AI based College Surveillance System for Class Skipper

Jasvanthram M, V. Sumalatha
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Abstract

In many of the educational institutions, managing attendance of students/candidates is tedious, as there would be large number of students in the class and keeping track of all is onerous. There are situations where student act as proxies for their friends even though they are not present. The presence of students repeatedly skipping classes and spending considerable time wandering on campus signals potential underlying issues, such as disengagement, personal challenges, or dissatisfaction with the educational experience. Traditional methods of monitoring attendance are often inadequate in addressing these nuanced challenges. Therefore, there is a need for an AI-based College Surveillance System using Faster R-CNN to accurately detect class skippers and provide insights into their behavioural patterns. In this system, a database containing the trained student’s face. A camera installed in the college campus captures the face of all the student in the classroom and other places too. This face image is processed using FRCNN algorithms to detect faces and to mark the attendance automatically in an excel sheet. The system records the entire class session and identifies when the students pay attention in the classroom, and then reports to the facilities and also this system can record violations of classroom, that is absence, roaming around the college campus during the class hours and send alert message to the H.O.D.This dynamic attendance system uses face recognition as an important aspect of taking attendance which saves time and proxy attendance and is avoided. The system identifies faces very fast needing only 100 milliseconds to one frame and obtaining a high accuracy. Our face recognition model has an accuracy rate of 98.87%..
基于人工智能的班长学院监控系统
在许多教育机构中,管理学生/考生的出勤率是一项繁琐的工作,因为班级中学生人数众多,跟踪所有学生的出勤率是一项繁重的工作。有些情况下,即使学生的朋友不在场,他们也会充当朋友的代理人。如果学生屡次逃课,并花大量时间在校园里游荡,这就预示着潜在的问题,如脱离学校、个人挑战或对教育体验不满。传统的考勤监控方法往往不足以应对这些细微的挑战。因此,有必要利用 Faster R-CNN 开发基于人工智能的高校监控系统,以准确检测逃课者,并深入了解他们的行为模式。在该系统中,数据库包含经过训练的学生的脸。安装在大学校园里的摄像头可以捕捉到教室和其他地方所有学生的脸部图像。使用 FRCNN 算法对人脸图像进行处理,以检测人脸,并在 excel 表中自动标记出勤情况。该系统记录了整堂课的情况,并能识别学生在课堂上的注意力,然后向设备部门报告。此外,该系统还能记录违反课堂纪律的情况,如缺席、上课时间在校园内漫游等,并向 H.O.D. 发送警报信息。该动态考勤系统将人脸识别作为考勤的一个重要方面,从而节省了时间,避免了代理考勤。该系统识别人脸的速度非常快,一帧仅需 100 毫秒,而且准确率很高。我们的人脸识别模型准确率高达 98.87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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