| dc.description.abstract |
The project "Face Recognition Based Attendance System Using Deep Learning" aims
to modernize attendance tracking in educational institutions by incorporating deep
learning and facial recognition technologies. Traditional manual attendance systems
are often inaccurate, time-consuming, and susceptible to security issues like proxy
attendance. This system offers an automated solution by leveraging facial recognition
algorithms to identify students and mark their attendance in real time. The web-based
application is built using HTML, CSS, JavaScript, PHP, and MySQL to ensure
accessibility and functionality. It features an intuitive interface for administrators,
lecturers, and students, with functionalities like user authentication, student
enrollment, and course management. During enrollment, students’ facial data is
captured and stored for future identification. In class, the system uses face-api.js, a
JavaScript library built on deep learning algorithms, to process real-time webcam
images and automatically mark attendance by recognizing students' faces.
Administrators can easily manage faculty records, assign courses, and generate
detailed attendance reports, which can be exported to Excel for further analysis. The
integration of face-api.js ensures efficient, secure, and real-time face recognition, while
the MySQL database manages data storage with a focus on privacy and security. By
automating the attendance process, the system reduces administrative workload and
enhances accuracy. It also overcomes the limitations of traditional methods, offering
a scalable, secure, and user-friendly solution for modern educational environments.
This project represents a significant advancement in educational technology,
providing institutions with a reliable, real-time system that improves operational
efficiency and security in attendance tracking. |
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