基于人体姿态识别的学生课堂出勤状态分析系统

Yuanhang Feng, Lei Zhang, Yuncheng Zhang, Xiang Li, Quanyin Zhu
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引用次数: 2

摘要

听课状态是反映听课效率的一个值。随着各种人体手势识别算法的提出,我们可以利用这些算法来构建一个评估学生听力状态的系统。随着许多优秀的机器视觉算法的涌现,基本理论已经成熟,可以完成一些复杂的任务。这里提出的系统是这些技术的一种集成,在实际实施时也需要创新。同时,监控视频资源的浪费在我们的社会中普遍存在,应该加以利用,而不是加以利用。特别是在课堂现场,学校拥有大量的监控视频资源。提出了通过人体姿势识别来分析学生状态的系统。它的基本理论是对人体关键点的识别,包括对人体相当重要部位的识别。我们可以先从视频中提取这些信息,然后做一些分析,比如计算一些特定角度。经过这些数据的处理,我们可以得到学生状态的大致结果,通过机器学习,学生的正确率可以更高。在满足特定环境的要求之前,系统还需要做很多工作,如语义分割和超分辨率。当最终面对客户时,系统也将具有清晰的可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analysis System of Students' Attendence State in Classroom Based on Human Posture Recognition
Listening state is a value reflecting the efficiency of lectures. As various human gesture recognition algorithms proposed, we could make advantages of these algorithms to construct a system to evaluate the listening state of the students. With the spring of many outstanding algorithm of machine vision, the basic theories have reached matured to complete some complex assignment. The system proposed here is a kind of integration of these technologies, which also need innovation when it's actually implemented. Also, wasted surveillance video resources universally existed in our society, which should be made advantage of but not. Especially in the scene of the classrooms, the schools hold tremendous surveillance video resources. The system is proposed to analyze the state of the students through the human posture recognition. Its basic theory is the recognition of the human body key points, including the rather important points of one's body. We could extract these information from the videos firstly, and make some analysis such as the computation of some specific angles. After these treatment of data, we could get rough results of the state of the students, whose correct rate could be higher through machine learning. There are much efforts to be made before the system could fit the requirement of the specific environment, such as semantic segmentation and super resolution. The system would also have clear visualization when finally faces customers.
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