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Identifying prey capture events of a free-ranging marine predator using bio-logger data and deep learning. / Schoombie, Stefan ; Jeantet, Lorene; Chimienti, Marianna et al.
In: Royal Society Open Science, Vol. 11, No. 6, 240271, 06.2024.

Research output: Contribution to journalArticlepeer-review

HarvardHarvard

Schoombie, S, Jeantet, L, Chimienti, M, Sutton, GJ, Pistorius, PA, Dufourq, E, Lowther, AD & Oosthuizen, C 2024, 'Identifying prey capture events of a free-ranging marine predator using bio-logger data and deep learning', Royal Society Open Science, vol. 11, no. 6, 240271. https://doi.org/10.1098/rsos.240271

APA

Schoombie, S., Jeantet, L., Chimienti, M., Sutton, G. J., Pistorius, P. A., Dufourq, E., Lowther, A. D., & Oosthuizen, C. (2024). Identifying prey capture events of a free-ranging marine predator using bio-logger data and deep learning. Royal Society Open Science, 11(6), Article 240271. https://doi.org/10.1098/rsos.240271

CBE

Schoombie S, Jeantet L, Chimienti M, Sutton GJ, Pistorius PA, Dufourq E, Lowther AD, Oosthuizen C. 2024. Identifying prey capture events of a free-ranging marine predator using bio-logger data and deep learning. Royal Society Open Science. 11(6):Article 240271. https://doi.org/10.1098/rsos.240271

MLA

VancouverVancouver

Schoombie S, Jeantet L, Chimienti M, Sutton GJ, Pistorius PA, Dufourq E et al. Identifying prey capture events of a free-ranging marine predator using bio-logger data and deep learning. Royal Society Open Science. 2024 Jun;11(6):240271. Epub 2024 Jun 19. doi: 10.1098/rsos.240271

Author

Schoombie, Stefan ; Jeantet, Lorene ; Chimienti, Marianna et al. / Identifying prey capture events of a free-ranging marine predator using bio-logger data and deep learning. In: Royal Society Open Science. 2024 ; Vol. 11, No. 6.

RIS

TY - JOUR

T1 - Identifying prey capture events of a free-ranging marine predator using bio-logger data and deep learning

AU - Schoombie, Stefan

AU - Jeantet, Lorene

AU - Chimienti, Marianna

AU - Sutton, Grace J.

AU - Pistorius, Pierre A.

AU - Dufourq, Emmanuel

AU - Lowther, Andrew D.

AU - Oosthuizen, Chris

PY - 2024/6

Y1 - 2024/6

N2 - Marine predators are integral to the functioning of marine ecosystems, and their consumption requirements should be integrated into ecosystem-based management policies. However, estimating prey consumption in diving marine predators requires innovative methods as predator–prey interactions are rarely observable. We developed a novel method, validated by animal-borne video, that uses tri-axial acceleration and depth data to quantify prey capture rates in chinstrap penguins (Pygoscelis antarctica). These penguins are important consumers of Antarctic krill (Euphausia superba), a commercially harvested crustacean central to the Southern Ocean food web. We collected a large data set (n = 41 individuals) comprising overlapping video, accelerometer and depth data from foraging penguins. Prey captures were manually identified in videos, and those observations were used in supervised training of two deep learning neural networks (convolutional neural network (CNN) and V-Net). Although the CNN and V-Net architectures and input data pipelines differed, both trained models were able to predict prey captures from new acceleration and depth data (linear regression slope of predictions against video-observed prey captures = 1.13; R 2 ≈ 0.86). Our results illustrate that deep learning algorithms offer a means to process the large quantities of data generated by contemporary bio-logging sensors to robustly estimate prey capture events in diving marine predators.

AB - Marine predators are integral to the functioning of marine ecosystems, and their consumption requirements should be integrated into ecosystem-based management policies. However, estimating prey consumption in diving marine predators requires innovative methods as predator–prey interactions are rarely observable. We developed a novel method, validated by animal-borne video, that uses tri-axial acceleration and depth data to quantify prey capture rates in chinstrap penguins (Pygoscelis antarctica). These penguins are important consumers of Antarctic krill (Euphausia superba), a commercially harvested crustacean central to the Southern Ocean food web. We collected a large data set (n = 41 individuals) comprising overlapping video, accelerometer and depth data from foraging penguins. Prey captures were manually identified in videos, and those observations were used in supervised training of two deep learning neural networks (convolutional neural network (CNN) and V-Net). Although the CNN and V-Net architectures and input data pipelines differed, both trained models were able to predict prey captures from new acceleration and depth data (linear regression slope of predictions against video-observed prey captures = 1.13; R 2 ≈ 0.86). Our results illustrate that deep learning algorithms offer a means to process the large quantities of data generated by contemporary bio-logging sensors to robustly estimate prey capture events in diving marine predators.

U2 - 10.1098/rsos.240271

DO - 10.1098/rsos.240271

M3 - Article

C2 - 39100157

VL - 11

JO - Royal Society Open Science

JF - Royal Society Open Science

SN - 2054-5703

IS - 6

M1 - 240271

ER -