Attendance System Using RFID, IOT and Machine Learning: A Two-Factor Verification Approach

R. Kariapper
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引用次数: 11

Abstract

The time and attendance systems help to monitor the employers and students working and attending time. Educational systems are struggling with the traditional system. It affects the pedagogical activities considerably. The traditional system is encountering many problems, and there is a need for a robust technological solution. This study focuses on building a two-factor prototype with RFID, IoT, and machine learning techniques. A microcontroller, GSM module, RFID tag, an RFID reader are used for first step verification. A camera with Multitask Cascaded Convolutional Network (MTCNN) model is used for a second verification. When both are okay, students will get the attendance. If it fails, parents will get a notification about the student’s attendance. When the prototype is developed as a complete system, the educational system will be getting higher advantages.
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使用RFID、物联网和机器学习的考勤系统:双因素验证方法
考勤系统有助于监控雇主和学生的工作和出席时间。教育系统正在与传统系统作斗争。它对教学活动影响很大。传统的系统遇到了许多问题,需要一个强大的技术解决方案。本研究的重点是用RFID、物联网和机器学习技术构建一个双因素原型。微控制器,GSM模块,RFID标签,RFID阅读器用于第一步验证。使用多任务级联卷积网络(MTCNN)模型的相机进行第二次验证。当两者都没问题时,学生将得到出勤率。如果失败,家长将收到学生出勤的通知。当原型作为一个完整的系统发展时,教育系统将获得更高的优势。
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