A novel real-time multiple objects detection and tracking framework for different challenges

Recently, there was a lot of researches on real-time detection and tracking algorithms, as the frequent use of surveillance cameras and the expansion of its applications, especially in security and surveillance. However, many challenges have emerged that hinder monitoring systems' work, whether...

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Main Authors: Nuha H. Abdulghafoor, Hadeel N. Abdullah
Format: Article
Language:English
Published: Elsevier 2022-12-01
Series:Alexandria Engineering Journal
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S111001682200165X
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author Nuha H. Abdulghafoor
Hadeel N. Abdullah
author_facet Nuha H. Abdulghafoor
Hadeel N. Abdullah
author_sort Nuha H. Abdulghafoor
collection DOAJ
description Recently, there was a lot of researches on real-time detection and tracking algorithms, as the frequent use of surveillance cameras and the expansion of its applications, especially in security and surveillance. However, many challenges have emerged that hinder monitoring systems' work, whether in the detection or tracking stage. We propose a robust new algorithm to detect and track objects from natural scenes captured with real-time cameras to achieve this. This work aims to create a detection and tracking algorithm that is responsive to actual and fundamental changes. This algorithm is characterized by the detection of multiple moving creatures, limited resources, and different challenges. This algorithm combines principal component analysis and deep learning networks to make the most of these two approaches' advantages to achieve an intelligent detection and tracking system that works in real-time. It is done adaptively between the two approaches to enhance performance compared to the existing detection and tracking algorithms. The experimental results showed the new algorithm's effectiveness and efficiency by comparing it with other detection and tracking systems and obtaining good detection and classification accuracy.
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spelling doaj.art-5e243cd1e27d4e78a5baf41931a7b2022022-12-23T04:37:48ZengElsevierAlexandria Engineering Journal1110-01682022-12-01611296379647A novel real-time multiple objects detection and tracking framework for different challengesNuha H. Abdulghafoor0Hadeel N. Abdullah1Department of Electrical Engineering, University of Technology – Iraq, Baghdad, IraqCorresponding author.; Department of Electrical Engineering, University of Technology – Iraq, Baghdad, IraqRecently, there was a lot of researches on real-time detection and tracking algorithms, as the frequent use of surveillance cameras and the expansion of its applications, especially in security and surveillance. However, many challenges have emerged that hinder monitoring systems' work, whether in the detection or tracking stage. We propose a robust new algorithm to detect and track objects from natural scenes captured with real-time cameras to achieve this. This work aims to create a detection and tracking algorithm that is responsive to actual and fundamental changes. This algorithm is characterized by the detection of multiple moving creatures, limited resources, and different challenges. This algorithm combines principal component analysis and deep learning networks to make the most of these two approaches' advantages to achieve an intelligent detection and tracking system that works in real-time. It is done adaptively between the two approaches to enhance performance compared to the existing detection and tracking algorithms. The experimental results showed the new algorithm's effectiveness and efficiency by comparing it with other detection and tracking systems and obtaining good detection and classification accuracy.http://www.sciencedirect.com/science/article/pii/S111001682200165XMultiple object detectionMultiple object trackingClassificationDeep-learningPCP
spellingShingle Nuha H. Abdulghafoor
Hadeel N. Abdullah
A novel real-time multiple objects detection and tracking framework for different challenges
Alexandria Engineering Journal
Multiple object detection
Multiple object tracking
Classification
Deep-learning
PCP
title A novel real-time multiple objects detection and tracking framework for different challenges
title_full A novel real-time multiple objects detection and tracking framework for different challenges
title_fullStr A novel real-time multiple objects detection and tracking framework for different challenges
title_full_unstemmed A novel real-time multiple objects detection and tracking framework for different challenges
title_short A novel real-time multiple objects detection and tracking framework for different challenges
title_sort novel real time multiple objects detection and tracking framework for different challenges
topic Multiple object detection
Multiple object tracking
Classification
Deep-learning
PCP
url http://www.sciencedirect.com/science/article/pii/S111001682200165X
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