Analysis of animal accelerometer data using hidden Markov models

被引:121
|
作者
Leos-Barajas, Vianey [1 ]
Photopoulou, Theoni [2 ,3 ]
Langrock, Roland [4 ]
Patterson, Toby A. [5 ]
Watanabe, Yuuki Y. [6 ,7 ]
Murgatroyd, Megan [8 ,9 ]
Papastamatiou, Yannis P. [10 ,11 ]
机构
[1] Iowa State Univ, Dept Stat, Ames, IA 50011 USA
[2] Univ Cape Town, Dept Stat Sci, Ctr Stat Ecol Environm & Conservat, ZA-7701 Cape Town, South Africa
[3] Nelson Mandela Metropolitan Univ, Inst Coastal & Marine Res, Dept Zool, ZA-6031 Port Elizabeth, South Africa
[4] Univ Bielefeld, Dept Business Adm & Econ, Postfach 100131, D-33501 Bielefeld, Germany
[5] CSIRO Oceans & Atmosphere, POB 1538, Hobart, Tas 7000, Australia
[6] Natl Inst Polar Res, 10-3 Midori Cho, Tachikawa, Tokyo 1908518, Japan
[7] SOKENDAI, 10-3 Midori Cho, Tachikawa, Tokyo 1908518, Japan
[8] Univ Cape Town, Anim Demog Unit, Dept Biol Sci, ZA-7701 Cape Town, South Africa
[9] Univ Cape Town, Percy FitzPatrick Inst African Ornithol, Dept Biol Sci, ZA-7701 Cape Town, South Africa
[10] Univ St Andrews, Sch Biol, Scottish Oceans Inst, St Andrews KY16 8LB, Fife, Scotland
[11] Florida Int Univ, Dept Biol Sci, 3000 NE 151st,MSB 350, North Miami, FL 33181 USA
来源
METHODS IN ECOLOGY AND EVOLUTION | 2017年 / 8卷 / 02期
基金
日本学术振兴会; 新加坡国家研究基金会;
关键词
activity recognition; animal behaviour; latent states; serial correlation; time series; BEHAVIORAL STATES; PHYSICAL-ACTIVITY; ACCELERATION DATA; PREY CAPTURE; CLASSIFICATION; RECOGNITION; MOVEMENT;
D O I
10.1111/2041-210X.12657
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
1. Use of accelerometers is now widespread within animal biologging 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 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, an HMM can be used for state prediction or to make inferences about drivers of behaviour. For state prediction, a supervised learning approach can be applied. That is, an HMM is trained to classify unlabelled acceleration data into a finite set of pre-specified categories. An unsupervised learning approach can be used to infer new aspects of animal behaviour when biologically meaningful response variables are used, with the caveat that the states may not map to specific behaviours. We provide the details necessary to implement and assess an HMM in both the supervised and unsupervised learning context and discuss the data requirements of each case. We outline two applications to marine and aerial systems (shark and eagle) taking the unsupervised learning approach, which is more readily applicable to animal activity measured in the field. HMMs were used to infer the effects of temporal, atmospheric and tidal inputs on animal behaviour. Animal accelerometer data allow ecologists to identify important correlates and drivers of animal activity (and hence behaviour). The HMM framework is well suited to deal with the main features commonly observed in accelerometer data and can easily be extended to suit a wide range of types of animal activity data. The ability to combine direct observations of animal activity with statistical models, which account for the features of accelerometer data, offers a new way to quantify animal behaviour and energetic expenditure and to deepen our insights into individual behaviour as a constituent of populations and ecosystems.
引用
收藏
页码:161 / 173
页数:13
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