从人类和类人举重动作理解物体重量

A. Sciutti, Laura Patanè, F. Nori, G. Sandini
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引用次数: 44

摘要

人类非常善于与他人互动。这种天生的能力,除其他因素外,依赖于由运动观察介导的内隐交流。通过简单的动作观察,我们不仅可以很容易地推断出智能体的目标,还可以推断出他正在操纵的物体的一些“隐藏”属性,比如它的重量或温度。这种内隐理解是在童年早期发展起来的,据说是基于合作者之间共同的动作技能。在本文中,我们研究了人形机器人是否以及在何种条件下可能培养相同类型的自动通信,重点是在动作执行中提供关于物体重量的线索的能力。我们已经评估了人类的哪些动作属性是体重估计的基础,并相应地设计了一套简单的机器人举重行为。我们的研究结果表明,受试者在不需要训练的情况下,通过机器人观察可以达到与人类观察相当的体重识别效果。这些发现表明,有可能设计出非专家合作伙伴可以隐性理解的机器人行为,并且这种方法可能是获得更自然的人机协作的可行途径。
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Understanding Object Weight from Human and Humanoid Lifting Actions
Humans are very good at interacting with each other. This natural ability depends, among other factors, on an implicit communication mediated by motion observation. By simple action observation we can easily infer not only the goal of an agent, but often also some “hidden” properties of the object he is manipulating, as its weight or its temperature. This implicit understanding is developed early in childhood and is supposedly based on a common motor repertoire between the cooperators. In this paper, we have investigated whether and under which conditions it is possible for a humanoid robot to foster the same kind of automatic communication, focusing on the ability to provide cues about object weight with action execution. We have evaluated on which action properties weight estimation is based in humans and we have accordingly designed a set of simple robotic lifting behaviors. Our results show that subjects can reach a performance in weight recognition from robot observation comparable to that obtained during human observation, with no need of training. These findings suggest that it is possible to design robot behaviors that are implicitly understandable by nonexpert partners and that this approach could be a viable path to obtain more natural human-robot collaborations.
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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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审稿时长
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