A deep learning model to unlock secrets of animal movement and behaviour

Cédric Sueur
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Abstract

The movement of animals is a central component of their behavioural strategies. Statistical tools for movement data analysis, however, have long been limited, and in particular, unable to account for past movement information except in a very simplified way. In this work, we propose MoveFormer, a new step-based model of movement capable of learning directly from full animal trajectories. While inspired by the classical step-selection framework and previous work on the quantification of uncertainty in movement predictions, MoveFormer also builds upon recent developments in deep learning, such as the Transformer architecture, allowing it to incorporate long temporal contexts. The model predicts an animal’s next movement step given its past movement history, including not only purely positional and temporal information, but also any available environmental covariates such as land cover or temperature. We apply our model to a diverse dataset made up of over 1550 trajectories from over 100 studies, and show how it can be used to gain insights about the importance of the provided context features, including the extent of past movement history. Our software, along with the trained model weights, is released as open source.
一个深度学习模型来解开动物运动和行为的秘密
动物的运动是它们行为策略的核心组成部分。然而,用于运动数据分析的统计工具长期以来一直受到限制,特别是,除非以非常简化的方式,否则无法解释过去的运动信息。在这项工作中,我们提出了MoveFormer,这是一种新的基于步骤的运动模型,能够直接从动物的完整轨迹中学习。虽然受到经典的步骤选择框架和先前运动预测中不确定性量化工作的启发,但MoveFormer还建立在深度学习的最新发展基础上,例如Transformer架构,允许它合并长时间上下文。该模型根据动物过去的运动历史,不仅包括纯粹的位置和时间信息,还包括任何可用的环境协变量,如土地覆盖或温度,来预测动物的下一步运动。我们将我们的模型应用于由来自100多个研究的1550多个轨迹组成的多样化数据集,并展示了如何使用它来深入了解所提供的上下文特征的重要性,包括过去运动历史的程度。我们的软件以及训练好的模型权重都是开源的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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