Reinforcement learning of shared control for dexterous telemanipulation: Application to a page turning skill

Takamitsu Matsubara, Takahiro Hasegawa, Kenji Sugimoto
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引用次数: 4

Abstract

The ultimate goal of this study is to develop a method that can accomplish dexterous manipulation of various non-rigid objects by a robotic hand. In this paper, we propose a novel model-free approach using reinforcement learning to learn a shared control policy for dexterous telemanipulation by a human operator. A shared control policy is a probabilistic mapping from the human operator's (master) action and complementary sensor data to the robot (slave) control input for robot actuators. Through the learning process, our method can optimize the shared control policy so that it cooperates to the operator's policy and compensates the lack of sensory information of the operator using complementary sensor data to enhance the dexterity. To validate our method, we adopted a page turning task by telemanipulation and developed an experimental platform with a paper page model and a robot fingertip in simulation. Since the human operator cannot perceive the tactile information of the robot, it may not be as easy as humans do directly. Experimental results suggest that our method is able to learn task-relevant shared control for flexible and enhanced dexterous manipulation by a teleoperated robotic fingertip without tactile feedback to the operator.
灵巧遥控操作共享控制的强化学习:在翻页技巧中的应用
本研究的最终目标是开发一种方法,可以实现灵巧操纵各种非刚性物体的机器人手。在本文中,我们提出了一种新的无模型方法,使用强化学习来学习由人类操作者灵巧操作的共享控制策略。共享控制策略是从人类操作员(主)动作和补充传感器数据到机器人执行器(从)控制输入的概率映射。通过学习过程,优化共享控制策略,使其与操作者的策略相配合,并利用互补的传感器数据补偿操作者感官信息的不足,提高了灵巧性。为了验证我们的方法,我们采用了远程操作翻页任务,并开发了一个基于纸质页面模型和机器人指尖仿真的实验平台。由于人类操作人员无法感知机器人的触觉信息,因此可能不像人类那样容易直接感知。实验结果表明,我们的方法能够在没有触觉反馈的情况下,通过远程操作机器人指尖学习与任务相关的共享控制,从而实现灵活和增强的灵巧操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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