Development and Analysis of a Machine Learning Based Software for Assisting Online Classes during COVID-19

Tasfiqul Ghani, Nusrat Jahan, Mohammad Monirujjaman Khan, S. Rahman, Sabik Tawsif Anjum Islam
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引用次数: 7

Abstract

Amid the Covid-19 widespread, it has been challenging for educational institutions to conduct online classes, facing multiples challenges. This paper provides an insight into different approaches in facing those challenges which includes conducting a fair online class for students. It is tough for an instructor to keep track of their students at the same time because it is difficult to screen if any of the understudies within the class are not present, mindful, or drowsing. This paper discusses a possible solution, something new that can offer support to instructors seeing things from a more significant point of view. The solution is a facial analysis computer program that can let instructors know which students are attentive and who is not. There’s a green and red square box for face detection, for which Instructors can watch by seeing a green box on those mindful students conjointly, a red box on those who are not mindful at all. This paper finds that the program can automatically give attendance by analyzing data from face detection. It has other features for which the teacher can also know if any student leaves the class early. In this paper, model design, performance analysis, and online class assistant aspects of the program have been discussed.
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基于机器学习的新冠肺炎在线课堂辅助软件的开发与分析
在新型冠状病毒感染症(Covid-19)肆虐的情况下,教育机构的在线授课面临着多重挑战。本文提供了面对这些挑战的不同方法的见解,其中包括为学生进行公平的在线课程。教师很难同时掌握学生的情况,因为很难判断班上是否有学生不在场、不专心或打瞌睡。本文讨论了一种可能的解决方案,一种可以从更重要的角度支持教师看待事物的新方法。解决方案是一个面部分析计算机程序,它可以让教师知道哪些学生是认真的,哪些学生不是。有一个绿色和红色的方框用于面部检测,教师可以通过看到那些正念的学生的绿色方框,以及那些完全没有正念的学生的红色方框来观察。本文通过对人脸检测数据的分析,发现该程序可以自动出勤。它还有其他功能,老师也可以知道是否有学生早退。本文对该程序的模型设计、性能分析和在线课堂辅助等方面进行了讨论。
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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