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Aerial-trained deep learning networks for surveying cetaceans from satellite imagery

Author

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  • Alex Borowicz
  • Hieu Le
  • Grant Humphries
  • Georg Nehls
  • Caroline Höschle
  • Vladislav Kosarev
  • Heather J Lynch

Abstract

Most cetacean species are wide-ranging and highly mobile, creating significant challenges for researchers by limiting the scope of data that can be collected and leaving large areas un-surveyed. Aerial surveys have proven an effective way to locate and study cetacean movements but are costly and limited in spatial extent. Here we present a semi-automated pipeline for whale detection from very high-resolution (sub-meter) satellite imagery that makes use of a convolutional neural network (CNN). We trained ResNet, and DenseNet CNNs using down-scaled aerial imagery and tested each model on 31 cm-resolution imagery obtained from the WorldView-3 sensor. Satellite imagery was tiled and the trained algorithms were used to classify whether or not a tile was likely to contain a whale. Our best model correctly classified 100% of tiles with whales, and 94% of tiles containing only water. All model architectures performed well, with learning rate controlling performance more than architecture. While the resolution of commercially-available satellite imagery continues to make whale identification a challenging problem, our approach provides the means to efficiently eliminate areas without whales and, in doing so, greatly accelerates ocean surveys for large cetaceans.

Suggested Citation

  • Alex Borowicz & Hieu Le & Grant Humphries & Georg Nehls & Caroline Höschle & Vladislav Kosarev & Heather J Lynch, 2019. "Aerial-trained deep learning networks for surveying cetaceans from satellite imagery," PLOS ONE, Public Library of Science, vol. 14(10), pages 1-15, October.
  • Handle: RePEc:plo:pone00:0212532
    DOI: 10.1371/journal.pone.0212532
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    1. Kadukothanahally Nagaraju Shivaprakash & Niraj Swami & Sagar Mysorekar & Roshni Arora & Aditya Gangadharan & Karishma Vohra & Madegowda Jadeyegowda & Joseph M. Kiesecker, 2022. "Potential for Artificial Intelligence (AI) and Machine Learning (ML) Applications in Biodiversity Conservation, Managing Forests, and Related Services in India," Sustainability, MDPI, vol. 14(12), pages 1-20, June.

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