Large-scale unsupervised clustering of Orca vocalizations: a model for describing orca communication systems

LIS, Université de Toulon et du Var, Toulon, France
Biosong SARL, Cap Ferret, France
Orcalab, Alert Bay, Canada
DOI
10.7287/peerj.preprints.27979v1
Subject Areas
Animal Behavior, Bioinformatics, Data Mining and Machine Learning
Keywords
Killer whale, Orca, Machine Learning, Unsupervised Clustering, Vocalizations
Copyright
© 2019 Poupard et al.
Licence
This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, reproduction and adaptation in any medium and for any purpose provided that it is properly attributed. For attribution, the original author(s), title, publication source (PeerJ Preprints) and either DOI or URL of the article must be cited.
Cite this article
Poupard M, Best P, Schlüter J, Symonds H, Spong P, Glotin H. 2019. Large-scale unsupervised clustering of Orca vocalizations: a model for describing orca communication systems. PeerJ Preprints 7:e27979v1

Abstract

Killer whales (Orcinus orca) can produce 3 types of signals: clicks, whistles and vocalizations. This study focuses on Orca vocalizations from northern Vancouver Island (Hanson Island) where the NGO Orcalab developed a multi-hydrophone recording station to study Orcas. The acoustic station is composed of 5 hydrophones and extends over 50 km 2 of ocean. Since 2015 we are continuously streaming the hydrophone signals to our laboratory in Toulon, France, yielding nearly 50 TB of synchronous multichannel recordings. In previous work, we trained a Convolutional Neural Network (CNN) to detect Orca vocalizations, using transfer learning from a bird activity dataset. Here, for each detected vocalization, we estimate the pitch contour (fundamental frequency). Finally, we cluster vocalizations by features describing the pitch contour. While preliminary, our results demonstrate a possible route towards automatic Orca call type classification. Furthermore, they can be linked to the presence of particular Orca pods in the area according to the classification of their call types. A large-scale call type classification would allow new insights on phonotactics and ethoacoustics of endangered Orca populations in the face of increasing anthropic pressure.

Author Comment

This paper describes an ongoing study of orca vocalizations using several machine learning techniques.