偶然性允许机器人识别导师,并从互动中学习

K. Lohan, K. Pitsch, K. Rohlfing, K. Fischer, J. Saunders, H. Lehmann, Chrystopher L. Nehaniv, B. Wrede
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引用次数: 23

摘要

针对人工系统向人类导师学习引出辅导行为的问题,我们在机器人平台iCub上实现了这一目标。为了与用户一起评估系统,我们考虑开发一个应急模块来引出辅导行为,然后我们通过在机器人平台iCub上实现该模块并在与用户的交互中对其进行评估。为了评估我们的系统,我们不仅考虑参与者的行为,而且考虑系统的日志文件作为因变量(正如[15]中为改进HRI设计所建议的那样)。我们进一步应用序列分析作为一种定性方法,为相互作用的序列结构提供微观分析见解。通过这种方式,我们能够研究机器人和导师的行为之间更密切的相互关系,以及它们如何相互反应。我们主要关注两种情况:在第一种情况下,系统模块对交互伙伴做出了适当的反应;在第二种情况下,应急模块未能发现导师。我们发现,应急模块使机器人能够与人类导师进行互动,导师会根据机器人的行为进行适当的指导和响应。相比之下,当机器人没有进行适当的响应交互时,导师会更多地转向物体,而较少地注视机器人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contingency allows the robot to spot the tutor and to learn from interaction
Aiming at artificial system learning from a human tutor elicit tutoring behavior, which we implemented on the robotic platform iCub. For the evaluation of the system with users, we considered a contingency module that is developed to elicit tutoring behavior, which we then evaluate by implementing this module on the robotic platform iCub and within an interaction with the users. For the evaluation of our system, we consider not only the participant's behavior but also the system's log-files as dependent variables (as it was suggested in [15] for the improvement of HRI design). We further applied Sequential Analysis as a qualitative method that provides micro-analytical insights into the sequential structure of the interaction. This way, we are able to investigate a closer interrelationship between robot's and tutor's actions and how they respond to each other. We focus on two cases: In the first case, the system module was reacting to the interaction partner appropriately; in the second case, the contingency module failed to spot the tutor. We found that the contingency module enables the robot to engage in an interaction with the human tutor who orients to the robot's conduct as appropriate and responsive. In contrast, when the robot did not engage in an appropriate responsive interaction, the tutor oriented more towards the object while gazing less at the robot.
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