设计一个机器人,可以从父母的示范中学习动作

Y. Nagai, C. Muhl, K. Rohlfing
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引用次数: 47

摘要

如何教机器人动作以及机器人如何学习动作是机器人学习系统设计中需要讨论的一个重要问题。受人类亲子互动的启发,我们假设一个拥有类似婴儿能力的机器人可以利用父母的适当教学。众所周知,父母会显著改变他们的婴儿导向动作,而不是成人导向的动作,例如在动作之间做更多的停顿,这被认为有助于婴儿对动作的理解。作为第一步,我们使用原始注意模型分析了父母的行为。基于视觉显著性的模型可以在不使用任何关于动作或环境的知识的情况下检测场景中可能的重要位置。我们的统计分析表明,该模型能够提取动作的有意义的结构,例如动作的初始和最终状态以及它们的显著状态变化,这些变化通过亲代动作修改来突出。我们进一步讨论了设计一个能诱导亲子式教学的类婴儿机器人的问题,并提出了一个基于显著性模型的人机交互实验来评估我们的机器人仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward designing a robot that learns actions from parental demonstrations
How to teach actions to a robot as well as how a robot learns actions is an important issue to be discussed in designing robot learning systems. Inspired by human parent-infant interaction, we hypothesize that a robot equipped with infant-like abilities can take advantage of parental proper teaching. Parents are known to significantly alter their infant-directed actions versus adult-directed ones, e.g. make more pauses between movements, which is assumed to aid the infants' understanding of the actions. As a first step, we analyzed parental actions using a primal attention model. The model based on visual saliency can detect likely important locations in a scene without employing any knowledge about the actions or the environment. Our statistical analysis revealed that the model was able to extract meaningful structures of the actions, e.g. the initial and final state of the actions and the significant state changes in them, which were highlighted by parental action modifications. We further discuss the issue of designing an infant-like robot that can induce parent-like teaching, and present a human-robot interaction experiment evaluating our robot simulation equipped with the saliency model.
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