Using an Aural Classifier to Discriminate Cetacean Vocalizations

To positively identify marine mammals using passive acoustics, large volumes of data are often collected that need to be processed by a trained analyst. To reduce acoustic analyst workload, an automatic detector can be implemented that produces many detections, which feed into an automatic classifie...

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Main Author: Binder, Carolyn
Other Authors: Department of Physics & Atmospheric Science, Master of Science, N/A, Randall Martin, Chris Purcell, Harm Rotermund, Paul Hines and Richard Dunlap, Not Applicable
Language:English
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/10222/14607
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spelling ftdalhouse:oai:DalSpace.library.dal.ca:10222/14607 2024-06-02T08:11:33+00:00 Using an Aural Classifier to Discriminate Cetacean Vocalizations Binder, Carolyn Department of Physics & Atmospheric Science Master of Science N/A Randall Martin Chris Purcell Harm Rotermund Paul Hines and Richard Dunlap Not Applicable 2012-04-05T16:16:19Z http://hdl.handle.net/10222/14607 en eng http://hdl.handle.net/10222/14607 Marine mammals Underwater acoustics Marine bioacoustics Aural classification Perceptual signal features Automatic detection and classification 2012 ftdalhouse 2024-05-06T11:40:25Z To positively identify marine mammals using passive acoustics, large volumes of data are often collected that need to be processed by a trained analyst. To reduce acoustic analyst workload, an automatic detector can be implemented that produces many detections, which feed into an automatic classifier to significantly reduce the number of false detections. This requires the development of a robust classifier capable of performing inter-species classification as well as discriminating cetacean vocalizations from anthropogenic noise sources. A prototype aural classifier was developed at Defence Research and Development Canada that uses perceptual signal features which model the features employed by the human auditory system. The dataset included anthropogenic passive transients and vocalizations from five cetacean species: bowhead, humpback, North Atlantic right, minke and sperm whales. Discriminant analysis was implemented to replace principal component analysis; the projection obtained using discriminant analysis improved between-species discrimination during multiclass cetacean classification, compared to principal component analysis. The aural classifier was able to successfully identify the vocalizing cetacean species. The area under the receiver operating characteristic curve (AUC) is used to quantify the two-class classifier performance and the M-measure is used when there are three or more classes; the maximum possible value of both AUC and M is 1.00 – which is indicative of an ideal classifier model. Accurate classification results were obtained for multiclass classification of all species in the dataset (M = 0.99), and the challenging bowhead/ humpback (AUC = 0.97) and sperm whale click/anthropogenic transient (AUC = 1.00) two-class classifications. Other/Unknown Material North Atlantic Sperm whale Dalhousie University: DalSpace Institutional Repository Canada
institution Open Polar
collection Dalhousie University: DalSpace Institutional Repository
op_collection_id ftdalhouse
language English
topic Marine mammals
Underwater acoustics
Marine bioacoustics
Aural classification
Perceptual signal features
Automatic detection and classification
spellingShingle Marine mammals
Underwater acoustics
Marine bioacoustics
Aural classification
Perceptual signal features
Automatic detection and classification
Binder, Carolyn
Using an Aural Classifier to Discriminate Cetacean Vocalizations
topic_facet Marine mammals
Underwater acoustics
Marine bioacoustics
Aural classification
Perceptual signal features
Automatic detection and classification
description To positively identify marine mammals using passive acoustics, large volumes of data are often collected that need to be processed by a trained analyst. To reduce acoustic analyst workload, an automatic detector can be implemented that produces many detections, which feed into an automatic classifier to significantly reduce the number of false detections. This requires the development of a robust classifier capable of performing inter-species classification as well as discriminating cetacean vocalizations from anthropogenic noise sources. A prototype aural classifier was developed at Defence Research and Development Canada that uses perceptual signal features which model the features employed by the human auditory system. The dataset included anthropogenic passive transients and vocalizations from five cetacean species: bowhead, humpback, North Atlantic right, minke and sperm whales. Discriminant analysis was implemented to replace principal component analysis; the projection obtained using discriminant analysis improved between-species discrimination during multiclass cetacean classification, compared to principal component analysis. The aural classifier was able to successfully identify the vocalizing cetacean species. The area under the receiver operating characteristic curve (AUC) is used to quantify the two-class classifier performance and the M-measure is used when there are three or more classes; the maximum possible value of both AUC and M is 1.00 – which is indicative of an ideal classifier model. Accurate classification results were obtained for multiclass classification of all species in the dataset (M = 0.99), and the challenging bowhead/ humpback (AUC = 0.97) and sperm whale click/anthropogenic transient (AUC = 1.00) two-class classifications.
author2 Department of Physics & Atmospheric Science
Master of Science
N/A
Randall Martin
Chris Purcell
Harm Rotermund
Paul Hines and Richard Dunlap
Not Applicable
author Binder, Carolyn
author_facet Binder, Carolyn
author_sort Binder, Carolyn
title Using an Aural Classifier to Discriminate Cetacean Vocalizations
title_short Using an Aural Classifier to Discriminate Cetacean Vocalizations
title_full Using an Aural Classifier to Discriminate Cetacean Vocalizations
title_fullStr Using an Aural Classifier to Discriminate Cetacean Vocalizations
title_full_unstemmed Using an Aural Classifier to Discriminate Cetacean Vocalizations
title_sort using an aural classifier to discriminate cetacean vocalizations
publishDate 2012
url http://hdl.handle.net/10222/14607
geographic Canada
geographic_facet Canada
genre North Atlantic
Sperm whale
genre_facet North Atlantic
Sperm whale
op_relation http://hdl.handle.net/10222/14607
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