Automatic Cigarette Object Concealment in Video using R-CNN

Cigarettes are packaged processed tobacco products, produced from the Nicotiana Tabacum, Nicotiana Rustica plants and other species or synthetics that contain nicotine with or without additives. Smoking is known to the public as one of the causes of death in the world that is quite large such as ast...

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Main Authors: Kadek Utari Widiarsini, Duman Care Khrisne, I Made Arsa Suyadnya
Format: Article
Language:English
Published: Universitas Udayana 2021-02-01
Series:Journal of Electrical, Electronics and Informatics
Online Access:https://ojs.unud.ac.id/index.php/JEEI/article/view/70905
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spelling doaj-ef3f57fbf09940d088a3a358cdc3a79c2021-03-02T05:13:31ZengUniversitas UdayanaJournal of Electrical, Electronics and Informatics2549-83042622-03932021-02-0151212410.24843/JEEI.2021.v05.i01.p0470905Automatic Cigarette Object Concealment in Video using R-CNNKadek Utari Widiarsini0Duman Care Khrisne1I Made Arsa Suyadnya2Udayana UniversityUdayana UniversityUdayana UniversityCigarettes are packaged processed tobacco products, produced from the Nicotiana Tabacum, Nicotiana Rustica plants and other species or synthetics that contain nicotine with or without additives. Smoking is known to the public as one of the causes of death in the world that is quite large such as asthma, lung infections, oral cancer, throat cancer, lung cancer, heart attacks, strokes, dementia, erectile dysfunction (impotence), and so on. This research aims to build an application that can recognize cigarettes automatically and conceal pictures so that people especially minors are not affected by cigarettes. The application is built using the Region-based Convolutional Neural Network (R-CNN) method. The study uses images that have cigarette objects in them. The test is carried out to find out the application performance such as the level of application accuracy in recognizing cigarette objects. Based on the test results with a sample of 126 cigarette images, the application built is able to recognize cigarette objects by obtaining an accuracy value of 63%.https://ojs.unud.ac.id/index.php/JEEI/article/view/70905
collection DOAJ
language English
format Article
sources DOAJ
author Kadek Utari Widiarsini
Duman Care Khrisne
I Made Arsa Suyadnya
spellingShingle Kadek Utari Widiarsini
Duman Care Khrisne
I Made Arsa Suyadnya
Automatic Cigarette Object Concealment in Video using R-CNN
Journal of Electrical, Electronics and Informatics
author_facet Kadek Utari Widiarsini
Duman Care Khrisne
I Made Arsa Suyadnya
author_sort Kadek Utari Widiarsini
title Automatic Cigarette Object Concealment in Video using R-CNN
title_short Automatic Cigarette Object Concealment in Video using R-CNN
title_full Automatic Cigarette Object Concealment in Video using R-CNN
title_fullStr Automatic Cigarette Object Concealment in Video using R-CNN
title_full_unstemmed Automatic Cigarette Object Concealment in Video using R-CNN
title_sort automatic cigarette object concealment in video using r-cnn
publisher Universitas Udayana
series Journal of Electrical, Electronics and Informatics
issn 2549-8304
2622-0393
publishDate 2021-02-01
description Cigarettes are packaged processed tobacco products, produced from the Nicotiana Tabacum, Nicotiana Rustica plants and other species or synthetics that contain nicotine with or without additives. Smoking is known to the public as one of the causes of death in the world that is quite large such as asthma, lung infections, oral cancer, throat cancer, lung cancer, heart attacks, strokes, dementia, erectile dysfunction (impotence), and so on. This research aims to build an application that can recognize cigarettes automatically and conceal pictures so that people especially minors are not affected by cigarettes. The application is built using the Region-based Convolutional Neural Network (R-CNN) method. The study uses images that have cigarette objects in them. The test is carried out to find out the application performance such as the level of application accuracy in recognizing cigarette objects. Based on the test results with a sample of 126 cigarette images, the application built is able to recognize cigarette objects by obtaining an accuracy value of 63%.
url https://ojs.unud.ac.id/index.php/JEEI/article/view/70905
work_keys_str_mv AT kadekutariwidiarsini automaticcigaretteobjectconcealmentinvideousingrcnn
AT dumancarekhrisne automaticcigaretteobjectconcealmentinvideousingrcnn
AT imadearsasuyadnya automaticcigaretteobjectconcealmentinvideousingrcnn
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