Goal recognition using temporal emphasis

Konstantinos Theofilis, Chrystopher L. Nehaniv, K. Dautenhahn
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引用次数: 1

Abstract

The question of what to imitate is pivotal for imitation learning in robotics. When the robot's tutor is a naive user, it is very difficult for the embodied agent to account for the unpredictability of the tutor's behaviour. Preliminary results from a previous study suggested that the phenomenon of temporal emphasis, i.e., that tutors tend to keep the goal state of the demonstrated task stationary longer than the sub-states, can be used to recognise that task. In the present paper, the previous study is expanded and the existence of the phenomenon is investigated further. An improved experimental setup, using the iCub humanoid robot and naive users, was implemented. Analysis of the data showed that the phenomenon was detected in the majority of the cases, with a strongly significant result. In the few cases that the end state was not the one with the longest time span, it was a borderline second. Then, a very simple algorithm using a single binary criterion was used to show that the phenomenon exists and can be detected easily. That leads to the argument that humans may also be able to detect this phenomenon and use it for recognizing, as learners or emphasizing and teaching as tutors, the end goal, at least for tasks with clear and separate sub-goal sequences. A robot that implements this behavior could be able to perform better both as a tutor and as a learner when interacting with naive users.
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使用时间重点的目标识别
模仿什么是机器人模仿学习的关键问题。当机器人的导师是一个幼稚的用户时,嵌入代理很难解释导师行为的不可预测性。先前的一项研究的初步结果表明,时间强调的现象,即导师倾向于保持演示任务的目标状态比子状态稳定的时间更长,可以用来识别任务。本文对前人的研究进行了拓展,进一步探讨了该现象的存在性。采用iCub人形机器人和天真的用户,实现了改进的实验设置。对数据的分析表明,在大多数情况下都发现了这种现象,结果非常显著。在少数情况下,最终状态不是具有最长时间跨度的状态,它是一个边缘秒。然后,使用一个非常简单的算法,使用一个单一的二值准则来证明这种现象的存在,并且可以很容易地检测到。这导致了一种观点,即人类可能也能够检测到这种现象,并利用它来识别最终目标,作为学习者,或者作为导师,强调和教学最终目标,至少对于具有清晰而独立的子目标序列的任务。实现这种行为的机器人在与幼稚的用户交互时,无论是作为导师还是作为学习者,都能表现得更好。
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