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A convolutional neural network for detecting sea turtles in drone imagery

Publication ,  Journal Article
Gray, PC; Fleishman, AB; Klein, DJ; McKown, MW; Bézy, VS; Lohmann, KJ; Johnston, DW
Published in: Methods in Ecology and Evolution
March 1, 2019

Marine megafauna are difficult to observe and count because many species travel widely and spend large amounts of time submerged. As such, management programmes seeking to conserve these species are often hampered by limited information about population levels. Unoccupied aircraft systems (UAS, aka drones) provide a potentially useful technique for assessing marine animal populations, but a central challenge lies in analysing the vast amounts of data generated in the images or video acquired during each flight. Neural networks are emerging as a powerful tool for automating object detection across data domains and can be applied to UAS imagery to generate new population-level insights. To explore the utility of these emerging technologies in a challenging field setting, we used neural networks to enumerate olive ridley turtles Lepidochelys olivacea in drone images acquired during a mass-nesting event on the coast of Ostional, Costa Rica. Results revealed substantial promise for this approach; specifically, our model detected 8% more turtles than manual counts while effectively reducing the manual validation burden from 2,971,554 to 44,822 image windows. Our detection pipeline was trained on a relatively small set of turtle examples (N = 944), implying that this method can be easily bootstrapped for other applications, and is practical with real-world UAS datasets. Our findings highlight the feasibility of combining UAS and neural networks to estimate population levels of diverse marine animals and suggest that the automation inherent in these techniques will soon permit monitoring over spatial and temporal scales that would previously have been impractical.

Duke Scholars

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Published In

Methods in Ecology and Evolution

DOI

EISSN

2041-210X

Publication Date

March 1, 2019

Volume

10

Issue

3

Start / End Page

345 / 355

Related Subject Headings

  • 4104 Environmental management
  • 3109 Zoology
  • 3103 Ecology
  • 0603 Evolutionary Biology
  • 0602 Ecology
  • 0502 Environmental Science and Management
 

Citation

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Gray, P. C., Fleishman, A. B., Klein, D. J., McKown, M. W., Bézy, V. S., Lohmann, K. J., & Johnston, D. W. (2019). A convolutional neural network for detecting sea turtles in drone imagery. Methods in Ecology and Evolution, 10(3), 345–355. https://doi.org/10.1111/2041-210X.13132
Gray, P. C., A. B. Fleishman, D. J. Klein, M. W. McKown, V. S. Bézy, K. J. Lohmann, and D. W. Johnston. “A convolutional neural network for detecting sea turtles in drone imagery.” Methods in Ecology and Evolution 10, no. 3 (March 1, 2019): 345–55. https://doi.org/10.1111/2041-210X.13132.
Gray PC, Fleishman AB, Klein DJ, McKown MW, Bézy VS, Lohmann KJ, et al. A convolutional neural network for detecting sea turtles in drone imagery. Methods in Ecology and Evolution. 2019 Mar 1;10(3):345–55.
Gray, P. C., et al. “A convolutional neural network for detecting sea turtles in drone imagery.” Methods in Ecology and Evolution, vol. 10, no. 3, Mar. 2019, pp. 345–55. Scopus, doi:10.1111/2041-210X.13132.
Gray PC, Fleishman AB, Klein DJ, McKown MW, Bézy VS, Lohmann KJ, Johnston DW. A convolutional neural network for detecting sea turtles in drone imagery. Methods in Ecology and Evolution. 2019 Mar 1;10(3):345–355.
Journal cover image

Published In

Methods in Ecology and Evolution

DOI

EISSN

2041-210X

Publication Date

March 1, 2019

Volume

10

Issue

3

Start / End Page

345 / 355

Related Subject Headings

  • 4104 Environmental management
  • 3109 Zoology
  • 3103 Ecology
  • 0603 Evolutionary Biology
  • 0602 Ecology
  • 0502 Environmental Science and Management