UniDexGrasp++: Improving Dexterous Grasping Policy Learning via Geometry-aware Curriculum and Iterative Generalist-Specialist Learning
We propose a novel, object-agnostic method for learning a universal policy for dexterous object grasping from realistic point cloud observations and proprioceptive information under a table-top setting, namely UniDexGrasp++. To address the challenge of learning the vision-based policy across thousan...
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Zusammenfassung: | We propose a novel, object-agnostic method for learning a universal policy
for dexterous object grasping from realistic point cloud observations and
proprioceptive information under a table-top setting, namely UniDexGrasp++. To
address the challenge of learning the vision-based policy across thousands of
object instances, we propose Geometry-aware Curriculum Learning (GeoCurriculum)
and Geometry-aware iterative Generalist-Specialist Learning (GiGSL) which
leverage the geometry feature of the task and significantly improve the
generalizability. With our proposed techniques, our final policy shows
universal dexterous grasping on thousands of object instances with 85.4% and
78.2% success rate on the train set and test set which outperforms the
state-of-the-art baseline UniDexGrasp by 11.7% and 11.3%, respectively. |
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DOI: | 10.48550/arxiv.2304.00464 |