Automatic Classification of Animal Vocalizations

Bioacoustics, the study of animal vocalizations, has begun to use increasingly sophisticated analysis techniques in recent years. Some common tasks in bioacoustics are repertoire determination, call detection, individual identification, stress detection, and behavior correlation. Each research study...

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Main Author: Clemins, Patrick J.
Other Authors: Johnson, Michael T., Corliss, George F., Heinen, James A.
Format: Text
Language:unknown
Published: e-Publications@Marquette 2005
Subjects:
Online Access:https://epublications.marquette.edu/dissertations_mu/1826
https://epublications.marquette.edu/context/dissertations_mu/article/2839/viewcontent/Clemi_P_2005.pdf
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spelling ftmarquetteuniv:oai:epublications.marquette.edu:dissertations_mu-2839 2023-06-11T04:10:37+02:00 Automatic Classification of Animal Vocalizations Clemins, Patrick J. Johnson, Michael T., Corliss, George F., Heinen, James A. 2005-04-01T08:00:00Z application/pdf https://epublications.marquette.edu/dissertations_mu/1826 https://epublications.marquette.edu/context/dissertations_mu/article/2839/viewcontent/Clemi_P_2005.pdf unknown e-Publications@Marquette https://epublications.marquette.edu/dissertations_mu/1826 https://epublications.marquette.edu/context/dissertations_mu/article/2839/viewcontent/Clemi_P_2005.pdf Dissertations (1934 -) Engineering text 2005 ftmarquetteuniv 2023-05-08T06:44:31Z Bioacoustics, the study of animal vocalizations, has begun to use increasingly sophisticated analysis techniques in recent years. Some common tasks in bioacoustics are repertoire determination, call detection, individual identification, stress detection, and behavior correlation. Each research study, however, uses a wide variety of different measured variables, called features, and classification systems to accomplish these tasks. The well-established field of human speech processing has developed a number of different techniques to perform many of the aforementioned bioacoustics tasks. Melfrequency cepstral coefficients (MFCCs) and perceptual linear prediction (PLP) coefficients are two popular feature sets. The hidden Markov model (HMM), a statistical model similar to a finite autonoma machine, is the most commonly used supervised classification model and is capable of modeling both temporal and spectral variations. This research designs a framework that applies models from human speech processing for bioacoustic analysis tasks. The development of the generalized perceptual linear prediction (gPLP) feature extraction model is one of the more important novel contributions of the framework. Perceptual information from the species under study can be incorporated into the gPLP feature extraction model to represent the vocalizations as the animals might perceive them. By including this perceptual information and modifying parameters of the HMM classification system, this framework can be applied to a wide range of species. The effectiveness of the framework is shown by analyzing African elephant and beluga whale vocalizations. The features extracted from the African elephant data are used as input to a supervised classification system and compared to results from traditional statistical tests. The gPLP features extracted from the beluga whale data are used in an unsupervised classification system and the results are compared to labels assigned by experts. The development of a framework from which to build animal ... Text Beluga Beluga whale Beluga* Marquette University: e-Publications@Marquette
institution Open Polar
collection Marquette University: e-Publications@Marquette
op_collection_id ftmarquetteuniv
language unknown
topic Engineering
spellingShingle Engineering
Clemins, Patrick J.
Automatic Classification of Animal Vocalizations
topic_facet Engineering
description Bioacoustics, the study of animal vocalizations, has begun to use increasingly sophisticated analysis techniques in recent years. Some common tasks in bioacoustics are repertoire determination, call detection, individual identification, stress detection, and behavior correlation. Each research study, however, uses a wide variety of different measured variables, called features, and classification systems to accomplish these tasks. The well-established field of human speech processing has developed a number of different techniques to perform many of the aforementioned bioacoustics tasks. Melfrequency cepstral coefficients (MFCCs) and perceptual linear prediction (PLP) coefficients are two popular feature sets. The hidden Markov model (HMM), a statistical model similar to a finite autonoma machine, is the most commonly used supervised classification model and is capable of modeling both temporal and spectral variations. This research designs a framework that applies models from human speech processing for bioacoustic analysis tasks. The development of the generalized perceptual linear prediction (gPLP) feature extraction model is one of the more important novel contributions of the framework. Perceptual information from the species under study can be incorporated into the gPLP feature extraction model to represent the vocalizations as the animals might perceive them. By including this perceptual information and modifying parameters of the HMM classification system, this framework can be applied to a wide range of species. The effectiveness of the framework is shown by analyzing African elephant and beluga whale vocalizations. The features extracted from the African elephant data are used as input to a supervised classification system and compared to results from traditional statistical tests. The gPLP features extracted from the beluga whale data are used in an unsupervised classification system and the results are compared to labels assigned by experts. The development of a framework from which to build animal ...
author2 Johnson, Michael T., Corliss, George F., Heinen, James A.
format Text
author Clemins, Patrick J.
author_facet Clemins, Patrick J.
author_sort Clemins, Patrick J.
title Automatic Classification of Animal Vocalizations
title_short Automatic Classification of Animal Vocalizations
title_full Automatic Classification of Animal Vocalizations
title_fullStr Automatic Classification of Animal Vocalizations
title_full_unstemmed Automatic Classification of Animal Vocalizations
title_sort automatic classification of animal vocalizations
publisher e-Publications@Marquette
publishDate 2005
url https://epublications.marquette.edu/dissertations_mu/1826
https://epublications.marquette.edu/context/dissertations_mu/article/2839/viewcontent/Clemi_P_2005.pdf
genre Beluga
Beluga whale
Beluga*
genre_facet Beluga
Beluga whale
Beluga*
op_source Dissertations (1934 -)
op_relation https://epublications.marquette.edu/dissertations_mu/1826
https://epublications.marquette.edu/context/dissertations_mu/article/2839/viewcontent/Clemi_P_2005.pdf
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