A time-frequency contour extraction and classification algorithm was created to analyze humpback whale vocalizations. The algorithm automatically extracted contours of whale vocalization units by searching for gray-level discontinuities in the spectrogram images. The unit-to-unit similarity was quantified by cross-correlating the contour lines. A library of distinctive humpback units was then generated by applying an unsupervised, cluster-based learning algorithm. The purpose of this study was to provide a fast and automated feature selection tool to describe the vocal signatures of animal groups. This approach could benefit a variety of applications such as species description, identification, and evolution of song structures. The algorithm was tested on humpback whale song data recorded at various locations in Hawaii from 2002 to 2003. Results presented in this paper showed low probability of false alarm (0%–4%) under noisy environments with small boat vessels and snapping shrimp. The classification algorithm was tested on a controlled set of 30 units forming six unit types, and all the units were correctly classified. In a case study on humpback data collected in the Auau Chanel, Hawaii, in 2002, the algorithm extracted 951 units, which were classified into 12 distinctive types.
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January 2013
January 03 2013
Automated extraction and classification of time-frequency contours in humpback vocalizations
Hui Ou;
Hui Ou
a)
Department of Electrical and Computer Engineering, Northwest Electromagnetics and Acoustics Research Laboratory (NEAR-Lab),
Portland State University
, Portland, Oregon 97201
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Whitlow W. L. Au;
Whitlow W. L. Au
Marine Mammal Research Program, Hawaii Institute of Marine Biology,
University of Hawaii
, Kaneohe, Hawaii 96744
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Lisa M. Zurk;
Lisa M. Zurk
Department of Electrical and Computer Engineering,
Northwest Electromagnetics and Acoustics Research Laboratory (NEAR-Lab), Portland State University
, Portland, Oregon 97201
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Marc O. Lammers
Marc O. Lammers
Hawaii Institute of Marine Biology, University of Hawaii
, Kaneohe, Hawaii 96744
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a)
Author to whom correspondence should be addressed. Present address: Hawaii Institute of Marine Biology, University of Hawaii, Kaneohe, HI 96744. Electronic mail: ou@hawaii.edu
J. Acoust. Soc. Am. 133, 301–310 (2013)
Article history
Received:
April 19 2012
Accepted:
November 20 2012
Citation
Hui Ou, Whitlow W. L. Au, Lisa M. Zurk, Marc O. Lammers; Automated extraction and classification of time-frequency contours in humpback vocalizations. J. Acoust. Soc. Am. 1 January 2013; 133 (1): 301–310. https://doi.org/10.1121/1.4770251
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