通过面部表情识别探究学生在科学学习中的情感参与度

IF 3.3 1区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Journal of Science Education and Technology Pub Date : 2024-08-14 DOI:10.1007/s10956-024-10143-7
Xiaoyu Tang, Yayun Gong, Yang Xiao, Jianwen Xiong, Lei Bao
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引用次数: 0

摘要

学生在科学课堂上的参与度是进行有效教学的基本要素。然而,目前流行的测量学生情感学习参与度(ELE)的方法依赖于自我报告,这种方法因可能存在偏差和缺乏跟踪短期学习互动效果所需的细粒度时间解决方案而受到批评。最近的研究表明,学生的面部表情可以作为他们学习情绪的外部表征。因此,本研究提出了一种机器学习方法,以有效测量真实课堂中学生的 ELE。具体地说,通过结合愉悦-不悦、唤醒-非唤醒和优势-劣势(PAD)情绪模型,开发了基于多尺度感知网络(MP-FERS)的面部表情识别系统。数据收集自 108 名学生的六节物理课视频。同时,还收集了学生的学业记录和自我报告的学习参与度。结果表明,MP-FERS 测量的学生 ELE 是学业成绩的重要预测指标,比自我报告的 ELE 更能反映真实的学习状况。此外,MP-FERS 还能提供精细的时间分辨率,跟踪学生在不同教学环境(如以教师为中心或以学生为中心的课堂活动)下的 ELE 变化。本研究的结果证明了 MP-FERS 在研究学生情感学习参与方面的有效性和实用性。
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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Facial Expression Recognition for Probing Students’ Emotional Engagement in Science Learning

Student engagement in science classroom is an essential element for delivering effective instruction. However, the popular method for measuring students’ emotional learning engagement (ELE) relies on self-reporting, which has been criticized for possible bias and lacking fine-grained time solution needed to track the effects of short-term learning interactions. Recent research suggests that students’ facial expressions may serve as an external representation of their emotions in learning. Accordingly, this study proposes a machine learning method to efficiently measure students’ ELE in real classroom. Specifically, a facial expression recognition system based on a multiscale perception network (MP-FERS) was developed by combining the pleasure-displeasure, arousal-nonarousal, and dominance-submissiveness (PAD) emotion models. Data were collected from videos of six physics lessons with 108 students. Meanwhile, students’ academic records and self-reported learning engagement were also collected. The results show that students’ ELE measured by MP-FERS was a significant predictor of academic achievement and a better indicator of true learning status than self-reported ELE. Furthermore, MP-FERS can provide fine-grained time resolution on tracking the changes in students’ ELE in response to different teaching environments such as teacher-centered or student-centered classroom activities. The results of this study demonstrate the validity and utility of MP-FERS in studying students’ emotional learning engagement.

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来源期刊
Journal of Science Education and Technology
Journal of Science Education and Technology EDUCATION, SCIENTIFIC DISCIPLINES-
CiteScore
9.40
自引率
4.50%
发文量
45
审稿时长
6-12 weeks
期刊介绍: Journal of Science Education and Technology is an interdisciplinary forum for the publication of original peer-reviewed, contributed and invited research articles of the highest quality that address the intersection of science education and technology with implications for improving and enhancing science education at all levels across the world. Topics covered can be categorized as disciplinary (biology, chemistry, physics, as well as some applications of computer science and engineering, including the processes of learning, teaching and teacher development), technological (hardware, software, deigned and situated environments involving applications characterized as with, through and in), and organizational (legislation, administration, implementation and teacher enhancement). Insofar as technology plays an ever-increasing role in our understanding and development of science disciplines, in the social relationships among people, information and institutions, the journal includes it as a component of science education. The journal provides a stimulating and informative variety of research papers that expand and deepen our theoretical understanding while providing practice and policy based implications in the anticipation that such high-quality work shared among a broad coalition of individuals and groups will facilitate future efforts.
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