Cheating Detection in E-exams System Using EEG Signals

H. Mohammed, Qutaiba Ibrahim Ali
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Abstract

Cheating in e-exams is a real problem that threatens academic integrity and underminesconfidence in the feasibility of remote assessments. Many previous research papers and studies discussedthe issue of cheating in e-exams to prevent or reduce it through the use of the available technologies suchas the use of a web camera to monitor the examinee, some researchers proposed using specific software torestrict the examinee from accessing resources that are not permitted during the exam. This work aims todesign a Semi-automatic, AI-based e-proctoring system that mitigates cheating in e-exams. This researchproposed an innovative method to detect the possibility of cheating in the e-exams. This method relies onthe use of IoT and the Muse2 devices to detect the examinee's physiological state and determine whether itis “Normal” or “Abnormal” through the examinee`s EEG signal, where the abnormal state indicates apossibility of cheating. Convolutional Neural Network (CNN) was used to distinguish the examinee's state.The collected data from 15 students at the fourth stage of the Computer Engineering Department/ Universityof Mosul ranging between 23 and 26 years old showed that there is an obvious difference between the“calm” or “Normal” state and “stress” or “Abnormal” state in the EEG signal of the volunteer. The accuracyof the system was obtained for many testing datasets. The dataset was divided into two main datasets; the30 and 60 seconds duration time. The best accuracy obtained for the 30sec duration time was 97.37%, and97.14% for the 60sec duration time. The researchers concluded that the EEG signal contains a lot ofimportant information that can be utilized to detect the physiological state of the examinee and that theMuse2 device can be reliable to record the EEG signal.
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基于脑电图信号的电子考试作弊检测
在电子考试中作弊是一个真正的问题,它威胁到学术诚信,破坏了人们对远程评估可行性的信心。许多先前的研究论文和研究讨论了电子考试中的作弊问题,通过使用可用的技术来防止或减少作弊,例如使用网络摄像头来监控考生,一些研究人员建议使用特定的软件来限制考生访问考试期间不允许的资源。本工作旨在设计一个半自动的、基于人工智能的电子监考系统,以减轻电子考试中的作弊行为。本研究提出了一种检测电子考试作弊可能性的创新方法。该方法依靠物联网和Muse2设备检测考生的生理状态,通过考生的脑电图信号判断是“正常”还是“异常”,异常状态表明考生有作弊的可能。使用卷积神经网络(CNN)识别考生的状态。通过对摩苏尔大学计算机工程系四年级15名年龄在23 - 26岁之间的学生的采集数据表明,志愿者的脑电图信号在“平静”或“正常”状态与“紧张”或“异常”状态之间存在明显差异。在多个测试数据集上验证了系统的准确性。数据集分为两个主要数据集;30和60秒的持续时间。30秒和60秒的最佳识别率分别为97.37%和97.14%。研究人员认为,脑电图信号中包含了很多重要的信息,可以用来检测考生的生理状态,muse2设备可以可靠地记录脑电图信号。
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