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simmediumgraspingmetric · varies

Learning Dexterous Manipulation from Exemplar Object Trajectories and Pre-Grasps

Description

Learning diverse dexterous manipulation behaviors with assorted objects remains an open grand challenge. While policy learning methods offer a powerful avenue to attack this problem, they require extensive per-task engineering and algorithmic tuning. This paper seeks to escape these constraints, by developing a Pre-Grasp informed Dexterous Manipulation (PGDM) framework that generates diverse dexterous manipulation behaviors, without any task-specific reasoning or hyper-parameter tuning. At the c

Source

http://arxiv.org/abs/2209.11221v2