基于人脸识别的在线考试监考模型检测作弊行为研究

Sucianna Ghadati Rabiha, I. H. Kartowisastro, Reina Setiawan, W. Budiharto
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引用次数: 0

摘要

考试是任何教育项目的重要组成部分,包括在线教育。在任何考试中,都有作弊的可能,因此检测和预防作弊是很重要的。本研究旨在对基于人脸识别的在线考试监控模型方法进行深入研究,以检测作弊行为。根据设计的纳入和排除标准,筛选出13项研究。从这些研究中,我们对每项研究中使用的人脸检测方法、人脸识别方法、初始特征、行为分析和评价指标进行了进一步的分析,为研究问题提供答案。最常用的人脸检测方法是Viola-Jones,呈现率为20%,其次是CNN和MTCNN,总呈现率为21%。在选定的研究中,使用最广泛的人脸识别方法是CNN,而metrics Accuracy是最常用的评估之一,其百分比为33%。而在网络考试中,通常用来检测作弊的特征包括面部表情和头部姿势,这两个特征占据了第一的位置。第二是眼球运动,第三是多脸注视估计和面部表情。其他在分析欺骗行为中也起作用的特征还有嘴部检测、面部矢量、地标位置、手势和姿势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey of Online Exam Proctoring Model to Detect Cheating Behavior based on Face Recognition
Exams are an important component of any educational program, including online education. In any test, there is a possibility of cheating, so its detection and prevention is important. This study aims to conduct an in-depth study of the online exam monitoring model approach based on facial recognition used to detect cheating. Based on the inclusion and exclusion criteria designed, 13 selected studies were obtained. From these studies, we conducted further analysis regarding the Face Detection Method, Face Recognition Method, Initial Feature, Behavior Analysis and Evaluation Metrics used in each study so as to provide answers to research questions. the most frequently used Face detection method was Viola-Jones with a presentation of 20%, then CNN and MTCNN with a total presentation of 21%. The most widely used face recognition method in selected studies is CNN and metrics Accuracy is one of the most frequently used evaluations with a percentage of 33%. While the features that are usually used to detect cheating during online exams include facial motion and head pose which occupies the first position. The second is eye movement, then multiple faces gaze estimation and facial expression is in third place. Other features that also play a role in analyzing cheating behavior are mouth detection, facial vector, landmark location, gesture and posture.
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