利用深度学习技术在课堂上捕捉学生面部和姿势特征的虚拟教学助手

Samer Rihawi, Samar Mouti, Roznim Mohamed Rasli, S. Ariffin
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引用次数: 0

摘要

本研究的重点是学生和教师在学习过程中所面临的学习挑战。它解决了用于人脸识别的不同技术和方法。提出的VTA模型使用卷积神经网络来识别学生的身份。它收集课堂上每个学生的面部表情和身体姿势,预测学生的注意力水平,从而确定他/她的学习能力。本研究能够准确、真实地评估学生在课堂上的贡献和注意力,从而帮助学生实现学习目标。此外,建议的VTA模型可以帮助教师在课堂上了解他/她的教学方法,因为该模型将观察和记录学生的注意力。本研究将对学生的成功和有效的教学产生显著的积极影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Virtual Teaching Assistant for Capturing Facial and Pose Landmarks of the Students in the Classroom Using Deep Learning
This research focuses on the learning challenges that both students and teachers face during the learning process. It addresses the different techniques and methods used for face recognition. The proposed VTA model uses the convolutional neural networks to recognize the identities of the student. It gathers the facial expressions and body poses of each student in the classroom and predicts the attention level of that student, thus determining his/her learning capabilities. This research will help the students achieve their learning objectives by being able to get an accurate and real evaluation of their contribution and attention during the classes. Also, the proposed VTA model helps the teacher get some insight into his/her teaching methodologies during the class as the model will observe and record the attentiveness of the students. This research will have a significant positive impact on student success and on effective lecturing.
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