2024
DOI: 10.3389/frsen.2024.1390687
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Machine learning for efficient segregation and labeling of potential biological sounds in long-term underwater recordings

Clea Parcerisas,
Elena Schall,
Kees te Velde
et al.

Abstract: Studying marine soundscapes by detecting known sound events and quantifying their spatio-temporal patterns can provide ecologically relevant information. However, the exploration of underwater sound data to find and identify possible sound events of interest can be highly time-intensive for human analysts. To speed up this process, we propose a novel methodology that first detects all the potentially relevant acoustic events and then clusters them in an unsupervised way prior to manual revision. We demonstrate… Show more

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