混合教室中的智能桌:检测学生学习时注意力不集中

Manh Hung Le, Thien Minh Doan, Duy Dieu Nguyen, Minh-Son Nguyen
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引用次数: 2

摘要

学习时注意力不集中的学生很难很好地吸收所学的知识。通常,为了让所有学生都能集中精力上课,老师在讲课时必须观察学生,如果学生不集中注意力,就必须提出解决办法。然而,在很多学生的情况下,跟踪发现没有注意上课的学生是一项需要教师投入大量精力的任务。在本文中,我们建议使用基于MediaPipe库的机器学习算法来分析面部特征和表情,包括闭眼,打哈欠,不看黑板或缺席,以确定学生是否分心或不建立一个系统,以帮助教师检测学生在智能课桌学习时缺乏注意力(学生课桌是基于嵌入式设备设计的,带有摄像头和屏幕)。当检测到学生在学习过程中注意力不集中时,系统会向老师发出警告,以便老师提供解决方案。我们在配置[四核64位ARM, 128位GPU CUDA, 4GB RAM]的Jetson Nano嵌入式设备上对该算法进行了测试,在300-400勒克斯光照条件下,FPS为8 ~ 18,准确率为89 ~ 97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Desk in Hybrid Classroom: Detecting student's lack of concentration when studying
Students who do not concentrate when studying will find it difficult to absorb the lesson well. Usually, in order for all students to focus on the lesson, the teacher during the lecture will have to observe the students and come up with solutions if the students are not paying attention. However, in the case of many students, following to detect students who have not paid attention to the lesson is a task that requires teachers to put in a lot of effort. In this article, we propose to use machine learning algorithms based on the MediaPipe library to analyze facial features and expressions, including eyes closed, yawning, not looking at the board, or absent, to determine if students have been distracted or not to build a system to assist teachers in detecting student lack of concentration when studying in Smart Desks (Student desks are designed based on embedded devices, with cameras and screens). When detecting that students are not paying attention while studying, the system will warn the teacher so that the teacher can provide solutions. We tested the algorithm on a Jetson Nano embedded device with configuration [Quad-Core 64-bit ARM, 128-bit GPU CUDA, 4GB RAM] and obtained FPS: 8 ~ 18, accuracy achieved from 89 ~ 97% in lighting conditions from 300–400 lux.
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