4.5 Article

Combined use of two supervised learning algorithms to model sea turtle behaviours from tri-axial acceleration data

Journal

JOURNAL OF EXPERIMENTAL BIOLOGY
Volume 221, Issue 10, Pages -

Publisher

COMPANY BIOLOGISTS LTD
DOI: 10.1242/jeb.177378

Keywords

Accelerometry; Endangered species; Supervised learning algorithms

Categories

Funding

  1. Direction de l'Environnement, de l'Amenagement et du Logement Guyane
  2. Centre National d'Etudes Spatiales, Fonds Europeens de Developpement Regional Martinique (European Union)
  3. Direction de l'Environnement, de l'Amenagement et du Logement Martinique
  4. Office De l'Eau Martinique
  5. Mission Interdisciplinarite Centre National de la Recherche Scientifique
  6. Fondation Electricite De France
  7. Aquarium La Rochelle
  8. Fondation de France
  9. ANTIDOT project (Pepiniere Interdisciplinaire Guyane, Mission pour l'Interdisciplinarite, Centre National de la Recherche Scientifique)
  10. Direction de l'Environnement, de l'Ame'nagement et du Logement Guyane
  11. Centre National d'Etudes Spatiales

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Accelerometers are becoming ever more important sensors in animal-attached technology, providing data that allow determination of body posture and movement and thereby helping to elucidate behaviour in animals that are difficult to observe. We sought to validate the identification of sea turtle behaviours from accelerometer signals by deploying tags on the carapace of a juvenile loggerhead (Caretta caretta), an adult hawksbill (Eretmochelys imbricata) and an adult green turtle (Chelonia mydas) at Aquarium La Rochelle, France. We recorded tri-axial acceleration at 50 Hz for each species for a full day while two fixed cameras recorded their behaviours. We identified behaviours from the acceleration data using two different supervised learning algorithms, Random Forest and Classification And Regression Tree (CART). treating the data from the adult animals as separate from the juvenile data. We achieved a global accuracy of 81.30% for the adult hawksbill and green turtle CART model and 71.63% for the juvenile loggerhead, identifying 10 and 12 different behaviours. respectively. Equivalent figures were 86.96% for the adult hawksbill and green turtle Random Forest model and 79.49% for the juvenile loggerhead, for the same behaviours. The use of Random Forest combined with CART algorithms allowed us to understand the decision rules implicated in behaviour discrimination, and thus remove or group together some 'confused' or under-represented behaviours in order to get the most accurate models. This study is the first to validate accelerometer data to identify turtle behaviours and the approach can now be tested on other captive sea turtle species.

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