Interleaving motion in contact and in free space for planning under uncertainty

2017 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS)(2017)

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摘要
In this paper we present a planner that interleaves free-space motion with motion in contact to reduce uncertainty. The planner finds such motions by growing a search tree in the combined space of collision-free and contact configurations. The planner reasons efficiently about the accumulated uncertainty by factoring the state in a belief over configuration and a fully observable contact state. We show the uncertainty-reducing capabilities of the planner on manipulation benchmark from the POMDP literature. The planner scales up to more complex problems like manipulation under uncertainty in seven-dimensional configuration space. We validate our planner in simulation and on a real robot.
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关键词
seven-dimensional configuration space,free-space motion,planner reasons,accumulated uncertainty,fully observable contact state,uncertainty-reducing capabilities,planning under uncertainty,uncertainty reduction,search tree,collision-free configuration,contact configuration,POMDP literature,manipulation benchmark,manipulation under uncertainty
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