Model-informed classification of broadband acoustic backscatter from zooplankton in an in situ mesocosm

Muriel Dunn, Chelsey Mcgowan-Yallop, Geir Pedersen, Stig Falk-Petersen, Malin Daase, Kim Last, Tom j Langbehn, Sophie Fielding, Andrew S. Brierley, Finlo Cottier, Sünnje L. Basedow, Lionel Camus, Maxime Geoffroy

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Abstract

Classification of zooplankton to species with broadband echosounder data could increase the taxonomic resolution of acoustic surveys and reduce the dependence on net and trawl samples for ‘ground truthing’. Supervised classification with broadband echosounder data is limited by the acquisition of validated data required to train machine learning algorithms (‘classifiers’). We tested the hypothesis that acoustic scattering models could be used to train classifiers for remote classification of zooplankton. Three classifiers were trained with data from scattering models of four Arctic zooplankton groups (copepods, euphausiids, chaetognaths, and hydrozoans). We evaluated classifier predictions against observations of a mixed zooplankton community in a submerged purpose-built mesocosm (12 m3) insonified with broadband transmissions (185–255 kHz). The mesocosm was deployed from a wharf in Ny-Ålesund, Svalbard, during the Arctic polar night in January 2022. We detected 7722 tracked single targets, which were used to
Original languageEnglish
Pages (from-to)1371-1384
Number of pages13
JournalICES Journal of Marine Science
Volume81
Issue number7
DOIs
Publication statusPublished - 7 Dec 2023

Keywords

  • machine learning
  • zooplankton
  • classification
  • broadband acoustics
  • cage experiment

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