CREATING AN ALGORITHM AND SOFTWARE TOOL FOR PERSONAL IDENTIFICATION USING FACIAL SCANNING TO PROTECT THE OPERATING SYSTEM
Authors: Usmonov Maxsud Tulqin o‘g’li
Affiliation: National University of Uzbekistan
Category:
Keywords: Python, Operating system, Security, Face ID, Personal identification, Biometrics, Facial recognition algorithms, Windows, Protection system
ABSTRACT. This scientific article analyzes the process of creating an algorithm and software tool for personal identification using face scanning to protect the operating system. The article covers the principle of operation of the Face ID program developed based on the Python programming language, identification algorithms, technical and software tools that ensure security, and real-time authentication methods. The effectiveness, security level, and practical application of the protection system created for the Windows operating system are also evaluated.
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