Analysis of animal accelerometer data using hidden Markov models
Vianey Leos-Barajas, Theoni Photopoulou, Roland Langrock, Toby A., Patterson, Yuuki Watanabe, Megan Murgatroyd, Yannis P. Papastamatiou

TL;DR
This paper demonstrates how hidden Markov models can be used to analyze animal accelerometer data, enabling both supervised classification and unsupervised discovery of behavioral patterns in field studies.
Contribution
It provides a detailed framework for implementing HMMs in both supervised and unsupervised contexts for animal accelerometer data analysis, including practical applications.
Findings
HMMs effectively classify animal behaviors from accelerometer data.
Unsupervised HMMs reveal new behavioral insights in marine and aerial animals.
HMMs help identify environmental influences on animal activity.
Abstract
Use of accelerometers is now widespread within animal biotelemetry as they provide a means of measuring an animal's activity in a meaningful and quantitative way where direct observation is not possible. In sequential acceleration data there is a natural dependence between observations of movement or behaviour, a fact that has been largely ignored in most analyses. Analyses of acceleration data where serial dependence has been explicitly modelled have largely relied on hidden Markov models (HMMs). Depending on the aim of an analysis, either a supervised or an unsupervised learning approach can be applied. Under a supervised context, an HMM is trained to classify unlabelled acceleration data into a finite set of pre-specified categories, whereas we will demonstrate how an unsupervised learning approach can be used to infer new aspects of animal behaviour. We will provide the details…
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Taxonomy
TopicsMarine animal studies overview · Water Quality Monitoring Technologies · Animal Vocal Communication and Behavior
