Published February 27, 2019 | Version v1
Dataset Open

Data from: A comparison of techniques for classifying behaviour from accelerometers for two species of seabird

  • 1. McGill University
  • 2. Environment and Climate Change Canada National Wildlife Research Centre Ottawa Ontario Canada*
  • 3. Institute for Seabird Research and Conservation Anchorage Alaska*

Description

The behavior of many wild animals remains a mystery, as it is difficult to quantify behaviour of species that cannot be easily followed throughout their daily or seasonal movements. Accelerometers can solve some of these mysteries, as they collect activity data at a high temporal resolution (< 1 sec), can be relatively small (< 1 g) so they minimally disrupt behavior, and are increasingly capable of recording data for long periods. Nonetheless, there is a need for increased validation of methods to classify animal behaviour from accelerometers to promote widespread adoption of this technology in ecology. We assessed the accuracy of six different behavioral assignment methods for two species of seabird, thick-billed murres (Uria lomvia) and black-legged kittiwakes (Rissa tridactyla). We identified three behaviors using tri-axial accelerometers: standing, swimming and flying, after classifying diving using a pressure sensor for murres. We evaluated six classification methods relative to independent classifications from concurrent GPS tracking data. We used four variables for classification: depth, wing beat frequency, pitch and dynamic acceleration. Average accuracy for all methods was greater than 98% for murres, and 89% and 93% for kittiwakes during incubation and chick rearing, respectively. Variable selection showed that classification accuracy did not improve with more than two (kittiwakes) or three (murres) variables. We conclude that simple methods of behavioral classification can be as accurate for classifying basic behaviors as more complex approaches, and that identifying suitable accelerometer metrics is more important than using a particular classification method when the objective is to develop a daily activity or energy budget. Highly accurate daily activity budgets can be generated from accelerometer data using a multiple methods and a small number of accelerometer metrics; therefore, identifying a suitable behavioral classification method should not be a barrier to using accelerometers in studies of seabird behavior and ecology.

Notes

Files

BLKI Accelerometer Scripts.zip

Files (3.3 GB)

Name Size Download all
md5:55c00cfee1de9cfcaa780389d2ccd414
19.2 kB Preview Download
md5:f3201d949c7b3f35b0b4373d1bbc8d28
341.2 MB Preview Download
md5:62e8d2f1b7c6d8285530de978fb2923f
366.4 MB Preview Download
md5:59e615e8e3fa745d5b2174de71c5f0ef
488.3 MB Preview Download
md5:be2f19cd74457fe05445d66beba39554
7.7 MB Preview Download
md5:56bc311b458a969a288f193c5c2994c8
1.7 kB Preview Download
md5:4ccc902a90d2f27ed243933c10b941b0
1.6 kB Preview Download
md5:4ccc902a90d2f27ed243933c10b941b0
1.6 kB Preview Download
md5:4ccc902a90d2f27ed243933c10b941b0
1.6 kB Preview Download
md5:29f80b068c78da06b19cd8fa9cbd1b77
545 Bytes Preview Download
md5:c756e5a97c1864cf9efcda299ba73286
1.6 kB Preview Download
md5:0348c4c8a97798347d040a802bcc931b
1.7 kB Preview Download
md5:0348c4c8a97798347d040a802bcc931b
1.7 kB Preview Download
md5:0348c4c8a97798347d040a802bcc931b
1.7 kB Preview Download
md5:0348c4c8a97798347d040a802bcc931b
1.7 kB Preview Download
md5:be02f67846ba67d437f274884b105b71
455 Bytes Preview Download
md5:070121378ecfe87a07f491751cf6f105
20.0 kB Preview Download
md5:61643614e2b97a42cdd605c03332f16f
484.3 MB Preview Download
md5:6ecaa756fdac199431d0817951c522e9
557.0 MB Preview Download
md5:bc86d602d14b9050210d4257ad8dabe9
496.8 MB Preview Download
md5:2541af5e7a6888cca0f576fa7cce426a
551.5 MB Preview Download
md5:94487add3ada70b013cebed912275e69
14.2 MB Preview Download

Additional details

Related works

Is cited by
10.1002/ece3.4740 (DOI)