Applying Benford's Law as an Efficient and Low-cost Solution for Verifying the Authenticity of Users’ Video Streams in Learning Management Systems

Argyris Constantinides, Christodoulos Constantinides, Marios Belk, C. Fidas, A. Pitsillides
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引用次数: 2

Abstract

An important challenge of online learning management systems (LMS) relates to continuously verifying the identity of students even after they have successfully authenticated. Although various continuous user identification solutions exist, they are rather focused on complex examination proctoring systems. Challenges further increase within large-scale online courses, which require a strong infrastructure to support numerous real-time video streams for verifying the identity of students. Considering that the students’ input video stream is an important factor for verifying their identity, and given that naturally generated data streams have been found to adhere to a pre-defined behavior as indicated by the Benford's law, in this work we investigate whether Benford's law can be applied as a reliable, efficient and cost-effective method for the detection of authentic vs. pre-recorded input video streams during continuous students’ identity verification within online LMS. In doing so, we suggest a prediction model based on the distribution of the first digits of image Discrete Cosine Transform (DCT) coefficients from the students’ input video stream. We found that the input video stream type (authentic vs. pre-recorded) can be inferred within a few seconds in real-time. A system performance evaluation indicates that the suggested model can support up to 1000 concurrent online students using a conventional and low-cost server setup and architecture.
应用本福德定律作为学习管理系统中用户视频流真实性验证的高效低成本解决方案
在线学习管理系统(LMS)面临的一个重要挑战是,即使学生已成功通过身份验证,也要不断验证学生的身份。尽管存在各种连续用户识别解决方案,但它们都集中在复杂的考试监考系统上。在大规模在线课程中,挑战进一步增加,这需要强大的基础设施来支持大量实时视频流,以验证学生的身份。考虑到学生的输入视频流是验证其身份的重要因素,并且已经发现自然生成的数据流遵循本福德定律所表明的预定义行为,在这项工作中,我们研究了本福德定律是否可以作为一种可靠、高效和经济的方法,用于在线LMS中连续学生身份验证期间检测真实与预录制的输入视频流。为此,我们提出了一种基于来自学生输入视频流的图像离散余弦变换(DCT)系数的第一位数分布的预测模型。我们发现输入的视频流类型(真实的还是预先录制的)可以在几秒钟内实时推断出来。系统性能评估表明,建议的模型可以使用传统的低成本服务器设置和体系结构支持多达1000名并发在线学生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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