Face Recognition for Personal Data Collection using Eigenface, Support Vector Machine, and Viola Jones Method

Personal data recording through facial recognition is a modern solution for individual identification; however, the main challenge lies in the accuracy and reliability of the system under various conditions. This study examines the implementation of machine learning as a solution, utilizing video an...

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Main Authors: Lalu Zazuli Azhar Mardedi, Muhammad Zulfikri, Moch. Syahrir, Kurniadin Abd. Latif, Apriani Apriani
Format: Article
Language:Indonesian
Published: Islamic University of Indragiri 2025-01-01
Series:Sistemasi: Jurnal Sistem Informasi
Online Access:https://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/4728
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author Lalu Zazuli Azhar Mardedi
Muhammad Zulfikri
Moch. Syahrir
Kurniadin Abd. Latif
Apriani Apriani
author_facet Lalu Zazuli Azhar Mardedi
Muhammad Zulfikri
Moch. Syahrir
Kurniadin Abd. Latif
Apriani Apriani
author_sort Lalu Zazuli Azhar Mardedi
collection DOAJ
description Personal data recording through facial recognition is a modern solution for individual identification; however, the main challenge lies in the accuracy and reliability of the system under various conditions. This study examines the implementation of machine learning as a solution, utilizing video and photo data for face detection and recognition. The study’s goal is to evaluate the effectiveness of facial image recognition by combining several methods, aiming for practical application across diverse settings, such as offices and schools. The methodology includes segmentation testing for edge detection, feature extraction, and real-time recognition. The system was developed using Eigenface, Support Vector Machine, and Viola-Jones methods, trained over 20 sessions. The results indicate that the system can recognize faces under both daytime and nighttime conditions, achieving 87% accuracy during the day and 81% at night. These findings make a significant contribution to the development of security systems based on facial recognition and emphasize the potential of this technology to enhance personal data security across various contexts
format Article
id doaj-art-ff901364aabd42f193bed924384f05e0
institution DOAJ
issn 2302-8149
2540-9719
language Indonesian
publishDate 2025-01-01
publisher Islamic University of Indragiri
record_format Article
series Sistemasi: Jurnal Sistem Informasi
spelling doaj-art-ff901364aabd42f193bed924384f05e02025-08-20T03:13:14ZindIslamic University of IndragiriSistemasi: Jurnal Sistem Informasi2302-81492540-97192025-01-0114113514610.32520/stmsi.v14i1.4728943Face Recognition for Personal Data Collection using Eigenface, Support Vector Machine, and Viola Jones MethodLalu Zazuli Azhar Mardedi0Muhammad Zulfikri1Moch. Syahrir2Kurniadin Abd. Latif3Apriani Apriani4Bumigora UniversityBumigora UniversityBumigora UniversityBumigora UniversityBumigora UniversityPersonal data recording through facial recognition is a modern solution for individual identification; however, the main challenge lies in the accuracy and reliability of the system under various conditions. This study examines the implementation of machine learning as a solution, utilizing video and photo data for face detection and recognition. The study’s goal is to evaluate the effectiveness of facial image recognition by combining several methods, aiming for practical application across diverse settings, such as offices and schools. The methodology includes segmentation testing for edge detection, feature extraction, and real-time recognition. The system was developed using Eigenface, Support Vector Machine, and Viola-Jones methods, trained over 20 sessions. The results indicate that the system can recognize faces under both daytime and nighttime conditions, achieving 87% accuracy during the day and 81% at night. These findings make a significant contribution to the development of security systems based on facial recognition and emphasize the potential of this technology to enhance personal data security across various contextshttps://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/4728
spellingShingle Lalu Zazuli Azhar Mardedi
Muhammad Zulfikri
Moch. Syahrir
Kurniadin Abd. Latif
Apriani Apriani
Face Recognition for Personal Data Collection using Eigenface, Support Vector Machine, and Viola Jones Method
Sistemasi: Jurnal Sistem Informasi
title Face Recognition for Personal Data Collection using Eigenface, Support Vector Machine, and Viola Jones Method
title_full Face Recognition for Personal Data Collection using Eigenface, Support Vector Machine, and Viola Jones Method
title_fullStr Face Recognition for Personal Data Collection using Eigenface, Support Vector Machine, and Viola Jones Method
title_full_unstemmed Face Recognition for Personal Data Collection using Eigenface, Support Vector Machine, and Viola Jones Method
title_short Face Recognition for Personal Data Collection using Eigenface, Support Vector Machine, and Viola Jones Method
title_sort face recognition for personal data collection using eigenface support vector machine and viola jones method
url https://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/4728
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