学会用突发的外在灵活性掌握不可掌握的东西

Wen-Min Zhou, David Held
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引用次数: 21

摘要

一个简单的抓取器可以解决更复杂的操作任务,如果它能利用外部环境,比如把物体推到桌子或垂直的墙上,被称为“外在灵巧”。以往关于外在灵巧性的研究通常对接触进行了谨慎的假设,这对机器人的设计、运动和物理参数的变化施加了限制。在这项工作中,我们开发了一个基于强化学习(RL)的系统来解决这些限制。我们研究了“遮挡抓取”任务,其目的是在初始遮挡的构型中抓取物体;机器人需要将物体移动到可以实现抓取的位置。我们提出了一个无模型强化学习系统,该系统使用一个具有外在灵巧性的简单夹具成功地完成了这一任务。策略学习将物体推到墙上旋转,然后抓住它的紧急行为,而不需要额外的奖励条件。我们讨论了该系统的重要组成部分,包括RL问题的设计、多抓手训练和选拔以及自动课程的策略概括。最重要的是,在模拟中训练的策略是零射击转移到物理机器人。它用一个简单的抓手演示了动态和丰富的接触运动,该抓手可以在各种大小、密度、表面摩擦和形状的物体上进行推广,成功率为78%。视频可以在https://sites.google.com/view/grasp-ungraspable/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。
Learning to Grasp the Ungraspable with Emergent Extrinsic Dexterity
A simple gripper can solve more complex manipulation tasks if it can utilize the external environment such as pushing the object against the table or a vertical wall, known as"Extrinsic Dexterity."Previous work in extrinsic dexterity usually has careful assumptions about contacts which impose restrictions on robot design, robot motions, and the variations of the physical parameters. In this work, we develop a system based on reinforcement learning (RL) to address these limitations. We study the task of"Occluded Grasping"which aims to grasp the object in configurations that are initially occluded; the robot needs to move the object into a configuration from which these grasps can be achieved. We present a system with model-free RL that successfully achieves this task using a simple gripper with extrinsic dexterity. The policy learns emergent behaviors of pushing the object against the wall to rotate and then grasp it without additional reward terms on extrinsic dexterity. We discuss important components of the system including the design of the RL problem, multi-grasp training and selection, and policy generalization with automatic curriculum. Most importantly, the policy trained in simulation is zero-shot transferred to a physical robot. It demonstrates dynamic and contact-rich motions with a simple gripper that generalizes across objects with various size, density, surface friction, and shape with a 78% success rate. Videos can be found at https://sites.google.com/view/grasp-ungraspable/.
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