An Exploratory Data Analysis for Synchronous Online Learning Based on AFEA Digital Images

Syefrida Yulina, Mona Elviyenti
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Abstract

The spread of COVID-19 throughout the world has affected the education sector. In some higher education institution, such as Polytechnic Caltex Riau (PCR), it is mandatory for students to participate in synchronous or asynchronous learning activities via virtual classroom. Synchronous online learning is usually supported by video conferencing media such as Google Meeting or Zoom Meeting. The communication between lecturers and students is captured as an image as evidence of students’ interaction and participation in certain learning subjects. These images can provide information for lecturers in determining students’ internal feelings and measuring students’ interest through facial emotions. Taking this reason into account, the current research aims to analyze the emotions detected in facial expression through images using automatic facial expression analysis (AFEA) and exploratory data analysis (EDA), then visualize the data to determine the possible solution to improve the educational process’ sustainability. The AFEA steps applied were face acquisition to detect facial parts in an image, facial data extraction and representation to process feature extraction on the face, and facial expression recognition to classify faces into emotional expressions. Thus, this paper presents the results obtained from applying machine learning algorithms to classify facial expressions into happy and unhappy emotions with mean values of 5.58 and 2.70, respectively. The data were taken from the second semester of 2020/2021 academic year with 1,206 images. The result highlighted the fact that students showed the facial emotion based on the lecture types, hours, departments, and classes. It indicates that there are, in fact, several factors contributing to the variances of students’ facial emotions classified in synchronous online learning.
基于AFEA数字图像的同步在线学习探索性数据分析
2019冠状病毒病在全球的传播对教育部门产生了影响。在一些高等教育机构,如加德士廖内理工学院(PCR),学生必须通过虚拟教室参与同步或异步学习活动。同步在线学习通常由视频会议媒体支持,如Google Meeting或Zoom Meeting。教师和学生之间的交流作为图像被捕获,作为学生在特定学习科目中互动和参与的证据。这些图像可以为讲师提供信息,通过面部表情判断学生的内心感受,衡量学生的兴趣。考虑到这一点,本研究旨在利用自动面部表情分析(AFEA)和探索性数据分析(EDA)来分析通过图像检测到的面部表情中的情绪,然后将数据可视化,以确定可能的解决方案,以提高教育过程的可持续性。AFEA的步骤包括人脸采集,用于检测图像中的人脸部分;人脸数据提取和表示,用于提取人脸特征;面部表情识别,用于将人脸分类为情绪表情。因此,本文给出了应用机器学习算法将面部表情分为均值分别为5.58和2.70的快乐和不快乐情绪的结果。数据取自2020/2021学年第二学期,共1206张图片。结果显示,学生们的面部表情与讲课类型、讲课时间、学科、课程等有关。这表明,实际上有几个因素导致了同步在线学习中学生面部情绪分类的差异。
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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