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AI-Driven Secure Real-Time Facial Recognition Attendance System with Anti-Spoofing Measures
Dr.H.Sribhuvaneshwari, Assistant Professor,
Department of Electronics and Communication Engineering,
Sri Shakthi Institute of Engineering and Technology, L&T Bypass, Coimbatore, drsribhuvaneshwarihphd@gmail.com
Varun A, Vetrivel K, Sujith R, Yukendran M
Department of Electronics and Communication Engineering,
Sri Shakthi Institute of Engineering and Technology, L&T Bypass, Coimbatore
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Abstract - Efficient and secure attendance tracking has become a necessity in today’s fast-paced environments, particularly in educational institutions, corporate offices, and other workplaces. Traditional attendance management methods, such as manual registers and RFID-based systems, are often susceptible to fraudulent activities, including proxy attendance and identity spoofing. To address these challenges, the proposed system leverages Artificial Intelligence (AI) and Machine Learning (ML) to develop a real-time facial recognition attendance system with robust anti-spoofing measures. This system ensures high accuracy, efficiency, and security, eliminating the need for physical intervention.The facial recognition system is powered by deep learning-based models that enable high-speed, real-time detection and verification of individuals. It employs convolutional neural networks (CNNs) for facial feature extraction and classification, ensuring precise identification under diverse conditions such as variations in lighting, facial angles, and expressions. To counter spoofing attacks, the system integrates liveness detection techniques that differentiate real human faces from printed photos, videos, or masks. These anti-spoofing mechanisms, including blink detection, depth sensing, and texture analysis, enhance the reliability of the system.One of the key advantages of this system is its ability to operate in dynamic environments with minimal human intervention. It enables automated attendance logging and record-keeping, reducing administrative workload and eliminating errors associated with manual entry. Additionally, the system supports seamless integration with cloud storage and databases, ensuring secure and scalable data management. The encrypted attendance records prevent unauthorized access and tampering, reinforcing data integrity and privacy.Furthermore, the real-time processing capability of the system allows instant verification and authentication, making it suitable for large-scale applications. The proposed solution is designed to be adaptive and expandable, allowing customization for various industries, including educational institutions, corporate sectors, and high-security zones. The implementation of AI-driven facial recognition technology enhances both convenience and security, ensuring an efficient and fraud-resistant attendance management system.
Keywords: Facial Recognition, Artificial Intelligence, Machine Learning, Real-time Processing, Anti-Spoofing, Authentication, Liveness Detection, Secure Attendance System, Deep Learning, Fraud Prevention, Data Security, Automated Logging, Cloud Integration.