Class Attendance System in Education with Deep Learning Method
H\"udaverdi Demir, Serkan Sava\c{s}

TL;DR
This paper presents a deep learning-based facial recognition system to automate class attendance by analyzing real-time images, enhancing security and efficiency in educational environments.
Contribution
It introduces a novel deep learning method for real-time student attendance tracking using facial recognition in educational settings.
Findings
Successfully implemented facial recognition for attendance
Real-time image processing for security enhancement
Application demonstrated in a real school environment
Abstract
With the advancing technology, the hardware gain of computers and the increase in the processing capacity of processors have facilitated the processing of instantaneous and real-time images. Face recognition processes are also studies in the field of image processing. Facial recognition processes are frequently used in security applications and commercial applications. Especially in the last 20 years, the high performances of artificial intelligence (AI) studies have contributed to the spread of these studies in many different fields. Education is one of them. The potential and advantages of using AI in education; can be grouped under three headings: student, teacher, and institution. One of the institutional studies may be the security of educational environments and the contribution of automation to education and training processes. From this point of view, deep learning methods, one…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Advanced Neural Network Applications
