COVID-19大流行期间在线学习中使用集成回归树检测学生困倦

I. P. K. Udayana, Ni Putu Eka Kherismawati, I. Sudipa
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引用次数: 1

摘要

为应对新冠肺炎疫情期间的教育实施,在线讲座是强制性的。这一重大变化无疑为学生创造了不同的体验。关于在线学习,一些公共卫生专家和眼科医生说,电子屏幕的残留辐射正在导致眼疲劳的流行。智能教室的研究其实早在几年前就出现了,但在现实中并没有按照规划的概念实施。目前的智能课堂研究环境仅使用过时的方法,使得计算机系统不一致(如视频馈送中的决策树)或仅停留在实证研究或蓝图的层面,对其他学术立足点或参考材料没有太大帮助。给学生。本研究旨在建立一个智能系统,该系统可以在在线课程中评估学生的注意力,使用教学视频作为学习源和预测输入,并在几个计算领域使用先进的算法,即人脸分割,地标,PERCLOS观察,打哈欠和使用集成回归树的决策分析来检测学生的嗜睡。它有望弥补PERCLOS算法的缺点和在基于单一回归树的实现中发现的问题。根据已经进行的测试结果,开发的系统已经能够以80%的准确率观察学习视频中的困倦对象,这样以后就可以为教师提供一个教训,为什么在在线课程中会有学生因为无趣的材料或其他原因而困倦。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Student Drowsiness Using Ensemble Regression Trees in Online Learning During a COVID-19 Pandemic
Online lectures are mandatory to deal with the implementation of education during the COVID-19 pandemic. This significant change certainly creates a different experience for students. Regarding online learning, several public health experts and ophthalmologists say that residual radiation from electronic screens is causing an epidemic of eye fatigue. Research on smart classrooms actually appeared several years ago, but in reality it has not been implemented according to the planned concept. The current smart classroom research environment only uses outdated methods, which make the computer system incongruent (such as decision trees in video feeds) or only to the level of empirical studies or blueprints, which are not much help for other academic footing or reference materials. to students. This study aims to build an intelligent system that can evaluate students' attention during online classes, use teaching videos as learning feeds and input for predictions and also use advanced algorithms in several computational domains, namely face segmentation, landmarking, PERCLOS observations, Yawning and decision analysis using Ensemble Regression Trees to detect students' sleepiness, which is expected to patch up the shortcomings of the PERCLOS algorithm and the problems found in the single regression tree-based implementation. Based on the results of the tests that have been carried out, the system developed has been able to observe sleepy objects in learning videos with an accuracy of 80% so that later it can be a lesson for teachers why there are students who are sleepy during online classes either because of uninteresting material or other reasons.
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