交互式抓取策略强化学习中物体几何的高效表示

Malte Mosbach, Sven Behnke
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引用次数: 2

摘要

抓取不同形状和大小的物体——这是人类毫不费力的基本技能——在机器人领域仍然是一项具有挑战性的任务。尽管基于模型的方法可以预测已知对象模型的稳定抓取配置,但它们难以推广到新的对象,并且通常以非交互式开环方式操作。在这项工作中,我们提出了一个强化学习框架,通过连续控制拟人化机械手来学习各种几何上不同的现实世界物体的交互抓取。我们探索了物体几何的几个显式表示作为策略的输入。此外,我们建议通过带符号的距离隐式地通知策略,并表明这自然适合于通过形状奖励组件指导搜索。最后,我们证明了所提出的框架甚至能够在更具挑战性的条件下学习,例如从杂乱的垃圾箱中有针对性地抓取。在这种情况下,出现了必要的预抓取行为,如物体重新定向和对环境约束的利用。学习互动政策的视频可以在https://maltemosbach.github.io/geometry_aware_grasping policies上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Representations of Object Geometry for Reinforcement Learning of Interactive Grasping Policies
Grasping objects of different shapes and sizes-a foundational, effortless skill for humans-remains a challenging task in robotics. Although model-based approaches can predict stable grasp configurations for known object models, they struggle to generalize to novel objects and often operate in a non-interactive open-loop manner. In this work, we present a reinforcement learning framework that learns the interactive grasping of various geometrically distinct real-world objects by continuously controlling an anthropomorphic robotic hand. We explore several explicit representations of object geometry as input to the policy. Moreover, we propose to inform the policy implicitly through signed distances and show that this is naturally suited to guide the search through a shaped reward component. Finally, we demonstrate that the proposed framework is able to learn even in more challenging conditions, such as targeted grasping from a cluttered bin. Necessary pre-grasping behaviors such as object reorientation and utilization of environmental constraints emerge in this case. Videos of learned interactive policies are available at https://maltemosbach.github.io/geometry_aware_grasping policies.
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