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https://hdl.handle.net/11000/39062
Bioacoustics for species management: two case studieswith a Hawaiian forest bird
Title: Bioacoustics for species management: two case studieswith a Hawaiian forest bird |
Authors: Sebastián González, Esther Pang Ching, Joshua Barbosa, Jomar M. Hart, Patrick |
Editor: Wiley |
Department: Departamentos de la UMH::Biología Aplicada |
Issue Date: 2015 |
URI: https://hdl.handle.net/11000/39062 |
Abstract:
The management of animal endangered species requires detailed information
on their distribution and abundance, which is often hard to obtain. When animals communicate using sounds, one option is to use automatic sound recorders to gather information on the species for long periods of time with low
effort. One drawback of this method is that processing all the information manually requires large amounts of time and effort. Our objective was to create a
relatively “user-friendly” (i.e., that does not require big programming skills)
automatic detection algorithm to improve our ability to get basic data from
sound-emitting animal species. We illustrate our algorithm by showing two
possible applications with the Hawai’i ‘Amakihi, Hemignathus virens virens, a
forest bird from the island of Hawai’i. We first characterized the ‘Amakihi song
using recordings from areas where the species is present in high densities. We
used this information to train a classification algorithm, the support vector
machine (SVM), in order to identify ‘Amakihi songs from a series of potential
songs. We then used our algorithm to detect the species in areas where its presence had not been previously confirmed. We also used the algorithm to compare the relative abundance of the species in different areas where management
actions may be applied. The SVM had an accuracy of 86.5% in identifying
‘Amakihi. We confirmed the presence of the ‘Amakihi at the study area using
the algorithm. We also found that the relative abundance of ‘Amakihi changes
among study areas, and this information can be used to assess where management strategies for the species should be better implemented. Our automatic
song detection algorithm is effective, “user-friendly” and can be very useful for
optimizing the management and conservation of those endangered animal species that communicate acoustically.
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Keywords/Subjects: Algorithm conservation Hawai’i ‘Amakihi song support vector machine |
Type of document: info:eu-repo/semantics/article |
Access rights: info:eu-repo/semantics/openAccess Attribution-NonCommercial-NoDerivatives 4.0 Internacional |
DOI: https://doi.org/10.1002/ece3.1743 |
Published in: Ecology and Evolution Volume 5, Issue 20Oct 2015Pagesi-iii, 4505-4734 |
Appears in Collections: Artículos - Biología Aplicada
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