Gray whale detection in satellite imagery using deep learning

Funder: British Antarctic Survey; doi: http://dx.doi.org/10.13039/501100007849 <jats:title>Abstract</jats:title><jats:p>The combination of very high resolution (VHR) satellite remote sensing imagery and deep learning via convolutional neural networks provides opportunities to impro...

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Main Authors: Green, KM, Virdee, MK, Cubaynes, HC, Aviles-Rivero, AI, Fretwell, PT, Gray, PC, Johnston, DW, Schönlieb, CB, Torres, LG, Jackson, JA
Format: Article in Journal/Newspaper
Language:English
Published: Wiley 2023
Subjects:
Online Access:https://www.repository.cam.ac.uk/handle/1810/354097
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author Green, KM
Virdee, MK
Cubaynes, HC
Aviles-Rivero, AI
Fretwell, PT
Gray, PC
Johnston, DW
Schönlieb, CB
Torres, LG
Jackson, JA
author_facet Green, KM
Virdee, MK
Cubaynes, HC
Aviles-Rivero, AI
Fretwell, PT
Gray, PC
Johnston, DW
Schönlieb, CB
Torres, LG
Jackson, JA
author_sort Green, KM
collection Apollo - University of Cambridge Repository
description Funder: British Antarctic Survey; doi: http://dx.doi.org/10.13039/501100007849 <jats:title>Abstract</jats:title><jats:p>The combination of very high resolution (VHR) satellite remote sensing imagery and deep learning via convolutional neural networks provides opportunities to improve global whale population surveys through increasing efficiency and spatial coverage. Many whale species are recovering from commercial whaling and face multiple anthropogenic threats. Regular, accurate population surveys are therefore of high importance for conservation efforts. In this study, a state‐of‐the‐art object detection model (YOLOv5) was trained to detect gray whales (<jats:italic>Eschrichtius robustus</jats:italic>) in VHR satellite images, using training data derived from satellite images spanning different sea states in a key breeding habitat, as well as aerial imagery collected by unoccupied aircraft systems. Varying combinations of aerial and satellite imagery were incorporated into the training set. Mean average precision, whale precision, and recall ranged from 0.823 to 0.922, 0.800 to 0.939, and 0.843 to 0.889, respectively, across eight experiments. The results imply that including aerial imagery in the training data did not substantially impact model performance, and therefore, expansion of representative satellite datasets should be prioritized. The accuracy of the results on real‐world data, along with short training times, indicates the potential of using this method to automate whale detection for population surveys.</jats:p>
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British Antarctic Survey
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spelling ftunivcam:oai:www.repository.cam.ac.uk:1810/354097 2025-01-16T19:10:06+00:00 Gray whale detection in satellite imagery using deep learning Green, KM Virdee, MK Cubaynes, HC Aviles-Rivero, AI Fretwell, PT Gray, PC Johnston, DW Schönlieb, CB Torres, LG Jackson, JA 2023-08-02T16:07:27Z application/pdf text/xml https://www.repository.cam.ac.uk/handle/1810/354097 en eng eng Wiley http://dx.doi.org/10.1002/rse2.352 Remote Sensing in Ecology and Conservation https://www.repository.cam.ac.uk/handle/1810/354097 CNN Eschrichtius robustus gray whale machine learning remote sensing VHR satellite imagery Article 2023 ftunivcam 2024-01-18T23:19:23Z Funder: British Antarctic Survey; doi: http://dx.doi.org/10.13039/501100007849 <jats:title>Abstract</jats:title><jats:p>The combination of very high resolution (VHR) satellite remote sensing imagery and deep learning via convolutional neural networks provides opportunities to improve global whale population surveys through increasing efficiency and spatial coverage. Many whale species are recovering from commercial whaling and face multiple anthropogenic threats. Regular, accurate population surveys are therefore of high importance for conservation efforts. In this study, a state‐of‐the‐art object detection model (YOLOv5) was trained to detect gray whales (<jats:italic>Eschrichtius robustus</jats:italic>) in VHR satellite images, using training data derived from satellite images spanning different sea states in a key breeding habitat, as well as aerial imagery collected by unoccupied aircraft systems. Varying combinations of aerial and satellite imagery were incorporated into the training set. Mean average precision, whale precision, and recall ranged from 0.823 to 0.922, 0.800 to 0.939, and 0.843 to 0.889, respectively, across eight experiments. The results imply that including aerial imagery in the training data did not substantially impact model performance, and therefore, expansion of representative satellite datasets should be prioritized. The accuracy of the results on real‐world data, along with short training times, indicates the potential of using this method to automate whale detection for population surveys.</jats:p> Article in Journal/Newspaper Antarc* Antarctic British Antarctic Survey Apollo - University of Cambridge Repository Antarctic
spellingShingle CNN
Eschrichtius robustus
gray whale
machine learning
remote sensing
VHR satellite imagery
Green, KM
Virdee, MK
Cubaynes, HC
Aviles-Rivero, AI
Fretwell, PT
Gray, PC
Johnston, DW
Schönlieb, CB
Torres, LG
Jackson, JA
Gray whale detection in satellite imagery using deep learning
title Gray whale detection in satellite imagery using deep learning
title_full Gray whale detection in satellite imagery using deep learning
title_fullStr Gray whale detection in satellite imagery using deep learning
title_full_unstemmed Gray whale detection in satellite imagery using deep learning
title_short Gray whale detection in satellite imagery using deep learning
title_sort gray whale detection in satellite imagery using deep learning
topic CNN
Eschrichtius robustus
gray whale
machine learning
remote sensing
VHR satellite imagery
topic_facet CNN
Eschrichtius robustus
gray whale
machine learning
remote sensing
VHR satellite imagery
url https://www.repository.cam.ac.uk/handle/1810/354097