Збережено в:
| Автори: | , , |
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| Формат: | Recurso digital |
| Мова: | |
| Опубліковано: |
Zenodo
2025
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| Предмети: | |
| Онлайн доступ: | https://doi.org/10.5281/zenodo.15425401 |
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Зміст:
- <p><strong><span lang="UZ">Abstract:</span></strong><span lang="UZ">Facial recognition technology (FRT) has undergone significant evolution, transforming from basic manual feature extraction methods to advanced AI-driven systems. Initially limited by computational constraints, early methods such as Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) improved facial recognition by reducing dimensionality and enhancing feature separability. However, these approaches struggled with variations in lighting, pose, and expressions. The emergence of deep learning, particularly Convolutional Neural Networks (CNNs) and models like FaceNet, has revolutionized the field by enabling automatic feature extraction and high-accuracy recognition. Today, FRT is widely implemented in security applications, including law enforcement, border control, and cybersecurity. Despite its benefits, concerns regarding privacy, bias, and adversarial attacks persist. This paper explores the evolution of FRT in security systems, covering historical developments, technological breakthroughs, real-world applications, and future challenges. It also discusses algorithmic advancements, including the use of triplet loss functions in deep learning models, and presents an analysis of security-related use cases. The findings indicate that while FRT has significantly enhanced security and efficiency, ethical and regulatory considerations must be addressed to ensure responsible implementation. Future research should focus on bias mitigation, blockchain-based authentication, and explainable AI to enhance transparency and fairness in FRT applications.</span></p>