Literature DB >> 26994177

Using accelerometers to remotely and automatically characterize behavior in small animals.

Talisin T Hammond1, Dwight Springthorpe2, Rachel E Walsh3, Taylor Berg-Kirkpatrick4.   

Abstract

Activity budgets in wild animals are challenging to measure via direct observation because data collection is time consuming and observer effects are potentially confounding. Although tri-axial accelerometers are increasingly employed for this purpose, their application in small-bodied animals has been limited by weight restrictions. Additionally, accelerometers engender novel complications, as a system is needed to reliably map acceleration to behaviors. In this study, we describe newly developed, tiny acceleration-logging devices (1.5-2.5 g) and use them to characterize behavior in two chipmunk species. We collected paired accelerometer readings and behavioral observations from captive individuals. We then employed techniques from machine learning to develop an automatic system for coding accelerometer readings into behavioral categories. Finally, we deployed and recovered accelerometers from free-living, wild chipmunks. This is the first time to our knowledge that accelerometers have been used to generate behavioral data for small-bodied (<100 g), free-living mammals.
© 2016. Published by The Company of Biologists Ltd.

Entities:  

Keywords:  Acceleration; Activity budget; Animal behavior; Behavioral ecology; Chipmunks; Machine learning

Mesh:

Year:  2016        PMID: 26994177     DOI: 10.1242/jeb.136135

Source DB:  PubMed          Journal:  J Exp Biol        ISSN: 0022-0949            Impact factor:   3.312


  11 in total

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5.  Seeing It All: Evaluating Supervised Machine Learning Methods for the Classification of Diverse Otariid Behaviours.

Authors:  Monique A Ladds; Adam P Thompson; David J Slip; David P Hocking; Robert G Harcourt
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7.  Assessment of Machine Learning Models to Identify Port Jackson Shark Behaviours Using Tri-Axial Accelerometers.

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8.  Video Validation of Tri-Axial Accelerometer for Monitoring Zoo-Housed Tamandua tetradactyla Activity Patterns in Response to Changes in Husbandry Conditions.

Authors:  Sofía Pavese; Carlos Centeno; Lorenzo Von Fersen; Gabina V Eguizábal; Luis Donet; Camila J Asencio; Daniel P Villarreal; Juan Manuel Busso
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9.  Remote Recognition of Moving Behaviors for Captive Harbor Seals Using a Smart-Patch System via Bluetooth Communication.

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Authors:  G J Sutton; J A Botha; J R Speakman; J P Y Arnould
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