Abnormal Behavior Detection in Online Exams Using Deep Learning and Data Augmentation Techniques

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Muhanad Abdul Elah Alkhalisy, Saad Hameed Abid
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引用次数: 0

Abstract

Massive open online courses (MOOCs) and other forms of distance learning have gained popularity in recent years. The success of remote online exam proctoring determines the integrity of the exam. Deep-learning-powered proctoring services have also grown in popularity. A large number of samples are needed for deep-learning training. The network’s generalization ability is poor due to insufficient training data or an uneven lack of variation. This study illustrates how to analyze students’ anomalous behavior by utilizing a YOLOv5 deep model trained using newly produced dataset. To overcome insufficient training data for deep-learning-related issues, this paper proposes a data-augmentation method based on semantic segmentation. The MobileNetV3 model was used to get an image semantic segmentation mask, which was used to get a binary mask, which in turn was used to replace the image background by using conditional subtraction with randomly selected background images. Finally, randomly pixel-based color augmentation was added to the resulting image. The behavioral detection model used in this study achieved 0.98 mean average precision (mAP) on the produced dataset, showing acceptable detection precision. The experimental findings indicate that the suggested augmentation method improves behavioral detection precision by more than 0.3%.
基于深度学习和数据增强技术的在线考试异常行为检测
近年来,大规模开放在线课程(MOOC)和其他形式的远程学习越来越受欢迎。远程在线监考的成功与否决定了考试的完整性。深度学习监考服务也越来越受欢迎。深度学习训练需要大量的样本。由于训练数据不足或变化不均匀,网络的泛化能力较差。本研究说明了如何利用使用新生成的数据集训练的YOLOv5深度模型来分析学生的异常行为。为了克服深度学习相关问题训练数据不足的问题,本文提出了一种基于语义分割的数据增强方法。MobileNetV3模型用于获得图像语义分割掩码,该掩码用于获得二进制掩码,该二进制掩码又用于通过使用随机选择的背景图像的条件减法来替换图像背景。最后,将基于随机像素的颜色增强添加到生成的图像中。本研究中使用的行为检测模型在生成的数据集上实现了0.98的平均精度(mAP),显示出可接受的检测精度。实验结果表明,所提出的增强方法将行为检测精度提高了0.3%以上。
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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