Login / Signup

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

Cédric SueurVíctor Planas-BielsaSimon BenhamouSebastien GeigerJordan MartinFlora SiegwaltPierre LelongJulie GresserDenis EtienneGaëlle HiélardAlexandre ArqueSidney RegisNicolas LecerfCédric FrouinAbdelwahab BenhalilouCéline MurgaleThomas MailletLucas AndreaniGuilhem CampistronHélène DelvauxChristelle GuyonSandrine RichardFabien LefebvreNathalie AubertCaroline HaboldYvon le MahoDamien Chevallier
Published in: Royal Society open science (2020)
The identification of sea turtle behaviours is a prerequisite to predicting the activities and time-budget of these animals in their natural habitat over the long term. However, this is hampered by a lack of reliable methods that enable the detection and monitoring of certain key behaviours such as feeding. This study proposes a combined approach that automatically identifies the different behaviours of free-ranging sea turtles through the use of animal-borne multi-sensor recorders (accelerometer, gyroscope and time-depth recorder), validated by animal-borne video-recorder data. We show here that the combination of supervised learning algorithms and multi-signal analysis tools can provide accurate inferences of the behaviours expressed, including feeding and scratching behaviours that are of crucial ecological interest for sea turtles. Our procedure uses multi-sensor miniaturized loggers that can be deployed on free-ranging animals with minimal disturbance. It provides an easily adaptable and replicable approach for the long-term automatic identification of the different activities and determination of time-budgets in sea turtles. This approach should also be applicable to a broad range of other species and could significantly contribute to the conservation of endangered species by providing detailed knowledge of key animal activities such as feeding, travelling and resting.
Keyphrases
  • machine learning
  • healthcare
  • climate change
  • deep learning
  • physical activity
  • artificial intelligence
  • high resolution
  • heart rate
  • electronic health record
  • blood pressure
  • human health
  • data analysis
  • label free