Paper Title
Automatic Cheating Detection in Exam Hall Exam Hall Using Yolo with Face Recognition
Abstract
The proliferation of technology in education has raised concerns about academic integrity, particularly during
examinations. This study proposes an innovative approach for automatic cheating detection in exam halls using yolo with
face recognition techniques. By leveraging computer vision and machine learning algorithms, the system aims to monitor
students' activities during exams and detect suspicious behaviors indicative of cheating. The proposed system utilizes yolo
for real-time video analysis to identify faces and track students' movements. Face recognition algorithms are then applied to
authenticate students' identities and detect unauthorized individuals. Furthermore, the system employs image processing
techniques to analyze exam papers for signs of cheating, such as copying or referencing external materials. Through the
integration of these technologies, the proposed system offers a robust solution for enhancing exam integrity and maintaining
academic standards in educational institutions.
Keywords - Alogorithm, YOLOv7, CCTV, Pattern Recognition, Live Monitoring, Proctoring Software