Students’ Attendance Management in Higher Institutions Using Azure Cognitive Service and Opencv Face Detection & Recognition Attendance System

Edison K., S. U.
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Abstract

This research aimed at studying the current methods of attendance used at higher institutions of learning in Uganda and the feasibility of using facial biometrics as a new method of capturing attendance. Facial biometrics is distinct from other biometrics because it can be carried out without the consent of the person involved. As a result, the researcher developed a face recognition attendance system using OpenCV and Microsoft Azure CS. Questionnaires, interviews, and observations were used to capture data for the research. The data were analyzed using SPSS to get the requirements and systems functionalities. Object-Oriented Design tools were used to model the architecture of the system. Data Flow Diagram, Use-Case Diagram, Activity Diagram, and Flow Chart were used for processing whereas Entity Relation Diagram was used for data modeling. The system was designed to facilitate attendance management of a large number of attendees with ease. Efficiency and reliability were essential features of the system. Data visualization was provided to help management make informed and timely decisions on management matters that are related to attendance. The system was developed using python Tkinter, OpenCV, and Azure CS as mentioned above. The data (images) used by the system were stored in the cloud for accessibility by multiple users. The system was tested thoroughly using various testing types to uncover and fix errors and to minimize the severity of failures.
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基于Azure认知服务和Opencv人脸检测识别考勤系统的高校学生考勤管理
本研究旨在研究乌干达高等院校目前使用的出勤方法,以及使用面部生物识别技术作为捕获出勤新方法的可行性。面部生物识别技术不同于其他生物识别技术,因为它可以在没有当事人同意的情况下进行。因此,研究人员利用OpenCV和微软Azure CS开发了一个人脸识别考勤系统。问卷调查、访谈和观察被用来获取研究数据。使用SPSS软件对数据进行分析,得到需求和系统功能。使用面向对象的设计工具对系统的体系结构进行建模。数据流图、用例图、活动图和流程图用于处理,实体关系图用于数据建模。该系统的设计是为了方便大量与会者的出席管理,方便快捷。效率和可靠性是该系统的基本特点。提供数据可视化是为了帮助管理层对与出勤有关的管理事项作出明智和及时的决策。如上所述,系统使用python Tkinter, OpenCV和Azure CS进行开发。系统使用的数据(图像)存储在云中,供多个用户访问。使用各种测试类型对系统进行了彻底的测试,以发现和修复错误,并将故障的严重程度降至最低。
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