Detection of Online Student Behavior Using Emotion and Eye/Head Movement

Yunfei Liu, Long Fai Cheung, Wa Lap Lam, Henry C. B. Chan
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Abstract

During the COVID-19 pandemic of the past few years, online/hybrid teaching has been used around the world, posing challenges for teachers and students alike. One challenge is related to monitoring online student behavior. Facial recognition technologies offer a promising solution, providing useful references for teachers. In this paper, we present our initial work on using emotion, and eye and head movement to detect online student behavior. In particular, we study how these methods can be used to detect five common classroom behaviors: reading slides, writing notes, thinking, checking phones, and engaging in classroom activities, through test cases with the aim of identifying key characteristics. By using the aforementioned methods collectively, more accurate detection results can be achieved. The findings (e.g., key characteristics) should provide valuable insights into understanding online student behavior, and future machine learning work in particular.
基于情绪和眼/头运动的在线学生行为检测
在过去几年的COVID-19大流行期间,世界各地都在使用在线/混合教学,这给教师和学生都带来了挑战。其中一个挑战与监控在线学生行为有关。人脸识别技术提供了一个很有前景的解决方案,为教师提供了有用的参考。在本文中,我们介绍了我们使用情感,眼睛和头部运动来检测在线学生行为的初步工作。我们特别研究了如何使用这些方法来检测五种常见的课堂行为:阅读幻灯片、写笔记、思考、查看手机和参与课堂活动,通过测试用例来识别关键特征。综合使用上述方法,可以获得更准确的检测结果。这些发现(例如,关键特征)应该为理解在线学生行为,特别是未来的机器学习工作提供有价值的见解。
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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