The standard method for calculating Antarctic krill biomass relies on hydroacoustic survey data and incorporates krill body length data collected concurrently. Traditional scientific acoustic surveys involve manually measuring the body lengths of individual krill caught using fine- meshed nets or trawls along acoustic transects. This work is resource-demanding and could represent a source of human error. To address these challenges, we develop and test an alternative, more automated method for estimating krill body length data by employing an in-trawl stereo camera system. This system collects images that are automatically processed by a custom-trained machine learning model. The results from the machine learning model are then compared to manually measured krill subsampled from the total catch of the corresponding trawl hauls. We demonstrated the ability to extract body lengths from underwater images. However, our results highlighted uncertainties, which we propose addressing by incorporating more advanced camera technology and optimizing the observation section of the small-meshed two-layer krill trawl.
Automated krill body length estimation based on stereo camera images
Document Number:
WG-EMM-2025/P02
Submitted By:
Dr Bjørn Krafft (Norway)
Approved By:
Dr Bjørn Krafft (Norway)
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Agenda Item(s)
Publication:
ICES Journal of Marine Science. 82, fsaf058, doi.org/10.1093/icesjms/fsaf058
Abstract