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Task Refinement for Autonomous Robots Using Complementary Corrective Human Feedback

机译:自主机器人的补充修正人类反馈的任务细化

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摘要

A robot can perform a given task through a policy that maps its sensed state to appropriate actions. We assume that a hand-coded controller can achieve such a mapping only for the basic cases of the task. Refining the controller becomes harder and gets more tedious and error prone as the complexity of the task increases. In this paper, we present a new learning from demonstration approach to improve the robot's performance through the use of corrective human feedback as a complement to an existing hand-coded algorithm. The human teacher observes the robot as it performs the task using the hand-coded algorithm and takes over the control to correct the behavior when the robot selects a wrong action to be executed. Corrections are captured as new state-action pairs and the default controller output is replaced by the demonstrated corrections during autonomous execution when the current state of the robot is decided to be similar to a previously corrected state in the correction database. The proposed approac...
机译:机器人可以通过将其感测状态映射到适当动作的策略来执行给定任务。我们假设手动编码的控制器只能在任务的基本情况下实现这种映射。随着任务复杂性的提高,精制控制器变得更加困难,并且变得更加乏味且容易出错。在本文中,我们通过演示性方法提出了一种新的学习方法,该方法通过使用校正的人类反馈作为对现有手编码算法的补充来提高机器人的性能。当机器人使用手动编码算法执行任务时,人类老师会观察机器人,并在机器人选择错误的动作执行时接管控制以纠正行为。当机器人的当前状态被确定为与校正数据库中的先前校正状态相似时,校正将被捕获为新的状态-动作对,并且默认的控制器输出将在自主执行期间被演示的校正替换。拟议的方法...

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