An anytime algorithm integrates sampling-based motion planning with hierarchical search for optimal object placement poses in cluttered environments.
Object Placement Planning and Optimization for Robot Manipulators
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abstract
We address the problem of motion planning for a robotic manipulator with the task to place a grasped object in a cluttered environment. In this task, we need to locate a collision-free pose for the object that a) facilitates the stable placement of the object, b) is reachable by the robot manipulator and c) optimizes a user-given placement objective. Because of the placement objective, this problem is more challenging than classical motion planning where the target pose is defined from the start. To solve this task, we propose an anytime algorithm that integrates sampling-based motion planning for the robot manipulator with a novel hierarchical search for suitable placement poses. We evaluate our approach on a dual-arm robot for two different placement objectives, and observe its effectiveness even in challenging scenarios.
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cs.RO 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Object Placement Planning and Optimization for Robot Manipulators
An anytime algorithm integrates sampling-based motion planning with hierarchical search for optimal object placement poses in cluttered environments.