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Learning of Joint Attention from Detecting Causality Based on Transfer Entropy

机译:基于转移熵的因果关系检测中的联合注意力学习

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Joint attention, i.e., the behavior of looking at the same object that another person is looking at, plays an important role in human and human-robot communication. Previous synthetic studies focusing on modeling the early developmental process of joint attention have proposed learning methods without explicit instructions for joint attention. In these studies, the causal structure between a perception variable (a caregiver's face direction or an individual object) and an action variable (gaze shift to a caregiver's face or to an object location) was given in advance to learn joint attention. However, such a structure is expected to be found by the robot through interaction experiences. In this paper, we investigates how transfer entropy, an information theory measure, is used to quantify the causality inherent in face-to-face interaction. In computer simulations of human-robot interaction, we examine which pair of perceptions and actions is selected as the causal pair and show that the selected pairs can be used for learning a sensorimotor map for joint attention.
机译:共同注意,即看着另一个人正在看的同一对象的行为,在人与人-机器人通信中起着重要的作用。以前的集中于建模联合注意的早期发展过程的综合研究提出了没有明确注意联合注意的学习方法。在这些研究中,预先给出了感知变量(护理人员的面部方向或单个对象)与动作变量(注视移动至护理人员的面部或对象位置)之间的因果结构,以学习共同的注意力。但是,机器人有望通过交互体验找到这种结构。在本文中,我们研究了如何使用转移熵(一种信息论方法)来量化面对面互动中固有的因果关系。在人机交互的计算机模拟中,我们检查了选择哪对感知和动作作为因果对,并表明所选择的对可用于学习共同感觉的感觉运动图。

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