Estimation of crowd density from UAVs images based on corner detection procedures and clustering analysis

With rapid developments in platforms and sensors technology in terms of digital cameras and video recordings, crowd monitoring has taken a considerable attentions in many disciplines such as psychology, sociology, engineering, and computer vision. This is due to the fact that, monitoring of the crow...

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Main Author: Ali Almagbile
Format: Article
Language:English
Published: Taylor & Francis Group 2019-01-01
Series:Geo-spatial Information Science
Subjects:
Online Access:http://dx.doi.org/10.1080/10095020.2018.1539553
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spelling doaj-353b330b502d49d8b156ef6f66c1deda2020-11-24T21:58:42ZengTaylor & Francis GroupGeo-spatial Information Science1009-50201993-51532019-01-01221233410.1080/10095020.2018.15395531539553Estimation of crowd density from UAVs images based on corner detection procedures and clustering analysisAli Almagbile0Yarmouk UniversityWith rapid developments in platforms and sensors technology in terms of digital cameras and video recordings, crowd monitoring has taken a considerable attentions in many disciplines such as psychology, sociology, engineering, and computer vision. This is due to the fact that, monitoring of the crowd is necessary to enhance safety and controllable movements to minimize the risk particularly in highly crowded incidents (e.g. sports). One of the platforms that have been extensively employed in crowd monitoring is unmanned aerial vehicles (UAVs), because UAVs have the capability to acquiring fast, low costs, high-resolution and real-time images over crowd areas. In addition, geo-referenced images can also be provided through integration of on-board positioning sensors (e.g. GPS/IMU) with vision sensors (digital cameras and laser scanner). In this paper, a new testing procedure based on feature from accelerated segment test (FAST) algorithms is introduced to detect the crowd features from UAV images taken from different camera orientations and positions. The proposed test started with converting a circle of 16 pixels surrounding the center pixel into a vector and sorting it in ascending/descending order. A single pixel which takes the ranking number 9 (for FAST-9) or 12 (for FAST-12) was then compared with the center pixel. Accuracy assessment in terms of completeness and correctness was used to assess the performance of the new testing procedure before and after filtering the crowd features. The results show that the proposed algorithms are able to extract crowd features from different UAV images. Overall, the values of Completeness range from 55 to 70 % whereas the range of correctness values was 91 to 94 %.http://dx.doi.org/10.1080/10095020.2018.1539553Unmanned Aerial Vehicle (UAV)crowd densitycorner detectionFeature from Accelerated Segment Test (FAST) algorithmclustering analysis
collection DOAJ
language English
format Article
sources DOAJ
author Ali Almagbile
spellingShingle Ali Almagbile
Estimation of crowd density from UAVs images based on corner detection procedures and clustering analysis
Geo-spatial Information Science
Unmanned Aerial Vehicle (UAV)
crowd density
corner detection
Feature from Accelerated Segment Test (FAST) algorithm
clustering analysis
author_facet Ali Almagbile
author_sort Ali Almagbile
title Estimation of crowd density from UAVs images based on corner detection procedures and clustering analysis
title_short Estimation of crowd density from UAVs images based on corner detection procedures and clustering analysis
title_full Estimation of crowd density from UAVs images based on corner detection procedures and clustering analysis
title_fullStr Estimation of crowd density from UAVs images based on corner detection procedures and clustering analysis
title_full_unstemmed Estimation of crowd density from UAVs images based on corner detection procedures and clustering analysis
title_sort estimation of crowd density from uavs images based on corner detection procedures and clustering analysis
publisher Taylor & Francis Group
series Geo-spatial Information Science
issn 1009-5020
1993-5153
publishDate 2019-01-01
description With rapid developments in platforms and sensors technology in terms of digital cameras and video recordings, crowd monitoring has taken a considerable attentions in many disciplines such as psychology, sociology, engineering, and computer vision. This is due to the fact that, monitoring of the crowd is necessary to enhance safety and controllable movements to minimize the risk particularly in highly crowded incidents (e.g. sports). One of the platforms that have been extensively employed in crowd monitoring is unmanned aerial vehicles (UAVs), because UAVs have the capability to acquiring fast, low costs, high-resolution and real-time images over crowd areas. In addition, geo-referenced images can also be provided through integration of on-board positioning sensors (e.g. GPS/IMU) with vision sensors (digital cameras and laser scanner). In this paper, a new testing procedure based on feature from accelerated segment test (FAST) algorithms is introduced to detect the crowd features from UAV images taken from different camera orientations and positions. The proposed test started with converting a circle of 16 pixels surrounding the center pixel into a vector and sorting it in ascending/descending order. A single pixel which takes the ranking number 9 (for FAST-9) or 12 (for FAST-12) was then compared with the center pixel. Accuracy assessment in terms of completeness and correctness was used to assess the performance of the new testing procedure before and after filtering the crowd features. The results show that the proposed algorithms are able to extract crowd features from different UAV images. Overall, the values of Completeness range from 55 to 70 % whereas the range of correctness values was 91 to 94 %.
topic Unmanned Aerial Vehicle (UAV)
crowd density
corner detection
Feature from Accelerated Segment Test (FAST) algorithm
clustering analysis
url http://dx.doi.org/10.1080/10095020.2018.1539553
work_keys_str_mv AT alialmagbile estimationofcrowddensityfromuavsimagesbasedoncornerdetectionproceduresandclusteringanalysis
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