哈萨克斯坦在线考试监考系统的开发研究

A. Nurpeisova, A. Shaushenova, Z. Mutalova, M. Ongarbayeva, S. Niyazbekova, Anargul Bekenova, Lyazzat Zhumaliyeva, S. Zhumasseitova
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引用次数: 0

摘要

在线教育的需求正在逐渐增长。大多数大学和其他机构都面临着这样一个事实,即几乎不可能跟踪考生远程考试的诚实程度。在在线模式中,有许多简单的机会允许作弊和使用外部帮助。基于人工智能技术的远程教育在线监考是防止学术不诚信的有效技术解决方案。本文探讨了一种利用人工智能技术进行在线考试的在线控制监考系统的开发与实现。本文讨论了哈萨克斯坦使用的监考系统,比较了所选监考系统的功能特点,描述了Proctor SU的体系结构,并开发了Proctor SU监考系统的原型。作为一个试点项目,作者在一次在线大学考试中使用了该系统,并检查了考试结果。根据笔者的调查,学生对使用Proctor SU在线监考持积极的态度。提出的监控器系统包括人脸检测、人脸跟踪、音频捕获和系统窗口的主动捕获等功能。在开发过程中使用了CNN, R-CNN和YOLOv3模型。YOLOv3模型以45帧/秒的速度实时处理图像,CNN和R-CNN以30帧/秒和38帧/秒的速度实时处理图像。YOLOv3模型在实时人脸识别方面表现出更好的效果。因此,在Proctor SU监考系统中实现了YOLOv3模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the Development of a Proctoring System for Conducting Online Exams in Kazakhstan
The demand for online education is gradually growing. Most universities and other institutions are faced with the fact that it is almost impossible to track how honestly test takers take exams remotely. In online formats, there are many simple opportunities that allow for cheating and using the use of outside help. Online proctoring based on artificial intelligence technologies in distance education is an effective technological solution to prevent academic dishonesty. This article explores the development and implementation of an online control proctoring system using artificial intelligence technology for conducting online exams. The article discusses the proctoring systems used in Kazakhstan, compares the functional features of the selected proctoring systems, and describes the architecture of Proctor SU. A prototype of the Proctor SU proctoring system has been developed. As a pilot program, the authors used this system during an online university exam and examined the results of the test. According to the author’s examination, students have a positive attitude towards the use of Proctor SU online proctoring. The proposed proctor system includes features of face detection, face tracking, audio capture, and the active capture of system windows. Models CNN, R-CNN, and YOLOv3 were used in the development process. The YOLOv3 model processed images in real time at 45 frames per second, and CNN and R-CNN processed images in real time at 30 and 38 frames per second. The YOLOv3 model showed better results in terms of real-time face recognition. Therefore, the YOLOv3 model was implemented into the Proctor SU proctoring system.
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