RFID and pose invariant face verification based automated classroom attendance system

Srivignessh Pss, M. Bhaskar
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引用次数: 26

Abstract

A compact and reliable classroom attendance system using RFID and face verification is presented in this paper. The RFID system identifies the student using the RFID card and further identity verification of the student is carried out using face recognition technique. RFID uniquely identifies the student based on the card number, then an individual (Fast Adaptive Neural Network Classifier - FANNC) classifier is used to verify the face of each student exclusively. The system is trained and tested by conducting experiments on FEI face database. Each classifier is trained using face images of each student in seven different head poses and it is tested against six different poses. The performance of the system is tested for frontal face verification, head pose varied face verification and detection of proxy attendance is carried out. It is found that the proposed scheme verifies the identity of the student correctly of about 98% for frontal face and two attempts on poses varied face verification. The proxy attendance detection carried out for frontal face resulted in an efficiency of 73.28% and for different poses resulted in an efficiency of 79.29%.
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基于RFID和姿态不变人脸验证的自动考勤系统
提出了一种基于RFID和人脸验证的小型、可靠的课堂考勤系统。RFID系统使用RFID卡对学生进行识别,并使用人脸识别技术对学生进行进一步的身份验证。RFID根据卡号唯一识别学生,然后使用单个(快速自适应神经网络分类器- FANNC)分类器专门验证每个学生的面部。在FEI人脸数据库上对该系统进行了训练和测试。每个分类器使用每个学生七种不同头部姿势的面部图像进行训练,并针对六种不同的姿势进行测试。对系统的性能进行了正面人脸验证、头姿变化人脸验证和代理出勤检测。结果表明,该方案对正面人脸和两次姿态变化人脸的验证正确率约为98%。对正面人脸进行代理出勤检测,效率为73.28%,对不同姿态进行代理出勤检测效率为79.29%。
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