Affiliation:
1. Surigao del Norte State University, Surigao City, Philippines
Abstract
Computer Vision marked a significant contribution to the application of automated attendance marking. This technology captures the face of an individual facing in an image-capturing device such as a camera. This study developed a face recognition attendance marking based onthe machine learning method. Computer Vision libraries from OpenCV such as Haar Cascade Classifier and Local Binary Pattern Histogram were used for identification and recognition. Images were collected from 8 participating individuals. The images were clustered according to their name (label). These images were used for training to create a face recognition model. Real-time testing was performed to evaluate the system’s performance. The results generated a mean recognition accuracy of 95% which implies a significant basis for the application of the system to attendance marking
Reference8 articles.
1. S.C.Hoo and H.Ibrahim, Biometric-Based Attendance Tracking System for Education Sectors: A Literature Survey on Hardware Requirements. Journal of Sensors, 2019, vol. 2019.
2. R.Ullah, et al., A Real-Time Framework for Human Face Detection and Recognition in CCTV Images. Mathematical Problems in Engineering, 2022, vol. 22.
3. F.P.Mahdi, et al., Face Recognition-based Real-time System for Surveillance. Intelligent Decision Technologies, 2017, vol. 11, pp. 79-92
4. A.B.G. Santos, N.P. Balba, and C.B. Rebong, Attendance Monitoring System of Schools in the Philippine with an Inclusion of Optimization Query Algorithm. International Journal of Innovative Technology and Exploring Engineering, 2021, vol. 10.
5. P. Gowsikraja, et al., Object Detection using Haar Cascade Machine Learning Algorithm. Internatinal Journal of Creative Research Thoughts, 2022, vol. 10.