Exam Cheating Detection System with Multiple-Human Pose Estimation
Date
19/11/2021
Journal Title
Journal ISSN
Volume Title
Type
Article
Publisher
Institute of Electrical and Electronics Engineers
Series Info
2021 IEEE International Conference on Computing, ICOCO 2021Pages 236 - 2402021 2021 IEEE International Conference on Computing;Code 176430
Scientific Journal Rankings
Abstract
Cheating in exams is a persistent problem that contributes to academic dishonesty. In this paper we explore a variety of related work proposed as a solution for exam cheating, then we propose an exam cheating detection system that works for both on-site and online examinations. The proposed system applies Human Pose Estimation that includes both single-user and multiple-user tracking algorithms. Based on video footage, the system can detect whether or not a student is cheating by continuously validating their head posture and hand movement conditions during the exam. The system doesn't fully imply a student is cheating, instead, we use the term 'warning' for the output to indicate that the student has met an abnormal condition that is similar to cheating behavior. At last, we validate the system usage in real-life examination environments through two different experiments that resulted in accuracy numbers of 92%-97% in cheating detection.
Description
Scopus
Keywords
Exam cheating detection, multiple-human pose estimation, tracking on-site and online cheating