Authors
Neil T Dantam, Zachary K Kingston, Swarat Chaudhuri, Lydia E Kavraki
Publication date
2018/9
Journal
The International Journal of Robotics Research
Volume
37
Issue
10
Pages
1134-1151
Publisher
SAGE Publications
Description
We present a new constraint-based framework for task and motion planning (TMP). Our approach is extensible, probabilistically complete, and offers improved performance and generality compared with a similar, state-of-the-art planner. The key idea is to leverage incremental constraint solving to efficiently incorporate geometric information at the task level. Using motion feasibility information to guide task planning improves scalability of the overall planner. Our key abstractions address the requirements of manipulation and object rearrangement. We validate our approach on a physical manipulator and evaluate scalability on scenarios with many objects and long plans, showing order-of-magnitude gains compared with the benchmark planner and improved scalability from additional geometric guidance. Finally, in addition to describing a new method for TMP and its implementation on a physical robot, we also put …
Total citations
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Scholar articles
NT Dantam, ZK Kingston, S Chaudhuri, LE Kavraki - The International Journal of Robotics Research, 2018