Development of a machine learning detector for North Atlantic humpback whale song

Author:

Kather Vincent1ORCID,Seipel Fabian1,Berges Benoit2,Davis Genevieve3,Gibson Catherine4,Harvey Matt5,Henry Lea-Anne6,Stevenson Andrew7,Risch Denise8

Affiliation:

1. Audio Communication and Technology, Technical University Berlin 1 , Einsteinufer 17c, 10587, Berlin, Germany

2. Wageningen Marine Research, Wageningen University and Research 2 , IJmuiden, Noord Holland, 1976 CP, Netherlands

3. National Oceanic and Atmospheric Administration (NOAA) Northeast Fisheries Science Center 3 , 166 Water Street, Woods Hole, Massachusetts 02543, USA

4. School of Biological Sciences, Queens University Belfast 4 , Belfast, BT9 5DL, Northern Ireland

5. Google Inc 5 ., Mountain View, California 94043, USA

6. School of GeoSciences, University of Edinburgh 6 , James Hutton Road, EH9 3FE, Edinburgh, Scotland

7. Whales Bermuda 7 , 6 Overock Hill, Pembroke, Bermuda

8. Scottish Association for Marine Science, University of Highlands and Islands 8 , Oban, PA37 1QJ, Scotland

Abstract

The study of humpback whale song using passive acoustic monitoring devices requires bioacousticians to manually review hours of audio recordings to annotate the signals. To vastly reduce the time of manual annotation through automation, a machine learning model was developed. Convolutional neural networks have made major advances in the previous decade, leading to a wide range of applications, including the detection of frequency modulated vocalizations by cetaceans. A large dataset of over 60 000 audio segments of 4 s length is collected from the North Atlantic and used to fine-tune an existing model for humpback whale song detection in the North Pacific (see Allen, Harvey, Harrell, Jansen, Merkens, Wall, Cattiau, and Oleson (2021). Front. Mar. Sci. 8, 607321). Furthermore, different data augmentation techniques (time-shift, noise augmentation, and masking) are used to artificially increase the variability within the training set. Retraining and augmentation yield F-score values of 0.88 on context window basis and 0.89 on hourly basis with false positive rates of 0.05 on context window basis and 0.01 on hourly basis. If necessary, usage and retraining of the existing model is made convenient by a framework (AcoDet, acoustic detector) built during this project. Combining the tools provided by this framework could save researchers hours of manual annotation time and, thus, accelerate their research.

Funder

Erasmus+

Gesellschaft von Freunden der Technischen Universität Berlin e.V.

Northeast Fisheries Science Center

Publisher

Acoustical Society of America (ASA)

Reference58 articles.

1. Real-time bioacoustics monitoring and automated species identification;PeerJ,2013

2. A convolutional neural network for automated detection of humpback whale song in a diverse, long-term passive acoustic dataset;Front. Mar. Sci.,2021

3. Cultural revolutions reduce complexity in the songs of humpback whales;Proc. R. Soc. B,2018

4. Anderson, M., and Harte, N. (2021). “ Bioacoustic event detection with prototypical networks and data augmentation,” arXiv:2112.09006..

5. Acoustic properties of humpback whale songs;J. Acoust. Soc. Am.,2006

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