基于深度学习的学生行为监控和学习情况分析系统

Jifeng Chen, Zhengxi Shao, Qingqi Liu, Mao Lei
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摘要

本文讨论了利用深度学习技术对课堂上的学生行为进行实时监控。通过使用 DeepSORT 跟踪学生姿势和识别互动行为,并利用 YOLOv8 模型检测学生姿势,本研究构建了一种改进的深度学习算法,以建立课堂教学评价系统。通过对学生课堂状态的统计分析和实时监测,制定了量化评价标准,准确评价学生的专注程度。研究成果不仅为每个学生的课堂行为提供了具体的分数,还分析了学生的行为特点,提出了需要改进的地方。研究强调了个性化教学策略的意义,并根据学生在课堂上的行为模式和变化,提出了有针对性的行为纠正策略,以提高学生在授课过程中的注意力质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning-Based System for Monitoring Student Behavior and Analyzing Learning Situations
This text discusses the real-time monitoring of student behavior in the classroom using deep learning technology. By employing DeepSORT to track student postures and recognize interactive behaviors and utilizing the YOLOv8 model to detect student postures, this study constructs an improved deep learning algorithm to establish a classroom teaching evaluation system. Through statistical analysis and real-time monitoring of student classroom states, quantitative assessment criteria have been formulated to accurately evaluate the level of students' concentration. The research results not only provide specific scores for each student's classroom behaviors but also analyze the behavioral characteristics of students and suggest areas for improvement. The study emphasizes the significance of personalized teaching strategies and, based on students' behavior patterns and changes in class, offers tailored behavior correction strategies to enhance the quality of students' attention during lectures.
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