
handle: 10454/20167
This survey provides an insightful overview of recent advancements in facial recognition technology, mainly focusing on multi-modal face recognition and its applications in security biometrics and identity verification. Central to this study is the Sejong Face Database, among other prominent datasets, which facilitates the exploration of intricate aspects of facial recognition, including hidden and heterogeneous face recognition, cross-modality analysis, and thermal-visible face recognition. This paper delves into the challenges of accurately identifying faces under various conditions and disguises, emphasising its significance in security systems and sensitive sectors like banking. The survey highlights novel contributions such as using Generative Adversarial Networks (GANs) to generate synthetic disguised faces, Convolutional Neural Networks (CNNs) for feature extractions, and Fuzzy Extractors to integrate biometric verification with cryptographic security. The paper also discusses the impact of quantum computing on encryption techniques and the potential of post-quantum cryptographic methods to secure biometric systems. This survey is a critical resource for understanding current research and prospects in biometric authentication, balancing technological advancements with ethical and privacy concerns in an increasingly digital society.
Multi-modal face recognition, Deep learning techniques, multi-modal face recognition, Biometric authentication, security biometrics, Sejong face database, Surveys, Databases, Thermal analysis, Face recognition, Accuracy, Ethics, identity verification, Identity verification, Facial disguises, Quantum computing, 004, TK1-9971, Privacy, Machine learning models, deep learning techniques, Security biometrics, Feature extraction, Facial recognition (FR), Electrical engineering. Electronics. Nuclear engineering
Multi-modal face recognition, Deep learning techniques, multi-modal face recognition, Biometric authentication, security biometrics, Sejong face database, Surveys, Databases, Thermal analysis, Face recognition, Accuracy, Ethics, identity verification, Identity verification, Facial disguises, Quantum computing, 004, TK1-9971, Privacy, Machine learning models, deep learning techniques, Security biometrics, Feature extraction, Facial recognition (FR), Electrical engineering. Electronics. Nuclear engineering
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