Unsupervised blue whale call detection using multiple time-frequency features
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2017Metadata
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Cuevas, Alejandro
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Unsupervised blue whale call detection using multiple time-frequency features
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Abstract
In the context of bio-acoustic sciences, call detection
is a critical task for understanding the behaviour of marine mammals
such as the blue whale species (Balaeonoptera musculus)
considered in this work. In this paper we present an approach
to blue whale call detection from an unsupervised perspective.
To achieve this, we use temporal and spectral features of audio
acquired with a marine autonomous recording unit. The features
considered are 46-dimensional and include the mel frequency
ceptrum coefficients, chromagrams, and other scalar quantities;
these features were then grouped via two different clustering
algorithms. Our findings confirm the suitability of the proposed
approach for isolating blue whale calls from other environmental
sounds (as validated by a bio-acoustic specialist). This is a clear
contribution for the annotation of blue whales calls, where the
search for calls can now be performed by analysing the clusters
identified instead of the entire recordings, thus saving time and
effort for practitioners in bio-acoustics.
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2017 CHILEAN Conference on Electrical, Electronics Engineering, Information and Communication Technologies, CHILECON 2017 - Proceedings, Volumen 2017-January,
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