Multi-Object Rearrangement with Monte Carlo Tree Search:A Case Study on
Planar Nonprehensile Sorting
IEEE/RJS International Conference on Intelligent RObots and Systems (IROS), 2019
Abstract
In this work, we address a planar non-prehensile sorting task. Here, a robot needs to push many densely packed objects belonging to different classes into a configuration where these classes are clearly separated from each other. To achieve this, we propose to employ Monte Carlo tree search equipped with a task-specific heuristic function. We evaluate the algorithm on various simulated and real-world sorting tasks. We observe that the algorithm is capable to reliably sort large numbers of convex and non-convex objects, as well as convex objects in the presence of immovable obstacles.
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