基于物联网的身份识别和考勤监控系统的设计思维框架

K. Sangeetha, M. Shobana, V. S. Nagul Pranav, S. Darunya, K. P. Madhumitha, M. Nidharshini
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引用次数: 0

摘要

过时的学习方法在跟踪员工和学生的运动方面是不够的,这使得管理人员难以手动跟踪考勤并发现令人困惑和欺诈的活动。设计思维是一种解决不明确或未知问题的独特方法。CNN和RFID可以追踪学生和员工的动向。建议使用CNN和RFID来改善管理和跟踪兴趣小组活动。使用RFID和CNN模型来改进管理和跟踪兴趣群体。使用RFID和面部检测来验证学生的出勤情况。RFID标签和面部识别技术使管理人员能够跟踪进出校园的学生和员工。没有射频识别卡或面部与身份证不匹配的人将触发,提醒管理人员并保存他们的考勤记录。该系统使用无线网络、网络摄像头、数据库管理系统和无源RFID。当RFID标签在读取范围内通过RFID读写器时,数据库系统对数据进行记录。摄像头和RFID读取器同时读取人脸。该软件会拍摄所有授权用户的照片,并将其存储在数据库中。然后,系统将图像保存在人脸坐标结构中。该系统将员工和学生的数据发送到管理层进行在线监控。管理人员可以很容易地访问学生和员工的个人记录,并跟踪他们的可用性。因此,利用设计思维的五个阶段,本研究影响了员工和学生的监控实践。该项目不能限制标点符号,但它将帮助管理人员监控考勤,检测欺诈,并节省时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT Based Identification And Attendance Monitoring System Using Design Thinking Framework
The outdated study approach is inadequate at tracking employee and student movement, making it difficult for management to manually track attendance and uncover confusing and fraudulent activities. Design Thinking is a unique approach to solve problems that are ill-defined or unknown. CNN and RFID can track student and employee movements. CNN and RFID were suggested to improve management and track interest group activities. RFID and CNN Model were used to improve management and track interest groups. RFID and facial detection are used to verify student attendance. The RFID tags and facial detection technique allow management to track students and employees in and out of campus. An individual without an RFID card or with an unmatched face and ID card will trigger, alerting management and maintaining record of their attendance. This system used wireless networking, a webcam, a database management system, and passive RFID. When the RFID tag passed through the RFID reader in the read range zone, the database system recorded the data. Cameras and RFID readers read the face simultaneously. The software takes photos of all authorized users and stores them in a database. The system then saves the image in a face coordinate structure. This system sends staff and student data to management online for monitoring. Management may easily access student and employee personal records and track their availability. Hence using the five stages of Design Thinking this study impacts employee and student monitoring practices. The project cannot restrict punctuation, but it will assist management monitor attendance, detect fraud,and save time.
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