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Counting animals in ecological images

In the field of ecology, counting of animals to estimate population size and prey abundance is important for the conservation of wildlife. This involves analyzing large volumes of image, video or audio data and manual counting. Automating the process of counting animals would be invaluable to resear...

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Main Author: Pillay, Nakkita
Other Authors: Durbach, Ian
Format: Thesis
Language:English
Published: Department of Statistical Sciences 2022
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access_status_str Open Access
author Pillay, Nakkita
author2 Durbach, Ian
author_browse Durbach, Ian
Pillay, Nakkita
author_facet Durbach, Ian
Pillay, Nakkita
author_sort Pillay, Nakkita
collection Thesis
description In the field of ecology, counting of animals to estimate population size and prey abundance is important for the conservation of wildlife. This involves analyzing large volumes of image, video or audio data and manual counting. Automating the process of counting animals would be invaluable to researchers as it will eliminate the tedious time-consuming task of counting. The purpose of this dissertation is to address manual counting in images by implementing an automated solution using computer vision. This research applies a blob detection algorithm primarily based on the determinant of the Hessian matrix to estimate counts of animals in aerial images of colonies in a user-friendly web application and trains an object detection model using deep convolutional neural networks to automatically identify and count penguin prey in 2053 images extracted from animal-borne videos. The blob detection algorithm reports an average relative bias of less than 6% and the YOLOv3 object detection model automatically detects jellyfish, school of fish and fish with a mean average precision of 82,53% and counts with an average relative bias of -17,66% over all classes. The results show that applying traditional computer vision methods and deep learning on data-scarce and data-rich situations respectively, can save ecologists an immense amount of time used on manual tedious methods of analysis and counting. Additionally, these automated counting methods can contribute towards improving wildlife conservation and future studies.
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institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:33:51.607Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2022
publishDateRange 2022
publishDateSort 2022
publisher Department of Statistical Sciences
publisherStr Department of Statistical Sciences
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/36534 Counting animals in ecological images Pillay, Nakkita Durbach, Ian Dufourq, Emmanuel Statistical Sciences In the field of ecology, counting of animals to estimate population size and prey abundance is important for the conservation of wildlife. This involves analyzing large volumes of image, video or audio data and manual counting. Automating the process of counting animals would be invaluable to researchers as it will eliminate the tedious time-consuming task of counting. The purpose of this dissertation is to address manual counting in images by implementing an automated solution using computer vision. This research applies a blob detection algorithm primarily based on the determinant of the Hessian matrix to estimate counts of animals in aerial images of colonies in a user-friendly web application and trains an object detection model using deep convolutional neural networks to automatically identify and count penguin prey in 2053 images extracted from animal-borne videos. The blob detection algorithm reports an average relative bias of less than 6% and the YOLOv3 object detection model automatically detects jellyfish, school of fish and fish with a mean average precision of 82,53% and counts with an average relative bias of -17,66% over all classes. The results show that applying traditional computer vision methods and deep learning on data-scarce and data-rich situations respectively, can save ecologists an immense amount of time used on manual tedious methods of analysis and counting. Additionally, these automated counting methods can contribute towards improving wildlife conservation and future studies. 2022-06-24T10:13:27Z 2022-06-24T10:13:27Z 2022 2022-06-24T09:54:34Z Master Thesis Masters MSc http://hdl.handle.net/11427/36534 eng application/pdf Department of Statistical Sciences Faculty of Science
spellingShingle Statistical Sciences
Pillay, Nakkita
Counting animals in ecological images
thesis_degree_str Master's
title Counting animals in ecological images
title_full Counting animals in ecological images
title_fullStr Counting animals in ecological images
title_full_unstemmed Counting animals in ecological images
title_short Counting animals in ecological images
title_sort counting animals in ecological images
topic Statistical Sciences
url http://hdl.handle.net/11427/36534
work_keys_str_mv AT pillaynakkita countinganimalsinecologicalimages