Literature DB >> 29661804

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

L Jeantet1, F Dell'Amico2, M-A Forin-Wiart3, M Coutant2, M Bonola3, D Etienne4, J Gresser5, S Regis3, N Lecerf3, F Lefebvre3, B de Thoisy6, Y Le Maho3, M Brucker3, N Châtelain3, R Laesser3, F Crenner3, Y Handrich3, R Wilson7, D Chevallier3.   

Abstract

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.
© 2018. Published by The Company of Biologists Ltd.

Entities:  

Keywords:  Accelerometry; Endangered species; Supervised learning algorithms

Mesh:

Year:  2018        PMID: 29661804     DOI: 10.1242/jeb.177378

Source DB:  PubMed          Journal:  J Exp Biol        ISSN: 0022-0949            Impact factor:   3.312


  5 in total

1.  Estimation of the Maternal Investment of Sea Turtles by Automatic Identification of Nesting Behavior and Number of Eggs Laid from a Tri-Axial Accelerometer.

Authors:  Lorène Jeantet; Vadym Hadetskyi; Vincent Vigon; François Korysko; Nicolas Paranthoen; Damien Chevallier
Journal:  Animals (Basel)       Date:  2022-02-20       Impact factor: 2.752

2.  Multivariate analysis of biologging data reveals the environmental determinants of diving behaviour in a marine reptile.

Authors:  Jenna L Hounslow; Sabrina Fossette; Evan E Byrnes; Scott D Whiting; Renae N Lambourne; Nicola J Armstrong; Anton D Tucker; Anthony R Richardson; Adrian C Gleiss
Journal:  R Soc Open Sci       Date:  2022-08-10       Impact factor: 3.653

3.  Remote Recognition of Moving Behaviors for Captive Harbor Seals Using a Smart-Patch System via Bluetooth Communication.

Authors:  Seungyeob Kim; Jinheon Jeong; Seung Gi Seo; Sehyeok Im; Won Young Lee; Sung Hun Jin
Journal:  Micromachines (Basel)       Date:  2021-03-04       Impact factor: 2.891

4.  Behavioural inference from signal processing using animal-borne multi-sensor loggers: a novel solution to extend the knowledge of sea turtle ecology.

Authors:  Lorène Jeantet; Víctor Planas-Bielsa; Simon Benhamou; Sebastien Geiger; Jordan Martin; Flora Siegwalt; Pierre Lelong; Julie Gresser; Denis Etienne; Gaëlle Hiélard; Alexandre Arque; Sidney Regis; Nicolas Lecerf; Cédric Frouin; Abdelwahab Benhalilou; Céline Murgale; Thomas Maillet; Lucas Andreani; Guilhem Campistron; Hélène Delvaux; Christelle Guyon; Sandrine Richard; Fabien Lefebvre; Nathalie Aubert; Caroline Habold; Yvon le Maho; Damien Chevallier
Journal:  R Soc Open Sci       Date:  2020-05-13       Impact factor: 2.963

5.  Augmenting biologging with supervised machine learning to study in situ behavior of the medusa Chrysaora fuscescens.

Authors:  Clara Fannjiang; T Aran Mooney; Seth Cones; David Mann; K Alex Shorter; Kakani Katija
Journal:  J Exp Biol       Date:  2019-08-23       Impact factor: 3.312

  5 in total

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