Online proctoring has become a necessity in online teaching. Video-based crowd-sourced online proctoring solutions are being used, where an exam-taking student's video is monitored by third parties, leading to privacy concerns. In this paper, we propose a privacy-preserving online proctoring system. The proposed image-hashing-based system can detect the student's excessive face and body movement (i.e., anomalies) that is resulted when the student tries to cheat in the exam. The detection can be done even if the student's face is blurred or masked in video frames. Experiment with an in-house dataset shows the usability of the proposed system.
翻译:在网上教学中,在线激励已成为一项必要。 正在使用基于视频的多方源在线激励解决方案,其中考试学生的视频由第三方监控,从而导致隐私问题。 在本文中,我们提议建立一个隐私保护在线激励系统。 以图像捕捉为基础的拟议系统可以检测学生在考试中试图作弊时导致的过度面部和身体运动(即异常)。 即便学生的脸被模糊或被录像框遮蔽,也可以进行检测。 内部的实验数据显示了拟议系统的可用性。