Author
Listed:
- George SUCIU
(BEIA Consult International, Bucharest, Romania)
- Răzvan BRĂTULESCU
(BEIA Consult International, Bucharest, Romania)
- Robert FLORESCU
(BEIA Consult International, Bucharest, Romania)
- Vlad-Constantin STĂNESCU
(BEIA Consult International, Bucharest, Romania)
- Mari-Anais SACHIAN
(Beia Consult International, Bucharest, Romania)
- Teodor-Matei BÎRLEANU
(BEIA Consult International, Bucharest, Romania)
Abstract
Facial recognition has come a long way, evolving from simple image processing techniques to powerful AI-driven tools. In this article, we take a closer look at how these technologies, both classical and modern,can be used to support something as critical as border security. Our focus is on a practical application we developed, designed to verify a person’s identity by comparing their face to a database of known individuals. The system uses a combination of Haarcascade classifiers (a classic approach for face detection) and neural networks based on deep learning to improve accuracy and adaptability. Built with OpenCV, the application follows a straightforward process: a new face is uploaded, analysed, and eithermatched or flagged as unknown. What makes this work interesting is the balance it strikes between speed and reliability, qualities that are essential in a fast-paced border control setting. We show that even with lightweight tools, solid results can be achieved, and when combined with more advanced AI models, the system becomes even more robust. Our goal wasn’t just to explore the tech, but to show how these tools can be applied in real-world scenarios where security really matters. This study adds to the ongoing conversation around biometrics and AI, and we hope it sparks further exploration into how these technologies can help make borders safer and smarter.
Suggested Citation
George SUCIU & Răzvan BRĂTULESCU & Robert FLORESCU & Vlad-Constantin STĂNESCU & Mari-Anais SACHIAN & Teodor-Matei BÎRLEANU, 2025.
"Facial detection for border security,"
International Conference on Machine Intelligence & Security for Smart Cities (TRUST) Proceedings, Smart-EDU Hub, Faculty of Public Administration, National University of Political Studies & Public Administration, vol. 2, pages 119-132, december.
Handle:
RePEc:pop:trustp:v:2:y:2025:p:119-132
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JEL classification:
- O35 - Economic Development, Innovation, Technological Change, and Growth - - Innovation; Research and Development; Technological Change; Intellectual Property Rights - - - Social Innovation
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