Deep Learning Approach for Violence Detection in Urban Areas

Today modern cities tend to grow rapidly. The increased population density brings new challenges in term of public safety. Crime and violence are hard to be detected and managed especially in specific crowd environments like music concerts, sport events or public meetings. To overcome this issue the...

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Main Authors: Baba Marius, Gui Vasile, Pescaru Dan
Format: Article
Language:English
Published: EDP Sciences 2019-01-01
Series:ITM Web of Conferences
Online Access:https://www.itm-conferences.org/articles/itmconf/pdf/2019/06/itmconf_iccmae2018_03009.pdf
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spelling doaj-20781c9fe529460bb7fcab2b58ef47032021-04-02T12:27:27ZengEDP SciencesITM Web of Conferences2271-20972019-01-01290300910.1051/itmconf/20192903009itmconf_iccmae2018_03009Deep Learning Approach for Violence Detection in Urban AreasBaba MariusGui VasilePescaru DanToday modern cities tend to grow rapidly. The increased population density brings new challenges in term of public safety. Crime and violence are hard to be detected and managed especially in specific crowd environments like music concerts, sport events or public meetings. To overcome this issue the city administration should implement monitoring systems capable of detecting and analysing such situations. The work presented here combines two approaches that enable implementation of an efficient solution adapted for this purpose. The first one involves sensor networks that prove to be cost effective solution in a smart city environment. They can benefit on the existing surveillance infrastructure and allows rapid deployment. The second approach uses deep learning techniques. They demonstrate outstanding performances in image and actions classification based on a prior learning process. By combining these two approaches we succeed to obtain a real-time and cost-effective solution designed for urban area surveillance networks.https://www.itm-conferences.org/articles/itmconf/pdf/2019/06/itmconf_iccmae2018_03009.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Baba Marius
Gui Vasile
Pescaru Dan
spellingShingle Baba Marius
Gui Vasile
Pescaru Dan
Deep Learning Approach for Violence Detection in Urban Areas
ITM Web of Conferences
author_facet Baba Marius
Gui Vasile
Pescaru Dan
author_sort Baba Marius
title Deep Learning Approach for Violence Detection in Urban Areas
title_short Deep Learning Approach for Violence Detection in Urban Areas
title_full Deep Learning Approach for Violence Detection in Urban Areas
title_fullStr Deep Learning Approach for Violence Detection in Urban Areas
title_full_unstemmed Deep Learning Approach for Violence Detection in Urban Areas
title_sort deep learning approach for violence detection in urban areas
publisher EDP Sciences
series ITM Web of Conferences
issn 2271-2097
publishDate 2019-01-01
description Today modern cities tend to grow rapidly. The increased population density brings new challenges in term of public safety. Crime and violence are hard to be detected and managed especially in specific crowd environments like music concerts, sport events or public meetings. To overcome this issue the city administration should implement monitoring systems capable of detecting and analysing such situations. The work presented here combines two approaches that enable implementation of an efficient solution adapted for this purpose. The first one involves sensor networks that prove to be cost effective solution in a smart city environment. They can benefit on the existing surveillance infrastructure and allows rapid deployment. The second approach uses deep learning techniques. They demonstrate outstanding performances in image and actions classification based on a prior learning process. By combining these two approaches we succeed to obtain a real-time and cost-effective solution designed for urban area surveillance networks.
url https://www.itm-conferences.org/articles/itmconf/pdf/2019/06/itmconf_iccmae2018_03009.pdf
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AT guivasile deeplearningapproachforviolencedetectioninurbanareas
AT pescarudan deeplearningapproachforviolencedetectioninurbanareas
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