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Acoustic analysis of big ocean data to monitor fish sounds
Sattar, F.; Cullis-Suzuki, S.; Jin, F. (2016). Acoustic analysis of big ocean data to monitor fish sounds. Ecological Informatics 34: 102-107. https://dx.doi.org/10.1016/j.ecoinf.2016.05.002
In: Ecological Informatics. Elsevier: Amsterdam. ISSN 1574-9541; e-ISSN 1878-0512, more
Peer reviewed article  

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Keyword
    Marine/Coastal
Author keywords
    Noisy big data; Ocean acoustics; Fish sound monitoring

Authors  Top 
  • Sattar, F.
  • Cullis-Suzuki, S.
  • Jin, F.

Abstract
    This paper presents a novel framework for monitoring fish sounds based on acoustic analysis of noisy big ocean data. The proposed method involves multiresolution acoustic features (MRAF) extraction and RPCA (robust principal component analysis) based feature selection for monitoring of natural fish sounds produced in situ by the plainfin midshipman (Porichthys notatus); here, we investigate this fish's grunts, growls and groans. Both local and contextual information are exploited by MRAF, while sparse components of the MRAF matrix obtained through RPCA is found to be more robust to overlapping low-frequency spectral contents among different classes. The simulation results obtained from real-recorded ocean data reveal the advantages of the proposed scheme for monitoring underwater soundscapes and determining a variety of fish sounds in natural marine habitats.

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