Automated Decision Technique for the Crowd Estimation Method Using Thermal Videos

Counting and detecting the pedestrians is an important and critical aspect for several applications such as estimation of crowd density, organization of events, individual’s flow control, and surveillance systems to prevent the difficulties and overcrowding in a huge gathering of pedestrians such as...

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Main Authors: Nermin K. Negied, Ayman El-Sayed, Asmaa S. Hassaan
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Applied Computational Intelligence and Soft Computing
Online Access:http://dx.doi.org/10.1155/2022/7782879
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author Nermin K. Negied
Ayman El-Sayed
Asmaa S. Hassaan
author_facet Nermin K. Negied
Ayman El-Sayed
Asmaa S. Hassaan
author_sort Nermin K. Negied
collection DOAJ
description Counting and detecting the pedestrians is an important and critical aspect for several applications such as estimation of crowd density, organization of events, individual’s flow control, and surveillance systems to prevent the difficulties and overcrowding in a huge gathering of pedestrians such as the Hajj occasion, which is the annual event for Muslims with the growing number of pilgrims every year. This paper is based on applying some enhancements to two different techniques for automatically estimating the crowd density. These two approaches are based on individual motion and the body’s thermal features. Theessential characteristic of crowd counting techniques is that they do not require a previously stored and trained data; instead they use a live video stream as input. Also, it does not require any intervention from individuals. So, this feature makes it easy to automatically estimate the crowd density. What makes this work special than other approaches in literature is the use of thermal videos, and not just relying on a way or combining several ways to get the crowd size but also analyzing the results to decide which approach is better considering different cases of scenes. This work aims at estimating the crowd density using two methods and decide which method is better and more accurate depending on the case of the scene; i.e., this work measures the crowd size from videos using the heat signature and motion analysis of the human body, plus using the results analysis of both approaches to decide which approach is better. The better approach can vary from video-to-video according to many factors such as the motion state of humans in this video, the occlusion amount, etc. Both approaches are discussed in this paper. The first one is based on capturing the thermal features of an individual and the second one is based on detecting the features of an individual motion. The result of these approaches has been discussed, and different experiments were conducted to prove and identify the most accurate approach. The experimental results prove the advancement of the approach proposed in this paper over the literature as indicated in the result section.
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spelling doaj-art-da3442250ef04723ac6adc0ca67e48712025-02-03T01:00:44ZengWileyApplied Computational Intelligence and Soft Computing1687-97322022-01-01202210.1155/2022/7782879Automated Decision Technique for the Crowd Estimation Method Using Thermal VideosNermin K. Negied0Ayman El-Sayed1Asmaa S. Hassaan2Communication and Information Engineering DepartmentComputer Science and Engineering DepartmentComputer Science and Engineering DepartmentCounting and detecting the pedestrians is an important and critical aspect for several applications such as estimation of crowd density, organization of events, individual’s flow control, and surveillance systems to prevent the difficulties and overcrowding in a huge gathering of pedestrians such as the Hajj occasion, which is the annual event for Muslims with the growing number of pilgrims every year. This paper is based on applying some enhancements to two different techniques for automatically estimating the crowd density. These two approaches are based on individual motion and the body’s thermal features. Theessential characteristic of crowd counting techniques is that they do not require a previously stored and trained data; instead they use a live video stream as input. Also, it does not require any intervention from individuals. So, this feature makes it easy to automatically estimate the crowd density. What makes this work special than other approaches in literature is the use of thermal videos, and not just relying on a way or combining several ways to get the crowd size but also analyzing the results to decide which approach is better considering different cases of scenes. This work aims at estimating the crowd density using two methods and decide which method is better and more accurate depending on the case of the scene; i.e., this work measures the crowd size from videos using the heat signature and motion analysis of the human body, plus using the results analysis of both approaches to decide which approach is better. The better approach can vary from video-to-video according to many factors such as the motion state of humans in this video, the occlusion amount, etc. Both approaches are discussed in this paper. The first one is based on capturing the thermal features of an individual and the second one is based on detecting the features of an individual motion. The result of these approaches has been discussed, and different experiments were conducted to prove and identify the most accurate approach. The experimental results prove the advancement of the approach proposed in this paper over the literature as indicated in the result section.http://dx.doi.org/10.1155/2022/7782879
spellingShingle Nermin K. Negied
Ayman El-Sayed
Asmaa S. Hassaan
Automated Decision Technique for the Crowd Estimation Method Using Thermal Videos
Applied Computational Intelligence and Soft Computing
title Automated Decision Technique for the Crowd Estimation Method Using Thermal Videos
title_full Automated Decision Technique for the Crowd Estimation Method Using Thermal Videos
title_fullStr Automated Decision Technique for the Crowd Estimation Method Using Thermal Videos
title_full_unstemmed Automated Decision Technique for the Crowd Estimation Method Using Thermal Videos
title_short Automated Decision Technique for the Crowd Estimation Method Using Thermal Videos
title_sort automated decision technique for the crowd estimation method using thermal videos
url http://dx.doi.org/10.1155/2022/7782879
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AT aymanelsayed automateddecisiontechniqueforthecrowdestimationmethodusingthermalvideos
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