Crowd density estimation in extremely crowded images

In a variety of situations that involve a large number of people, there have always been huge difficulties in identifying an estimation of the number of people involved for the purpose of crowd management and the like. Crowd Management includes the assurance of the safety and security of the crowd,...

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Main Authors: Dela Cruz, Kyle Mc Hale, Garcia, John Paul, Kalaw, Kristine Ma. Dominique F.
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Published: Animo Repository 2015
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/2925
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Institution: De La Salle University
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-39242022-08-05T04:13:07Z Crowd density estimation in extremely crowded images Dela Cruz, Kyle Mc Hale Garcia, John Paul Kalaw, Kristine Ma. Dominique F. In a variety of situations that involve a large number of people, there have always been huge difficulties in identifying an estimation of the number of people involved for the purpose of crowd management and the like. Crowd Management includes the assurance of the safety and security of the crowd, the deployment of law enforcement personnel, and the observance or detection of unusual crowd behavior. With this, many concerned organizations have made used of various manual implementations to accomplish the task of estimating crowd density. However, these implementations sometimes yield to inaccurate results and requires a significantly huge amount of time, effort and manpower. That is why, new implementations and approaches were used. These implementations or approaches take advantage of the technological advancements in the field of Computer Vision. In line with that, we aim to develop a simple crowd density estimation tool for extremely crowded images that makes use of different Computer Vision techniques like Image Processing and Image Segmentation. For this research, we are using an external computer vision tool called MATLAB to implement the simple workflow for the proposed crowd density estimation tool. We have tested our tool on four experiments: (1) whether to include median filter or not in the workflow, (2) which perspective yielded the count nearest to the ground truth, (3) which configuration of the boundary detection algorithm is more appropriate for the tool, and (4) to test the tool on images that needs intricate masks in order to isolate the regions of interest. Our results in these experiments show that the application of a median filter and a bird's eye view or front view perspective with face shots are the ideal perspectives in which the tool can give an estimate nearest the ground truth with only a difference of less than a hundred. © 2015, Mechatronics and Machine Vision in Practice. All rights reserved. 2015-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/2925 Faculty Research Work Animo Repository Crowds Image segmentation Computer vision Image processing Computer Sciences
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Crowds
Image segmentation
Computer vision
Image processing
Computer Sciences
spellingShingle Crowds
Image segmentation
Computer vision
Image processing
Computer Sciences
Dela Cruz, Kyle Mc Hale
Garcia, John Paul
Kalaw, Kristine Ma. Dominique F.
Crowd density estimation in extremely crowded images
description In a variety of situations that involve a large number of people, there have always been huge difficulties in identifying an estimation of the number of people involved for the purpose of crowd management and the like. Crowd Management includes the assurance of the safety and security of the crowd, the deployment of law enforcement personnel, and the observance or detection of unusual crowd behavior. With this, many concerned organizations have made used of various manual implementations to accomplish the task of estimating crowd density. However, these implementations sometimes yield to inaccurate results and requires a significantly huge amount of time, effort and manpower. That is why, new implementations and approaches were used. These implementations or approaches take advantage of the technological advancements in the field of Computer Vision. In line with that, we aim to develop a simple crowd density estimation tool for extremely crowded images that makes use of different Computer Vision techniques like Image Processing and Image Segmentation. For this research, we are using an external computer vision tool called MATLAB to implement the simple workflow for the proposed crowd density estimation tool. We have tested our tool on four experiments: (1) whether to include median filter or not in the workflow, (2) which perspective yielded the count nearest to the ground truth, (3) which configuration of the boundary detection algorithm is more appropriate for the tool, and (4) to test the tool on images that needs intricate masks in order to isolate the regions of interest. Our results in these experiments show that the application of a median filter and a bird's eye view or front view perspective with face shots are the ideal perspectives in which the tool can give an estimate nearest the ground truth with only a difference of less than a hundred. © 2015, Mechatronics and Machine Vision in Practice. All rights reserved.
format text
author Dela Cruz, Kyle Mc Hale
Garcia, John Paul
Kalaw, Kristine Ma. Dominique F.
author_facet Dela Cruz, Kyle Mc Hale
Garcia, John Paul
Kalaw, Kristine Ma. Dominique F.
author_sort Dela Cruz, Kyle Mc Hale
title Crowd density estimation in extremely crowded images
title_short Crowd density estimation in extremely crowded images
title_full Crowd density estimation in extremely crowded images
title_fullStr Crowd density estimation in extremely crowded images
title_full_unstemmed Crowd density estimation in extremely crowded images
title_sort crowd density estimation in extremely crowded images
publisher Animo Repository
publishDate 2015
url https://animorepository.dlsu.edu.ph/faculty_research/2925
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