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Bioacoustic classification of Hainan gibbon call types using deep learning

In Bawangling National Nature Reserve (BNNR), Hainan, China, there exists a critically endangered primate known as the Hainan gibbon Nomascus hainanus. Many species, including the Hainan gibbon, are at high risk of extinction due to many factors such as unsustainable hunting, climate change, and def...

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Main Author: Luphade, Nonhlanhla
Other Authors: Durbach, Ian
Format: Thesis
Language:English
English
Published: Department of Statistical Sciences 2025
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access_status_str Open Access
author Luphade, Nonhlanhla
author2 Durbach, Ian
author_browse Durbach, Ian
Luphade, Nonhlanhla
author_facet Durbach, Ian
Luphade, Nonhlanhla
author_sort Luphade, Nonhlanhla
collection Thesis
description In Bawangling National Nature Reserve (BNNR), Hainan, China, there exists a critically endangered primate known as the Hainan gibbon Nomascus hainanus. Many species, including the Hainan gibbon, are at high risk of extinction due to many factors such as unsustainable hunting, climate change, and deforestation. The Hainan gibbons live in social groups and the ability to discriminate between the group is useful for tracking migration patterns, population management, and identification of new groups. Currently, there has not been any study which attempts to distinguish between the groups. More recently, researchers have begun using deep learning to answer ecological questions, in a similar way that deep learning has successfully been used in computer vision and audio classification tasks. This study is the first attempt at investigating how deep learning can be used to distinguish between the Hainan gibbon social groups using only the acoustic data recorded in BNNR. Two convolutional neural networks (CNNs) were developed, the first was a binary classification model to detect gibbon calls from non-gibbon calls, and the second was a group classifier to distinguish between the social groups in BNNR. The audio data was converted into mel-scale spectrograms, resulting in images used as input to train the CNNs. Two steps were taken to train reliable models. Firstly, data augmentation techniques were explored to increase the amount of data as a means to train reliable models, and secondly, hyperparameter tuning was conducted. The binary classifier obtained a testing accuracy of 86%. The findings reveal that the model is able to distinguish between gibbon calls and non-gibbon calls. The social group model was not able to distinguish between the social groups as the model predicted the majority of the calls as one group. The result of this study demonstrates the usefulness of deep learning in addressing ecological questions that would be otherwise very challenging for a human to achieve.
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provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2025
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spelling oai:open.uct.ac.za:11427/42007 Bioacoustic classification of Hainan gibbon call types using deep learning Luphade, Nonhlanhla Durbach, Ian Britz, Stefan Dufourq, Emmanuel Statistical Sciences In Bawangling National Nature Reserve (BNNR), Hainan, China, there exists a critically endangered primate known as the Hainan gibbon Nomascus hainanus. Many species, including the Hainan gibbon, are at high risk of extinction due to many factors such as unsustainable hunting, climate change, and deforestation. The Hainan gibbons live in social groups and the ability to discriminate between the group is useful for tracking migration patterns, population management, and identification of new groups. Currently, there has not been any study which attempts to distinguish between the groups. More recently, researchers have begun using deep learning to answer ecological questions, in a similar way that deep learning has successfully been used in computer vision and audio classification tasks. This study is the first attempt at investigating how deep learning can be used to distinguish between the Hainan gibbon social groups using only the acoustic data recorded in BNNR. Two convolutional neural networks (CNNs) were developed, the first was a binary classification model to detect gibbon calls from non-gibbon calls, and the second was a group classifier to distinguish between the social groups in BNNR. The audio data was converted into mel-scale spectrograms, resulting in images used as input to train the CNNs. Two steps were taken to train reliable models. Firstly, data augmentation techniques were explored to increase the amount of data as a means to train reliable models, and secondly, hyperparameter tuning was conducted. The binary classifier obtained a testing accuracy of 86%. The findings reveal that the model is able to distinguish between gibbon calls and non-gibbon calls. The social group model was not able to distinguish between the social groups as the model predicted the majority of the calls as one group. The result of this study demonstrates the usefulness of deep learning in addressing ecological questions that would be otherwise very challenging for a human to achieve. 2025-10-14T11:55:03Z 2025-10-14T11:55:03Z 2023 2024-05-16T09:55:14Z Thesis / Dissertation Masters MSc http://hdl.handle.net/11427/42007 en eng application/pdf Department of Statistical Sciences Faculty of Science Universiy of Cape Town
spellingShingle Statistical Sciences
Luphade, Nonhlanhla
Bioacoustic classification of Hainan gibbon call types using deep learning
thesis_degree_str Master's
title Bioacoustic classification of Hainan gibbon call types using deep learning
title_full Bioacoustic classification of Hainan gibbon call types using deep learning
title_fullStr Bioacoustic classification of Hainan gibbon call types using deep learning
title_full_unstemmed Bioacoustic classification of Hainan gibbon call types using deep learning
title_short Bioacoustic classification of Hainan gibbon call types using deep learning
title_sort bioacoustic classification of hainan gibbon call types using deep learning
topic Statistical Sciences
url http://hdl.handle.net/11427/42007
work_keys_str_mv AT luphadenonhlanhla bioacousticclassificationofhainangibboncalltypesusingdeeplearning