Development of an automated online proctoring system

Anastasiia A. Breskina
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Abstract

The rapid development of machine learning technologies, the increasing availability of devices and widespread access to the Internet have significantly contributed to the growth of distance learning. Alongside distance learning systems, proctoring systems have emerged to assess student performance by simulating the work of a teacher. However, despite the development of image processing and machine learning technologies, modern proctoring systems still have limited functionality: some systems have not implemented computer vision methods and algorithms satisfactorily enough (false positives when working with students of different ancestry, racial background and nationalities) and classification of student actions (very strict requirements for student behaviour), so that some software products have even refused to use modules that use elements of artificial intelligence. It is also a problem that current systems are mainly focused on tracking students' faces and gaze and do not track their postures, actions, andemotional state. However, it is the assessment of actions and emotional state that is crucial not only for the learning process itself, but also for the well-being of students, as they spend long periods of time at computers or other devices during distance learning, which has a great impact on both their physical health and stress levels. Currently, control over these indicators lies solely with teachers oreven students themselves, who have to work through test materials and independent work on their own. An additional problem is the quality of processing and storage of students' personal data, as most systems require students to be identified using their identitydocuments and store full, unanonymised video of students' work on their servers. Based on the analysis of all these problems that impede the learning process and potentially affectstudents' health in the long run, this article presents additional functional requirements for modern automated online proctoring systems, including the need to analyse human actions to assess physical activity and monitor hygiene practices when using computers in the learning process, as well as requirements for maximum protection of students' personal data. A prototype of the main components of an automated online proctoring system that meets the proposed requirements has been developed
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自动在线监考系统的开发
机器学习技术的快速发展、设备的日益普及和互联网的广泛接入,极大地促进了远程学习的发展。随着远程学习系统的出现,监考系统通过模拟老师的工作来评估学生的表现。然而,尽管图像处理和机器学习技术的发展,现代监考系统的功能仍然有限:一些系统对计算机视觉方法和算法的实现不够令人满意(在处理不同血统、种族背景和国籍的学生时出现误报),对学生行为的分类(对学生行为的要求非常严格),以至于一些软件产品甚至拒绝使用使用人工智能元素的模块。目前的系统主要集中在跟踪学生的面部和目光,而没有跟踪他们的姿势、动作和情绪状态,这也是一个问题。然而,对行为和情绪状态的评估不仅对学习过程本身至关重要,而且对学生的健康也至关重要,因为他们在远程学习期间花很长时间在电脑或其他设备上,这对他们的身体健康和压力水平都有很大的影响。目前,对这些指标的控制完全掌握在教师甚至学生自己手中,他们必须自己完成测试材料和独立作业。另一个问题是学生个人数据的处理和存储质量,因为大多数系统要求使用他们的身份证件来识别学生,并在他们的服务器上存储完整的、匿名的学生学习视频。在分析所有这些阻碍学习过程并可能长期影响学生健康的问题的基础上,本文提出了对现代自动在线监考系统的额外功能要求,包括在学习过程中使用计算机时需要分析人类行为以评估身体活动和监测卫生习惯,以及最大限度地保护学生个人数据的要求。已开发出满足建议要求的自动在线监考系统主要组件的原型
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