基于人脸识别的深度CNN智能鲁棒考勤监控

Lakshya Agarwal, Manan Mukim, Harish Sharma, Amit Bhandari, A. Mishra
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引用次数: 5

摘要

教师很难处理学生在课堂上的出勤情况,无论是在线还是离线,因为他们在使用教学时间时都是手工完成的。为了解决这一问题,可以使用智能而富有洞察力的考勤管理系统。身份验证是最大的障碍。目前的结构采用生物识别认证,如语音分析和签名验证。该研究提出了一种基于面部识别的考勤跟踪系统,可以加强传统的生物识别认证。该体系结构是计算机和人之间的一种关系,解决了一种健壮的身份验证方法。为了识别人脸,系统使用HOG和SVM,并使用现有的数据库标记出勤。实验结果表明,该装置可以准确地自动识别相机记录的人脸,使用支持向量机分类器可以更精确、更高效地检测人脸。
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Face Recognition Based Smart and Robust Attendance Monitoring using Deep CNN
It is difficult for teachers to deal with student attendance during classes, whether online or offline since they do it by hand as they use their teaching time. To solve this problem, the smart and insightful attendance management system can be used. Authentication leads to the biggest impediment. The current structure uses biometric authentication, such as voice analysis and signature verification. The study suggested a system of attendance tracking built on facial recognition that can strengthen traditional biometric authentication. The architecture is a relationship between computers and humans and addresses a robust method of authentication. To identify a face, the system uses HOG and SVM and uses an existing database for labeling attendance. The experimental results show the device can automatically identify the faces recorded by the camera accurately and we can detect the face more precisely and efficiently with the use of the SVM classifier.
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