Abstract

At-sea behaviour of seabirds have received significant attention in ecology over the last decades as it is a key process in the ecology and fate of these populations. It is also, through the position of top predator that these species often occupy, a relevant and integrative indicator of the dynamics of the marine ecosystems they rely on. Seabird trajectories are recorded through the deployment of GPS, and a variety of statistical approaches have been tested to infer probable behaviours from these location data. Recently, deep learning tools have shown promising results for the segmentation and classification of animal behaviour from trajectory data. Yet, these approaches have not been widely used and investigation is still needed to identify optimal network architecture and to demonstrate their generalization properties. From a database of about 300 foraging trajectories derived from GPS data deployed simultaneously with pressure sensors for the identification of dives, this work has benchmarked deep neural network architectures trained in a supervised manner for the prediction of dives from trajectory data. It first confirms that deep learning allows better dive prediction than usual methods such as Hidden Markov Models. It also demonstrates the generalization properties of the trained networks for inferring dives distribution for seabirds from other colonies and ecosystems. In particular, convolutional networks trained on Peruvian boobies from a specific colony show great ability to predict dives of boobies from other colonies and from distinct ecosystems. We further investigate accross-species generalization using a transfer learning strategy known as 'fine-tuning'. Starting from a convolutional network pre-trained on Guanay cormorant data reduced by two the size of the dataset needed to accurately predict dives in a tropical booby from Brazil. We believe that the networks trained in this study will provide relevant starting point for future fine-tuning works for seabird trajectory segmentation.

Highlights

  • Marine top predators have received significant attention in marine ecology over the last decades [1]

  • As evaluation metrics for dive prediction, we evaluated the receiver operating characteristics curve (ROC) which describes the performance of a binary classifier

  • Beyond area under the curve (AUC) and binary cross entropy (BCE) performance metrics, we evaluated the relevance of the estimated maps of dive distributions

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Summary

Introduction

Marine top predators have received significant attention in marine ecology over the last decades [1] They are known to use vast areas for feeding, requiring specific adaptive foraging strategies in order to localize their preys, especially in the pelagic environments which are highly variable [2]. Assessing consistency or shifts in foraging locations [5–7], and in the resource spatial partitioning [8, 9] provide crucial information for understanding marine ecosystems. This has been enabled by great technical advances in the miniaturization and autonomy of biologging devices [10, 11]. The development of tools dedicated to animal trajectories segmentation (i.e. for dive identification) is needed to extract more out of historical seabird foraging trajectories [17]

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