Video Surveillance System with a Deep Learning Approach

Abstract— The application of in-depth learning methods has been successfully applied in computer vision task with the ability to learn the features of differences in real world images by directly from the original image by passing layer after layer to get the high dimensions image, in this study we...

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Main Authors: Puji Lestari, David Hamonangan D. Manik, Nurseve Lina Br Sihotang, Amir Mahmud Husein
Format: Article
Language:English
Published: Politeknik Ganesha Medan 2019-10-01
Series:Sinkron
Online Access:https://jurnal.polgan.ac.id/index.php/sinkron/article/view/10247
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spelling doaj-5fdd0b9d26f9463cbd114515bf5a98b02020-11-25T03:28:17ZengPoliteknik Ganesha MedanSinkron2541-044X2541-20192019-10-014126326710.33395/sinkron.v4i1.1024710247Video Surveillance System with a Deep Learning ApproachPuji Lestari0David Hamonangan D. Manik1Nurseve Lina Br Sihotang2Amir Mahmud Husein3Nurseve Lina Br Sihotang, David Hamonangan D.ManikUniversitas Prima IndonesiaUniversitas Prima IndonesiaUniversitas Prima IndonesiaAbstract— The application of in-depth learning methods has been successfully applied in computer vision task with the ability to learn the features of differences in real world images by directly from the original image by passing layer after layer to get the high dimensions image, in this study we applied the YOLO method approach with network adaptation features based on Darknet-53 on a video dataset recorded by the activities of University of Indonesia Prima (UNPRI) students with are conditions of video with different objects as a surveillance system, based on the results of research into object classification produces an overall accuracy of 93%, but for the classification of objects bikes, buses, and cars have the lowest accuracy of 30% for bikes, 54% of cars and buses by 40% so it is necessary to develop methods to improve accuracy.https://jurnal.polgan.ac.id/index.php/sinkron/article/view/10247
collection DOAJ
language English
format Article
sources DOAJ
author Puji Lestari
David Hamonangan D. Manik
Nurseve Lina Br Sihotang
Amir Mahmud Husein
spellingShingle Puji Lestari
David Hamonangan D. Manik
Nurseve Lina Br Sihotang
Amir Mahmud Husein
Video Surveillance System with a Deep Learning Approach
Sinkron
author_facet Puji Lestari
David Hamonangan D. Manik
Nurseve Lina Br Sihotang
Amir Mahmud Husein
author_sort Puji Lestari
title Video Surveillance System with a Deep Learning Approach
title_short Video Surveillance System with a Deep Learning Approach
title_full Video Surveillance System with a Deep Learning Approach
title_fullStr Video Surveillance System with a Deep Learning Approach
title_full_unstemmed Video Surveillance System with a Deep Learning Approach
title_sort video surveillance system with a deep learning approach
publisher Politeknik Ganesha Medan
series Sinkron
issn 2541-044X
2541-2019
publishDate 2019-10-01
description Abstract— The application of in-depth learning methods has been successfully applied in computer vision task with the ability to learn the features of differences in real world images by directly from the original image by passing layer after layer to get the high dimensions image, in this study we applied the YOLO method approach with network adaptation features based on Darknet-53 on a video dataset recorded by the activities of University of Indonesia Prima (UNPRI) students with are conditions of video with different objects as a surveillance system, based on the results of research into object classification produces an overall accuracy of 93%, but for the classification of objects bikes, buses, and cars have the lowest accuracy of 30% for bikes, 54% of cars and buses by 40% so it is necessary to develop methods to improve accuracy.
url https://jurnal.polgan.ac.id/index.php/sinkron/article/view/10247
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AT davidhamonangandmanik videosurveillancesystemwithadeeplearningapproach
AT nursevelinabrsihotang videosurveillancesystemwithadeeplearningapproach
AT amirmahmudhusein videosurveillancesystemwithadeeplearningapproach
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