motion planning graphs. For more information: Kod*lab

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2017-01-01

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Departmental Papers (ESE)

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2023-05-17T20:26:26.000

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@InProceedings{Arslan_pacelli_koditschek, title={Sensory steering for sampling-based motion planning}, author={Omur Arslan and Vincent Pacelli and Daniel E. Koditschek}, booktitle={IEEE/RSJ International Conference on Intelligent Robots and Systems}, year={2017}, pages={3708--3715} }

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