Gesture formation: A crucial building block for cognitive-based Human–Robot Partnership

Pietro Morasso
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引用次数: 5

Abstract

The next generation of robotic agents, to employed both in industrial and service robotic applications, will be characterized by a high degree of Human–Robot Partnership that implies, for example, sharing common objectives, bidirectional flow of information, capability to learn from each other, and availability to mutual training. Moreover, there is a widespread feeling in the research community that probably Humans will not accept Robots as trustable Partners if they cannot ascribe some form of awareness and true understanding to them. This means that, in addition to the incremental improvements of Robotic-Bodyware, there will be the need for a substantial jump of the Robotic-Cogniware, namely a new class of Cognitive Architectures for Robots (CARs) that match the requirements and specific constraints of Human–Robot Partnership. The working hypothesis that underlies this paper is that such class of CARs must be bio-inspired, not in the sense of fine-grain imitation of neurobiology but the large framework of embodied cognition. In our opinion, trajectory/gesture formation should be one of the building blocks of bio-inspired CARs because biological motion is a fundamental channel of inter-human partnership, a true body language that allows mutual understanding of intentions. Moreover, one of the main concepts of embodied cognition, related to the importance of motor imagery, is that real (or overt) actions and mental (or covert) actions are generated by the same internal model and support the cognitive capabilities of human skilled subjects. The paper reviews the field of human trajectory formation, revealing in a novel manner the fil rouge that runs through motor neuroscience and proposes a computational framework for a robotic formulation that also addresses the Degrees of Freedom Problem and is formulated in terms of the force-field-based Passive Motion Paradigm.

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手势形成:基于认知的人机伙伴关系的重要组成部分
在工业和服务机器人应用中使用的下一代机器人代理将以高度的人-机器人伙伴关系为特征,这意味着,例如,共享共同目标,双向信息流动,相互学习的能力,以及相互培训的可用性。此外,在研究界有一种普遍的感觉,即如果人类不能赋予机器人某种形式的意识和真正的理解,他们可能不会接受机器人作为可信赖的伙伴。这意味着,除了机器人车身的增量改进之外,还需要机器人认知软件的实质性飞跃,即一种新的机器人认知架构(CARs),它符合人机伙伴关系的要求和特定约束。这篇论文的工作假设是,这类car一定是受生物启发的,不是在神经生物学的精细模仿意义上,而是在具身认知的大框架上。在我们看来,轨迹/手势的形成应该是仿生car的基石之一,因为生物运动是人与人之间伙伴关系的基本渠道,是一种真正的肢体语言,允许相互理解意图。此外,与运动意象的重要性相关的具身认知的一个主要概念是,真实(或公开)行为和心理(或隐蔽)行为是由相同的内部模型产生的,并支持人类熟练受试者的认知能力。本文回顾了人类轨迹形成领域,以一种新颖的方式揭示了贯穿运动神经科学的过程,并提出了一个机器人公式的计算框架,该框架也解决了自由度问题,并根据基于力场的被动运动范式进行了制定。
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8.40
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