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http://dx.doi.org/10.6109/jkiice.2016.20.8.1524

A Real-time Electronic Attendance-absence Recording System using Face Detection and Face Recognition  

Jeong, Pil-seong (FNS Value Co., Ltd.)
Cho, Yang-hyun (Division of Computer Science, Sahmyook University)
Abstract
Recently, research about an electronic attendance-absence recording system has been actively carried out using smart devices. Using an electronic attendance-absence recording system, professors can check their students' attendance on a real-time basis and manage their attendance records. In this paper, we proposed a real-time electronic attendance-absence recording system using face detection and face recognition based on web application. It can solve the spatial, temporal, cost issues belong to electronic attendance-absence recording system using AIDC(Automatic Identification and Data Capture). A proposed system is running on web server and made by HTML5(Hyper Text Markup Language ver.5). So professor connect to server using mobile web browser on mobile device and real-time manage electronic attendance-absence recording with real-time send or receive image data. In addition, the proposed system has an advantage capable of installation and operation, regardless of the operating system because it operates based on the Python flask framework.
Keywords
Face; Face Detection; Face Recognition; Electronic Attendance-absence Recording System; Machine Learning;
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