Intelligent Access Control System for Classrooms
https://doi.org/10.35596/1729-7648-2025-31-4-47-54
Abstract
The article presents a diagram of an intelligent access control system, including a camera directed at entrance to the pemises, an operator, and an application on the operator՚s computer. Requirements for an access control system application for facial recognition from various video sources, an easy-to-use user interface, and modularity for easy system expansion are formulated. The developed intelligent access control system allows teachers to control attendance at classes, is capable of capturing videos from various video sources thanks to recognition and tracking algorithms, and is resistant to low video quality.
About the Authors
S. S. IndziukouBelarus
Indziukou S. S., Student
Minsk
V. A. Chuyko
Belarus
Chuyko Vladislav Aleksandrovich, Mr. Sci. (Phys. and Math.), Senior Lecturer at the Department of Intelligent Systems
220064, Minsk, Kurchatovа St., 5
Tel.: +375 29 853-07-96
A. I. Kozlova
Belarus
Kozlova A. I., Cand. Sci. (Phys. and Math.), Associate Professor, Head of the Department of Intelligent Systems
Minsk
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Review
For citations:
Indziukou S.S., Chuyko V.A., Kozlova A.I. Intelligent Access Control System for Classrooms. Digital Transformation. 2025;31(4):47-54. (In Russ.) https://doi.org/10.35596/1729-7648-2025-31-4-47-54


















