A Contactless Visitor Access Monitoring System
Main Article Content
Abstract
This project presents a contactless visitor access monitoring in small premises which implemented deep learning model in face recognition, develop the graphical user interface (GUI) for new visitor registration and visitor identification. Five stages of monitoring process are designed in the contactless visitor access monitoring (CVAM) GUI, the first step is to give instructions to the admin user regarding the monitoring process, the second step is to perform face recognition, the third step is to scan the body temperature, the fourth step is to perform mask detection on the visitor, and the final stage is to record visitor access time. Another visitor registration (VisReg) GUI is designed to register new visitors into the system. In VisReg, admin user is required to pre-process face images with MTCNN technique and generate new classifier with a ResNet pre-trained model. The contactless visitor access monitoring process is demonstrated. The face recognition gives an accuracy of 82%, while the mask detection gives an accuracy of 95% when tested with the validation dataset. It can be concluded that the visitor monitoring process can be carried out in a contactless way to eliminate the close contact between the security officers, receptionist, and visitors.
(Manuscript received: 29 March 2021 | Accepted: 6 October 2021 | Published: 8 November 2021)
Article Details
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
References
“Visitor Management Screenshots,” GeniSoftware, [Online]. Available: https://genisoftware.net/visitor-management-screenshots/. [Accessed 10 January 2021].
“Visitor Management Systems,” MicroEngine, [Online]. Available: https://www.microengine.net/visitor-management-system/. [Accessed 10 January 2021].
A. Khan, A. Sohail, U. Zahoora and A. S. Qureshi, “A survey of the recent architectures of deep convolutional neural networks,” Artificial Intelligence Review, pp. 1-62, 2020.
T. Sabharwal, T. Garg and S. V. Singh, “A Comparative Analysis of Various Deep Learning Models for Face Recognition,” in 2019 6th International Conference on Computing for Sustainable Global Development (INDIACom), 2019.
R. Ribani and M. Marengoni, “A survey of transfer learning for convolutional neural networks,” in 2019 32nd SIBGRAPI Conference on Graphics, Patterns and Images Tutorials (SIBGRAPI-T), 2019.
S. T. Krishna and H. K. Kalluri, “Deep learning and transfer learning approaches for image classification,” International Journal of Recent Technology and Engineering (IJRTE), vol. 7, pp. 427-432, 2019.
H. Ku and W. Dong, “Face Recognition Based on MTCNN and Convolutional Neural Network,” Frontiers in Signal Processing, vol. 4, pp. 37-42, 2020.
X. Chen, X. Luo, X. Liu and J. Fang, “Eyes localization algorithm based on prior MTCNN face detection,” in 2019 IEEE 8th Joint International Information Technology and Artificial Intelligence Conference (ITAIC), 2019.
H. Bhavsar and M. H. Panchal, “A review on support vector machine for data classification,” International Journal of Advanced Research in Computer Engineering & Technology (IJARCET), vol. 1, pp. 185-189, 2012.