Back to Search Start Over

Towards automatic detection and classification of orca (Orcinus orca) calls using cross-correlation methods

Authors :
Palmero, Stefano
Guidi, Carlo
Kulikovskiy, Vladimir
Sanguineti, Matteo
Manghi, Michele
Sommer, Matteo
Pesce, Gaia
Publication Year :
2021

Abstract

Orca (Orcinus orca) is known for complex vocalisation. Their social structure consists of pods and clans sharing unique dialects due to geographic isolation. Sound type repertoires are fundamental for monitoring orca populations and are typically created visually and aurally. An orca pod occurring in the Ligurian Sea (Pelagos Sanctuary) in December 2019 provided a unique occasion for long-term recordings. The numerous data collected with the bottom recorder were analysed with a traditional human-driven inspection to create a repertoire of this pod and to compare it to catalogues from different orca populations (Icelandic and Antarctic) investigating its origins. Automatic signal detection and cross-correlation methods (R package warbleR) were used for the first time in orca studies. We found the Pearson cross-correlation method to be efficient for most pairwise calculations (> 85%) but with false positives. One sound type from our repertoire presented a high positive match (range 0.62-0.67) with one from the Icelandic catalogue, which was confirmed visually and aurally. Our first attempt to automatically classify orca sound types presented limitations due to background noise and sound complexity of orca communication. We show cross-correlation methods can be a powerful tool for sound type classification in combination with conventional methods.<br />Comment: 26 pages, 6 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2110.15593
Document Type :
Working Paper
Full Text :
https://doi.org/10.21203/rs.3.rs-1008677/v1