首页> 外国专利> EFFICIENT ADAPTION OF ROBOT CONTROL POLICY FOR NEW TASK USING META-LEARNING BASED ON META-IMITATION LEARNING AND META-REINFORCEMENT LEARNING

EFFICIENT ADAPTION OF ROBOT CONTROL POLICY FOR NEW TASK USING META-LEARNING BASED ON META-IMITATION LEARNING AND META-REINFORCEMENT LEARNING

机译:基于元模仿学习和元强化学习的元学习机器人控制策略的有效自适应

摘要

Techniques are disclosed that enable training a meta-learning model, for use in causing a robot to perform a task, using imitation learning as well as reinforcement learning. Some implementations relate to training the meta-learning model using imitation learning based on one or more human guided demonstrations of the task. Additional or alternative implementations relate to training the meta-learning model using reinforcement learning based on trials of the robot attempting to perform the task. Further implementations relate to using the trained meta-learning model to few shot (or one shot) learn a new task based on a human guided demonstration of the new task.
机译:本发明公开了使用模仿学习和强化学习来训练元学习模型以使机器人执行任务的技术。一些实现涉及使用基于一个或多个人工指导的任务演示的模仿学习来训练元学习模型。其他或替代的实现与使用基于机器人尝试执行任务的试验的强化学习来训练元学习模型有关。进一步的实现涉及使用经过训练的元学习模型,在人工指导下演示新任务,从而少量(或一次性)学习新任务。

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