Surprise! Predicting Infant Visual Attention in a Socially Assistive Robot Contingent Learning Paradigm

Lauren Klein, L. Itti, Beth A. Smith, Marcelo R. Rosales, S. Nikolaidis, M. Matarić
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引用次数: 4

Abstract

Early intervention to address developmental disability in infants has the potential to promote improved outcomes in neurodevelopmental structure and function [1]. Researchers are starting to explore Socially Assistive Robotics (SAR) as a tool for delivering early interventions that are synergistic with and enhance human-administered therapy. For SAR to be effective, the robot must be able to consistently attract the attention of the infant in order to engage the infant in a desired activity. This work presents the analysis of eye gaze tracking data from five 6-8 month old infants interacting with a Nao robot that kicked its leg as a contingent reward for infant leg movement. We evaluate a Bayesian model of low-level surprise on video data from the infants’ head-mounted camera and on the timing of robot behaviors as a predictor of infant visual attention. The results demonstrate that over 67% of infant gaze locations were in areas the model evaluated to be more surprising than average. We also present an initial exploration using surprise to predict the extent to which the robot attracts infant visual attention during specific intervals in the study. This work is the first to validate the surprise model on infants; our results indicate the potential for using surprise to inform robot behaviors that attract infant attention during SAR interactions.
惊喜!在社会辅助机器人偶然学习范式中预测婴儿视觉注意
早期干预婴儿发育障碍有可能促进神经发育结构和功能的改善[1]。研究人员开始探索社会辅助机器人(SAR)作为一种工具,提供早期干预,协同和加强人类管理的治疗。为了使SAR有效,机器人必须能够始终吸引婴儿的注意,以便使婴儿参与所需的活动。这项工作分析了5个6-8个月大的婴儿与Nao机器人互动的眼球追踪数据,Nao机器人踢它的腿作为婴儿腿部运动的偶然奖励。我们根据婴儿头戴式摄像机的视频数据和机器人行为的时间作为婴儿视觉注意力的预测因子来评估低水平惊讶的贝叶斯模型。结果表明,超过67%的婴儿注视位置位于模型评估的比平均水平更令人惊讶的区域。我们还提出了一个初步的探索,使用惊喜来预测机器人在研究的特定间隔内吸引婴儿视觉注意力的程度。这项工作首次在婴儿身上验证了惊喜模型;我们的研究结果表明,在SAR交互过程中,使用惊喜来通知机器人吸引婴儿注意的行为的潜力。
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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