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Simultaneous, vision-based fish instance segmentation, species classification and size regression.

Pau Climent-PerezAlejandro Galán-CuencaNahuel E Garcia-d'UrsoMarcelo Saval-CalvoRafael Muñoz TerolAndrés Fuster-Guilló
Published in: PeerJ. Computer science (2024)
Overexploitation of fisheries is a worldwide problem, which is leading to a large loss of diversity, and affects human communities indirectly through the loss of traditional jobs, cultural heritage, etc . To address this issue, governments have started accumulating data on fishing activities, to determine biomass extraction rates, and fisheries status. However, these data are often estimated from small samplings, which can lead to partially inaccurate assessments. Fishing can also benefit of the digitization process that many industries are undergoing. Wholesale fish markets, where vessels disembark, can be the point of contact to retrieve valuable information on biomass extraction rates, and can do so automatically. Fine-grained knowledge about the fish species, quantities, sizes, etc . that are caught can be therefore very valuable to all stakeholders, and particularly decision-makers regarding fisheries conservation, sustainable, and long-term exploitation. In this regard, this article presents a full workflow for fish instance segmentation, species classification, and size estimation from uncalibrated images of fish trays at the fish market, in order to automate information extraction that can be helpful in such scenarios. Our results on fish instance segmentation and species classification show an overall mean average precision (mAP) at 50% intersection-over-union (IoU) of 70.42%, while fish size estimation shows a mean average error (MAE) of only 1.27 cm.
Keyphrases
  • deep learning
  • convolutional neural network
  • machine learning
  • healthcare
  • electronic health record
  • big data
  • air pollution
  • artificial intelligence
  • molecular dynamics
  • health information
  • pluripotent stem cells