Embodied Attention in Word-Object Mapping: A Developmental Cognitive Robotics Model

Luca Raggioli, A. Cangelosi
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引用次数: 2

Abstract

Developmental Robotics models provide useful tools to study and understand the language learning process in infants and robots. These models allow us to describe key mechanisms of language development, such as statistical learning, the role of embodiment, and the impact of the attention payed to an object while learning its name. Robots can be particularly well suited for this type of problems, because they cover both a physical manipulation of the environment and mathematical modeling of the temporal changes of the learned concepts. In this work we present a computational representation of the impact of embodiment and attention on word learning, relying on sensory data collected with a real robotic agent in a real world scenario. Results show that the cognitive architecture designed for this scenario is able to capture the changes underlying the moving object in the field of view of the robot. The architecture successfully handles the temporal relationship in moving items and manages to show the effects of the embodied attention on word-object mapping.
词-对象映射中的具身注意:一个发展的认知机器人模型
发展机器人模型为研究和理解婴儿和机器人的语言学习过程提供了有用的工具。这些模型使我们能够描述语言发展的关键机制,例如统计学习,体现的作用,以及在学习物体名称时对其注意力的影响。机器人可以特别适合这类问题,因为它们既涵盖了环境的物理操作,也涵盖了学习概念的时间变化的数学建模。在这项工作中,我们提出了体现和注意力对单词学习影响的计算表示,依赖于在真实世界场景中由真实机器人代理收集的感官数据。结果表明,为该场景设计的认知架构能够捕捉机器人视野中移动物体的变化。该结构成功地处理了物体移动过程中的时间关系,并成功地展示了具身注意对词-物映射的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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