Analyzing animal movement using deep learning
Thibault Fronville, Maximilian Pichler, Johannes Signer, Marius Grabow, Stephanie Kramer-Schadt, Viktoriia Radchuk, Florian Hartig

TL;DR
This paper demonstrates that deep neural networks can enhance step selection functions in animal movement analysis by capturing complex effects and variability, surpassing traditional models in flexibility and interpretability.
Contribution
It introduces DNN-SSFs as a novel approach, extending traditional SSFs with deep learning to model complex habitat preferences and inter-individual variability.
Findings
DNN-SSFs effectively recover linear effects like GLMs.
They automatically detect complex interactions and nonlinear responses.
Proposed DNN structures capture inter-individual effects as nonlinear random effects.
Abstract
Understanding how animals move through heterogeneous landscapes is central to ecology and conservation. In this context, step selection functions (SSFs) have emerged as the main statistical framework to analyze how biotic and abiotic predictors influence movement paths observed by radio tracking, GPS tags, or similar sensors. A traditional SSF consists of a generalized linear model (GLM) that infers the animal's habitat preferences (selection coefficients) by comparing each observed movement step to random steps. Such GLM-SSFs, however, cannot flexibly consider non-linear or interacting effects, unless those have been specified a priori. To address this problem, generalized additive models have been integrated in the SSF framework, but those GAM-SSFs are still limited in their ability to represent complex habitat preferences and inter-individual variability. Here we explore the utility…
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Taxonomy
TopicsWildlife Ecology and Conservation · Wildlife-Road Interactions and Conservation · Animal Vocal Communication and Behavior
