DexPoint:模拟到真实灵巧操作的可推广点云强化学习

Yuzhe Qin, Binghao Huang, Zhao-Heng Yin, Hao Su, Xiaolong Wang
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引用次数: 24

摘要

我们提出了一个模拟到真实的灵巧操作框架,它可以推广到现实世界中相同类别的新对象。该框架的关键是利用点云输入和灵巧的手来训练操作策略。我们提出了两种新技术来实现多对象的联合学习和模拟到真实的泛化:(i)使用想象的手点云作为增强输入;(2)设计新颖的基于接触的奖励。我们在模拟和现实世界中使用快板手对我们的方法进行了经验评估。据我们所知,这是第一个基于政策学习的框架,用灵巧的双手实现了这样的泛化结果。我们的项目页面可访问https://yzqin.github.io/dexpoint
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DexPoint: Generalizable Point Cloud Reinforcement Learning for Sim-to-Real Dexterous Manipulation
We propose a sim-to-real framework for dexterous manipulation which can generalize to new objects of the same category in the real world. The key of our framework is to train the manipulation policy with point cloud inputs and dexterous hands. We propose two new techniques to enable joint learning on multiple objects and sim-to-real generalization: (i) using imagined hand point clouds as augmented inputs; and (ii) designing novel contact-based rewards. We empirically evaluate our method using an Allegro Hand to grasp novel objects in both simulation and real world. To the best of our knowledge, this is the first policy learning-based framework that achieves such generalization results with dexterous hands. Our project page is available at https://yzqin.github.io/dexpoint
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