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Modeling Self-Efficacy Across Age Groups with Automatically Tracked Facial Expression

机译:使用自动跟踪的面部表情对跨年龄段的自我效能进行建模

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Affect plays a central role in learning. Students' facial expressions are key indicators of affective states and recent work has increasingly used automated facial expression tracking technologies as a method of affect detection. However, there has not been an investigation of facial expressions compared across age groups. The present study collected facial expressions of college and middle school students in the Crystal Island game-based learning environment. Facial expressions were tracked using the Computer Expression Recognition Toolbox and models of self-efficacy for each age group highlighted differences in facial expressions. Age-specific findings such as these will inform the development of enriched affect models for broadening populations of learners using affect-sensitive learning environments.
机译:情感在学习中起着核心作用。学生的面部表情是情感状态的关键指标,最近的工作越来越多地使用自动面部表情跟踪技术作为情感检测方法。但是,尚未对跨年龄组的面部表情进行调查。本研究收集了基于Crystal Island游戏的学习环境中大学生和中学生的面部表情。使用计算机表情识别工具箱跟踪面部表情,每个年龄组的自我效能模型突出了面部表情的差异。诸如此类的针对特定年龄的发现,将有助于开发丰富的情感模型,以使用对情感敏感的学习环境来扩大学习者群体。

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