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Reinforcement Learning to Adjust Robot Movements to New Situations

机译:强化学习以使机器人的运动适应新情况

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Many complex robot motor skills can be represented using elementary movements, and there exist efficient techniques for learning parametrized motor plans using demonstrations and self-improvement. However with current techniques, in many cases, the robot currently needs to learn a new elementary movement even if a parametrized motor plan exists that covers a related situation. A method is needed that modulates the elementary movement through the meta-parameters of its representation. In this paper, we describe how to learn such mappings from circumstances to meta-parameters using reinforcement learning. In particular we use a kernelized version of the reward-weighted regression. We show two robot applications of the presented setup in robotic domains; the generalization of throwing movements in darts, and of hitting movements in table tennis. We demonstrate that both tasks can be learned successfully using simulated and real robots.
机译:许多复杂的机器人运动技能可以通过基本运动来表示,并且存在通过演示和自我完善来学习参数化运动计划的有效技术。但是,使用当前技术,在许多情况下,即使存在涵盖相关情况的参数化电机计划,机器人当前仍需要学习新的基本运动。需要一种通过其表示的元参数来调节基本运动的方法。在本文中,我们描述了如何使用强化学习来学习从环境到元参数的映射。特别是,我们使用奖励加权回归的核化版本。我们在机器人领域展示了所介绍设置的两个机器人应用。飞镖投掷动作和乒乓球击打动作的一般化。我们证明,使用模拟和真实的机器人可以成功学习这两个任务。

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