首页> 外文会议>ICONIP 2008;International conference on advances in neuro-information processing >Policy Gradient Learning of Cooperative Interaction with a Robot Using User's Biological Signals
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Policy Gradient Learning of Cooperative Interaction with a Robot Using User's Biological Signals

机译:使用用户的生物信号与机器人进行协作交互的策略梯度学习

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The potential market of robots that can helpfully work at home is increasing, and such robots are required to possess force and tactile sensors achieving dynamic and cooperative interactions with their users. Virtual realization of force/tactile sensors in robots, using user's biological signals such as EMG and postural information, is a versatile solution allowing high spatial resolution and degrees of freedom. In this paper, however, we first show the virtual force sensing approach does not work for a three-dimensional cooperative task in which the user is requested to move a load by an upper-limb of the user cooperatively with the robot, and discuss about inevitable problems. We then propose to apply policy gradient learning to overcome the problems, and demonstrate preliminary but promising learning results.
机译:可以在家里帮助工作的机器人的潜在市场正在增长,并且这种机器人需要拥有力和触觉传感器,以实现与用户的动态和协作式交互。利用用户的生物信号(例如EMG和姿势信息)在机器人中虚拟实现力/触觉传感器是一种通用解决方案,可实现高空间分辨率和自由度。但是,在本文中,我们首先显示了虚拟力感测方法不适用于三维协作任务,在三维协作任务中,用户的上肢要求用户与机器人协作移动负载,并讨论不可避免的问题。然后,我们建议应用策略梯度学习来克服这些问题,并展示初步但很有希望的学习成果。

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