Helping Robots Learn: A Human-Robot Master-Apprentice Model Using Demonstrations via Virtual Reality Teleoperation

Joseph DelPreto, J. Lipton, Lindsay M. Sanneman, Aidan J. Fay, Christopher K. Fourie, Changhyun Choi, D. Rus
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引用次数: 20

Abstract

As artificial intelligence becomes an increasingly prevalent method of enhancing robotic capabilities, it is important to consider effective ways to train these learning pipelines and to leverage human expertise. Working towards these goals, a master-apprentice model is presented and is evaluated during a grasping task for effectiveness and human perception. The apprenticeship model augments self-supervised learning with learning by demonstration, efficiently using the human’s time and expertise while facilitating future scalability to supervision of multiple robots; the human provides demonstrations via virtual reality when the robot cannot complete the task autonomously. Experimental results indicate that the robot learns a grasping task with the apprenticeship model faster than with a solely self-supervised approach and with fewer human interventions than a solely demonstration-based approach; 100% grasping success is obtained after 150 grasps with 19 demonstrations. Preliminary user studies evaluating workload, usability, and effectiveness of the system yield promising results for system scalability and deployability. They also suggest a tendency for users to overestimate the robot’s skill and to generalize its capabilities, especially as learning improves.
帮助机器人学习:通过虚拟现实远程操作演示的人机师徒模型
随着人工智能成为增强机器人能力的一种日益普遍的方法,重要的是要考虑有效的方法来训练这些学习管道并利用人类的专业知识。为了实现这些目标,提出了一个师徒模型,并在抓取任务期间评估了有效性和人类感知。学徒模型通过示范学习增强了自我监督学习,有效地利用了人类的时间和专业知识,同时促进了未来监督多个机器人的可扩展性;当机器人无法自主完成任务时,人类通过虚拟现实进行演示。实验结果表明,与单纯的自我监督方法相比,学徒模型学习抓取任务的速度更快,与单纯的基于演示的方法相比,人工干预更少;经过19次示范,150次抓握,100%成功抓握。初步的用户研究评估了系统的工作负载、可用性和有效性,对系统的可伸缩性和可部署性产生了有希望的结果。它们还表明,用户倾向于高估机器人的技能,并将其能力一般化,尤其是在学习能力提高的情况下。
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