Automated Real Time Detection of Suspicious Appearances Using Deep Learning
Security camera systems especially in public areas such as airports, courthouses or sports facilities etc. are used to find fugitive persons or detect suspicious behaviors manually under the monitoring of an operator. In hallway-like sections in public facilities, repeated appearances of an unknown...
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Hezarfen Aeronautics and Space Technologies Institue
2021-01-01
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Online Access: | http://jast.hho.edu.tr/index.php/JAST/article/view/446 |
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doaj-cf39876dd0224d92a5567a5207d1f93c2021-02-04T12:00:03ZengHezarfen Aeronautics and Space Technologies InstitueHavacılık ve Uzay Teknolojileri Dergisi1304-04482021-01-011417178Automated Real Time Detection of Suspicious Appearances Using Deep LearningMelek Tursun0https://orcid.org/0000-0003-4789-4120Ömer Çetin1https://orcid.org/0000-0001-5176-6338National Defense UniversityNational Defense UniversitySecurity camera systems especially in public areas such as airports, courthouses or sports facilities etc. are used to find fugitive persons or detect suspicious behaviors manually under the monitoring of an operator. In hallway-like sections in public facilities, repeated appearances of an unknown ordinary person in a short span of time can be defined as suspicious behavior. However, the fact that multiple cameras are monitored by a single operator makes it harder to detect suspicious behaviors especially in crowded fields. Therefore, support decision systems are required to support operator. If individuals are detected on images automatically and their appearances on the camera are recorded on a database by giving them a temporary identity, suspicious behaviors can be reported to an operator as a support decision system. For this reason, two different methods are used together as a hybrid solution in the study; a MTCNN based facial detection is used on the real time security camera images that currently provide face images, and an identification method, created with facial landmarks produced with a deep learning algorithm that was trained with res-net, was used on the obtained person’s face images. It has been presented that suspicious behaviors can be detected by interpreting the temporary identity information that was obtained. The success of the application was experimentally tested, and the causes of success and failures in the results were discussed.http://jast.hho.edu.tr/index.php/JAST/article/view/446detection of suspicious behaviorsmtcnndeep learningimage processing |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Melek Tursun Ömer Çetin |
spellingShingle |
Melek Tursun Ömer Çetin Automated Real Time Detection of Suspicious Appearances Using Deep Learning Havacılık ve Uzay Teknolojileri Dergisi detection of suspicious behaviors mtcnn deep learning image processing |
author_facet |
Melek Tursun Ömer Çetin |
author_sort |
Melek Tursun |
title |
Automated Real Time Detection of Suspicious Appearances Using Deep Learning |
title_short |
Automated Real Time Detection of Suspicious Appearances Using Deep Learning |
title_full |
Automated Real Time Detection of Suspicious Appearances Using Deep Learning |
title_fullStr |
Automated Real Time Detection of Suspicious Appearances Using Deep Learning |
title_full_unstemmed |
Automated Real Time Detection of Suspicious Appearances Using Deep Learning |
title_sort |
automated real time detection of suspicious appearances using deep learning |
publisher |
Hezarfen Aeronautics and Space Technologies Institue |
series |
Havacılık ve Uzay Teknolojileri Dergisi |
issn |
1304-0448 |
publishDate |
2021-01-01 |
description |
Security camera systems especially in public areas such as airports, courthouses or sports facilities etc. are used to find fugitive persons or detect suspicious behaviors manually under the monitoring of an operator. In hallway-like sections in public facilities, repeated appearances of an unknown ordinary person in a short span of time can be defined as suspicious behavior. However, the fact that multiple cameras are monitored by a single operator makes it harder to detect suspicious behaviors especially in crowded fields. Therefore, support decision systems are required to support operator. If individuals are detected on images automatically and their appearances on the camera are recorded on a database by giving them a temporary identity, suspicious behaviors can be reported to an operator as a support decision system. For this reason, two different methods are used together as a hybrid solution in the study; a MTCNN based facial detection is used on the real time security camera images that currently provide face images, and an identification method, created with facial landmarks produced with a deep learning algorithm that was trained with res-net, was used on the obtained person’s face images. It has been presented that suspicious behaviors can be detected by interpreting the temporary identity information that was obtained. The success of the application was experimentally tested, and the causes of success and failures in the results were discussed. |
topic |
detection of suspicious behaviors mtcnn deep learning image processing |
url |
http://jast.hho.edu.tr/index.php/JAST/article/view/446 |
work_keys_str_mv |
AT melektursun automatedrealtimedetectionofsuspiciousappearancesusingdeeplearning AT omercetin automatedrealtimedetectionofsuspiciousappearancesusingdeeplearning |
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