Automatic Attendance System Using Deep Learning

Sunil Aryal, Rachhpal Singh, Arnav Sood, Gaurav Thapa
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Abstract

In this paper, novel automatic attendance system is proposed by using machine learning and deep learning algorithms. Real-time face recognition algorithms are used and integrated with existing University management system which detects and recognize faces of students in real time while attending lectures. This new proposed system for automatic attendance system aims to be less time consuming in comparison to the existing system of marking the attendance. The designed system does not interrupt class in any manner. Therefore, it saves potential time of students as well as of teachers. From the experiment analysis it is found that the accuracy of proposed system is 97%. Hence proposed system doesn’t require any rectification and verification from teachers.
使用深度学习的自动考勤系统
本文提出了一种基于机器学习和深度学习的考勤系统。采用实时人脸识别算法,并与现有的高校管理系统相结合,实现学生听课时的实时人脸检测与识别。与现有的考勤系统相比,新提出的自动考勤系统旨在节省时间。所设计的系统不会以任何方式中断课堂。因此,它节省了学生和教师的潜在时间。实验分析表明,该系统的准确率达到97%。因此,该系统不需要教师进行任何整改和验证。
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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