Student concentration level monitoring system based on deep convolutional neural network

U. B. P. Shamika, W. Weerakoon, P. Panduwawala, K. A. P. Dilanka
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引用次数: 1

Abstract

As synchronous online classrooms have grown more common in recent years, evaluating a student's attention level has become increasingly important in verifying every student's progress in an online classroom setting. This paper describes a study that used machine learning models to monitor student attentiveness to distinct gradients of engagement level. Initially, the experiments were conducted using a deep convolutional neural network of student attention and emotions exploiting Keras library. The model showed a 90% accuracy in predicting attention level of the student. This deep convolutional neural network analysis aids in identifying crucial emotions that are important in determining various levels of involvement. This study discovered that emotions such as calm, happiness, surprise, and fear are important in determining a student's attention level. These findings aided in the earlier discovery of students with poor attention levels, allowing instructors to focus their assistance and advice on the students who require it, resulting in a better online learning environment.
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基于深度卷积神经网络的学生集中度监测系统
随着同步在线课堂近年来变得越来越普遍,评估学生的注意力水平对于验证每个学生在在线课堂环境中的进步变得越来越重要。本文描述了一项研究,该研究使用机器学习模型来监测学生的注意力到不同的投入水平梯度。最初,实验使用利用Keras库的学生注意力和情绪的深度卷积神经网络进行。该模型预测学生注意力水平的准确率为90%。这种深度卷积神经网络分析有助于识别关键情绪,这些情绪对确定不同程度的参与很重要。这项研究发现,平静、快乐、惊讶和恐惧等情绪对决定学生的注意力水平很重要。这些发现有助于更早地发现注意力不集中的学生,使教师能够将帮助和建议集中在需要帮助的学生身上,从而创造更好的在线学习环境。
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