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Systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring

Soundscape ecology is a promising area that studies landscape patterns based on their acoustic composition. It focuses on the distribution of biotic and abiotic sounds at different frequencies of the landscape acoustic attribute and the relationship of said sounds with ecosystem health metrics and i...

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Autores principales: Nieto-Mora, D.A., Rodríguez-Buritica, Susana, Rodríguez-Marín, Paula, Martínez-Vargaz, J.D., Isaza-Narváez, Claudia
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10542774/
https://www.ncbi.nlm.nih.gov/pubmed/37790981
http://dx.doi.org/10.1016/j.heliyon.2023.e20275
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author Nieto-Mora, D.A.
Rodríguez-Buritica, Susana
Rodríguez-Marín, Paula
Martínez-Vargaz, J.D.
Isaza-Narváez, Claudia
author_facet Nieto-Mora, D.A.
Rodríguez-Buritica, Susana
Rodríguez-Marín, Paula
Martínez-Vargaz, J.D.
Isaza-Narváez, Claudia
author_sort Nieto-Mora, D.A.
collection PubMed
description Soundscape ecology is a promising area that studies landscape patterns based on their acoustic composition. It focuses on the distribution of biotic and abiotic sounds at different frequencies of the landscape acoustic attribute and the relationship of said sounds with ecosystem health metrics and indicators (e.g., species richness, acoustic biodiversity, vectors of structural change, gradients of vegetation cover, landscape connectivity, and temporal and spatial characteristics). To conduct such studies, researchers analyze recordings from Acoustic Recording Units (ARUs). The increasing use of ARUs and their capacity to record hours of audio for months at a time have created a need for automatic processing methods to reduce time consumption, correlate variables implicit in the recordings, extract features, and characterize sound patterns related to landscape attributes. Consequently, traditional machine learning methods have been commonly used to process data on different characteristics of soundscapes, mainly the presence–absence of species. In addition, it has been employed for call segmentation, species identification, and sound source clustering. However, some authors highlight the importance of the new approaches that use unsupervised deep learning methods to improve the results and diversify the assessed attributes. In this paper, we present a systematic review of machine learning methods used in the field of ecoacoustics for data processing. It includes recent trends, such as semi-supervised and unsupervised deep learning methods. Moreover, it maintains the format found in the reviewed papers. First, we describe the ARUs employed in the papers analyzed, their configuration, and the study sites where the datasets were collected. Then, we provide an ecological justification that relates acoustic monitoring to landscape features. Subsequently, we explain the machine learning methods followed to assess various landscape attributes. The results show a trend towards label-free methods that can process the large volumes of data gathered in recent years. Finally, we discuss the need to adopt methods with a machine learning approach in other biological dimensions of landscapes.
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spelling pubmed-105427742023-10-03 Systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring Nieto-Mora, D.A. Rodríguez-Buritica, Susana Rodríguez-Marín, Paula Martínez-Vargaz, J.D. Isaza-Narváez, Claudia Heliyon Review Article Soundscape ecology is a promising area that studies landscape patterns based on their acoustic composition. It focuses on the distribution of biotic and abiotic sounds at different frequencies of the landscape acoustic attribute and the relationship of said sounds with ecosystem health metrics and indicators (e.g., species richness, acoustic biodiversity, vectors of structural change, gradients of vegetation cover, landscape connectivity, and temporal and spatial characteristics). To conduct such studies, researchers analyze recordings from Acoustic Recording Units (ARUs). The increasing use of ARUs and their capacity to record hours of audio for months at a time have created a need for automatic processing methods to reduce time consumption, correlate variables implicit in the recordings, extract features, and characterize sound patterns related to landscape attributes. Consequently, traditional machine learning methods have been commonly used to process data on different characteristics of soundscapes, mainly the presence–absence of species. In addition, it has been employed for call segmentation, species identification, and sound source clustering. However, some authors highlight the importance of the new approaches that use unsupervised deep learning methods to improve the results and diversify the assessed attributes. In this paper, we present a systematic review of machine learning methods used in the field of ecoacoustics for data processing. It includes recent trends, such as semi-supervised and unsupervised deep learning methods. Moreover, it maintains the format found in the reviewed papers. First, we describe the ARUs employed in the papers analyzed, their configuration, and the study sites where the datasets were collected. Then, we provide an ecological justification that relates acoustic monitoring to landscape features. Subsequently, we explain the machine learning methods followed to assess various landscape attributes. The results show a trend towards label-free methods that can process the large volumes of data gathered in recent years. Finally, we discuss the need to adopt methods with a machine learning approach in other biological dimensions of landscapes. Elsevier 2023-09-22 /pmc/articles/PMC10542774/ /pubmed/37790981 http://dx.doi.org/10.1016/j.heliyon.2023.e20275 Text en © 2023 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Review Article
Nieto-Mora, D.A.
Rodríguez-Buritica, Susana
Rodríguez-Marín, Paula
Martínez-Vargaz, J.D.
Isaza-Narváez, Claudia
Systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring
title Systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring
title_full Systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring
title_fullStr Systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring
title_full_unstemmed Systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring
title_short Systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring
title_sort systematic review of machine learning methods applied to ecoacoustics and soundscape monitoring
topic Review Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10542774/
https://www.ncbi.nlm.nih.gov/pubmed/37790981
http://dx.doi.org/10.1016/j.heliyon.2023.e20275
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