Development of an Automatic Class Attendance System using CNN-based Face Recognition

S. Chowdhury, Sudipta Nath, Ashim Dey, Annesha Das
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引用次数: 9

Abstract

We are living in the 21st century which is the era of modern technology. Many traditional problems are being solved using new innovative technologies. Taking attendance daily is an indispensable part of educational institutions as well as offices. It is both exhausting and time-consuming if done manually. Biometric attendance systems through voice, iris, and fingerprint recognition require complex and expensive hardware support. An auto attendance system using face recognition, which is another biometric trait, can resolve all these problems. This paper represents the development of a face recognition based automatic student attendance system using Convolutional Neural Networks which includes data entry, dataset training, face recognition and attendance entry. The system can detect and recognize multiple person's face from video stream and automatically record daily attendance. The proposed system achieved an average recognition accuracy of about 92 %. Using this system, daily attendance can be recorded effortlessly avoiding the risk of human error.
基于cnn人脸识别的自动考勤系统的开发
我们生活在21世纪,这是一个现代科技的时代。许多传统问题正在利用新的创新技术得到解决。每天考勤是教育机构和办公室不可缺少的一部分。如果手工完成,既累人又费时。通过语音、虹膜和指纹识别的生物识别考勤系统需要复杂且昂贵的硬件支持。一个使用人脸识别的自动考勤系统,这是另一种生物特征,可以解决所有这些问题。本文介绍了一种基于卷积神经网络的基于人脸识别的学生自动考勤系统的开发,该系统包括数据录入、数据集训练、人脸识别和考勤录入。该系统可以从视频流中检测和识别多个人脸,并自动记录每天的出勤情况。该系统的平均识别准确率约为92%。使用这个系统,可以毫不费力地记录每天的考勤,避免人为错误的风险。
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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