Towards Industrial Robot Learning from Demonstration

W. Ko, Yan Wu, K. Tee, J. Buchli
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引用次数: 23

Abstract

Learning from demonstration (LfD) provides an easy and intuitive way to program robot behaviours, potentially reducing development time and costs tremendously. This is especially appealing for manufacturers interested in using industrial manipulators for high-mix production, since this technique enables fast and flexible modifications to the robot behaviours and is thus suitable to teach the robot to perform a wide range of tasks regularly. We define a set of criteria to assess the applicability of state-of-the-art LfD frameworks in the industry. A three-stage LfD method is then proposed, which incorporates human-in-the-loop adaptation to iteratively correct a batch-learned policy to improve accuracy and precision. The system will then transit to open-loop execution of the task to enhance production speed, by removing the human teacher from the feedback loop. The proposed LfD framework addresses all criteria set in this work.
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从示范走向工业机器人学习
从演示中学习(LfD)提供了一种简单直观的方法来编程机器人的行为,潜在地减少了开发时间和成本。这对于有兴趣使用工业机械手进行高混合生产的制造商尤其有吸引力,因为这种技术可以快速灵活地修改机器人的行为,因此适合教机器人定期执行各种任务。我们定义了一套标准来评估最先进的LfD框架在行业中的适用性。然后提出了一种三阶段LfD方法,该方法结合人在环自适应来迭代修正批量学习策略,以提高准确性和精密度。然后,系统将过渡到开环执行任务,通过将人类教师从反馈回路中移除来提高生产速度。拟议的LfD框架涉及本工作中设定的所有标准。
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