Deep Learning in Face Recognition for Attendance System: An Exploratory Study

Conventional-manual type of attendance systems can be very time-consuming to some extent, particularly for a significant number. The existence of face recognition technology can solve the inefficiency and ineffectiveness of conventional and manual attendance systems. Among many approaches to implem...

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Main Authors: Mochamad Azkal Azkiya Aziz, Shahrinaz Ismail, Noormadinah Allias
Format: Article
Language:English
Published: Faculty of Computer and Mathematical Sciences, Universiti Teknologi MARA Perlis 2022-09-01
Series:Journal of Computing Research and Innovation
Subjects:
Online Access:https://jcrinn.com/index.php/jcrinn/article/view/288
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author Mochamad Azkal Azkiya Aziz
Shahrinaz Ismail
Noormadinah Allias
author_facet Mochamad Azkal Azkiya Aziz
Shahrinaz Ismail
Noormadinah Allias
author_sort Mochamad Azkal Azkiya Aziz
collection DOAJ
description Conventional-manual type of attendance systems can be very time-consuming to some extent, particularly for a significant number. The existence of face recognition technology can solve the inefficiency and ineffectiveness of conventional and manual attendance systems. Among many approaches to implement face recognition, this research focuses on using deep learning approaches as it has been proven to give promising results. There are various algorithms for face recognition, such as Local Binary Pattern Histogram (LBPH), Local Binary Pattern Network (LBPn), Haar Cascade, and Convolutional Neural Network. The use of deep learning can reach 98 percent accuracy. However, it is necessary to conduct further research on its implementation on the real system in order to evaluate the efficiency of the system.  An interview was conducted with an expert in the field, to understand the concept, trend, and use of deep learning in face recognition, as well as to determine the suitable algorithm for the attendance system.  This paper presents the results from this interview, which provide an insight based on real practices.
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spelling doaj.art-c3c0b7799de44a0bb296e456f1f1daa22024-09-06T21:11:36ZengFaculty of Computer and Mathematical Sciences, Universiti Teknologi MARA PerlisJournal of Computing Research and Innovation2600-87932022-09-0172Deep Learning in Face Recognition for Attendance System: An Exploratory StudyMochamad Azkal Azkiya Aziz0Shahrinaz Ismail1Noormadinah Allias2Albukhary International UniversityAlbukhary International UniversityAlbukhary International University Conventional-manual type of attendance systems can be very time-consuming to some extent, particularly for a significant number. The existence of face recognition technology can solve the inefficiency and ineffectiveness of conventional and manual attendance systems. Among many approaches to implement face recognition, this research focuses on using deep learning approaches as it has been proven to give promising results. There are various algorithms for face recognition, such as Local Binary Pattern Histogram (LBPH), Local Binary Pattern Network (LBPn), Haar Cascade, and Convolutional Neural Network. The use of deep learning can reach 98 percent accuracy. However, it is necessary to conduct further research on its implementation on the real system in order to evaluate the efficiency of the system.  An interview was conducted with an expert in the field, to understand the concept, trend, and use of deep learning in face recognition, as well as to determine the suitable algorithm for the attendance system.  This paper presents the results from this interview, which provide an insight based on real practices. https://jcrinn.com/index.php/jcrinn/article/view/288face recognitionLocal Binary NetworkLocal Binary Pattern Histogramdeep learningattendance system
spellingShingle Mochamad Azkal Azkiya Aziz
Shahrinaz Ismail
Noormadinah Allias
Deep Learning in Face Recognition for Attendance System: An Exploratory Study
Journal of Computing Research and Innovation
face recognition
Local Binary Network
Local Binary Pattern Histogram
deep learning
attendance system
title Deep Learning in Face Recognition for Attendance System: An Exploratory Study
title_full Deep Learning in Face Recognition for Attendance System: An Exploratory Study
title_fullStr Deep Learning in Face Recognition for Attendance System: An Exploratory Study
title_full_unstemmed Deep Learning in Face Recognition for Attendance System: An Exploratory Study
title_short Deep Learning in Face Recognition for Attendance System: An Exploratory Study
title_sort deep learning in face recognition for attendance system an exploratory study
topic face recognition
Local Binary Network
Local Binary Pattern Histogram
deep learning
attendance system
url https://jcrinn.com/index.php/jcrinn/article/view/288
work_keys_str_mv AT mochamadazkalazkiyaaziz deeplearninginfacerecognitionforattendancesystemanexploratorystudy
AT shahrinazismail deeplearninginfacerecognitionforattendancesystemanexploratorystudy
AT noormadinahallias deeplearninginfacerecognitionforattendancesystemanexploratorystudy