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An automated work-flow for pinniped surveys : A new tool for monitoring population dynamics

Infantes, Eduardo ; Carroll, Daire ; Silva, Willian T.A.F. LU orcid ; Härkönen, Tero ; Edwards, Scott V. and Harding, Karin C. (2022) In Frontiers in Ecology and Evolution 10.
Abstract

Detecting changes in population trends depends on the accuracy of estimated mean population growth rates and thus the quality of input data. However, monitoring wildlife populations poses economic and logistic challenges especially in complex and remote habitats. Declines in wildlife populations can remain undetected for years unless effective monitoring techniques are developed, guiding appropriate management actions. We developed an automated survey workflow using unmanned aerial vehicles (drones) to quantify the number and size of individual animals, using the well-studied Scandinavian harbour seal (Phoca vitulina) as a model species. We compared ground-based counts using telescopes with manual flights, using a zoom photo/video, and... (More)

Detecting changes in population trends depends on the accuracy of estimated mean population growth rates and thus the quality of input data. However, monitoring wildlife populations poses economic and logistic challenges especially in complex and remote habitats. Declines in wildlife populations can remain undetected for years unless effective monitoring techniques are developed, guiding appropriate management actions. We developed an automated survey workflow using unmanned aerial vehicles (drones) to quantify the number and size of individual animals, using the well-studied Scandinavian harbour seal (Phoca vitulina) as a model species. We compared ground-based counts using telescopes with manual flights, using a zoom photo/video, and pre-programmed flights producing orthomosaic photo maps. We used machine learning to identify and count both pups and older seals and we present a new method for measuring body size automatically. We evaluate the population’s reproductive success using drone data, historical counts and predictions from a Leslie matrix population model. The most accurate and time-efficient results were achieved by performing pre-programmed flights where individual seals are identified by machine learning and their body sizes are measured automatically. The accuracy of the machine learning detector was 95–97% and the classification error was 4.6 ± 2.9 for pups and 3.1 ± 2.1 for older seals during good light conditions. There was a clear distinction between the body sizes of pups and older seals during breeding time. We estimated 320 pups in the breeding season 2021 with the drone, which is well beyond the expected number, based on historical data on pup production. The new high quality data from the drone survey confirms earlier indications of a deteriorating reproductive rate in this important harbour seal colony. We show that aerial drones and machine learning are powerful tools for monitoring wildlife in inaccessible areas which can be used to assess annual recruitment and seasonal variations in body condition.

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author
; ; ; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
drone monitoring, harbour seals (Phoca vitulina), machine learning (ML), marine mammal monitoring, population dynamics, somatic growth, wildlife conservation, wildlife management
in
Frontiers in Ecology and Evolution
volume
10
article number
905309
publisher
Frontiers Media S. A.
external identifiers
  • scopus:85136548222
ISSN
2296-701X
DOI
10.3389/fevo.2022.905309
language
English
LU publication?
yes
id
a534adf0-3376-4f3f-b35f-83e8655e1644
date added to LUP
2022-10-17 10:18:07
date last changed
2023-05-10 09:53:26
@article{a534adf0-3376-4f3f-b35f-83e8655e1644,
  abstract     = {{<p>Detecting changes in population trends depends on the accuracy of estimated mean population growth rates and thus the quality of input data. However, monitoring wildlife populations poses economic and logistic challenges especially in complex and remote habitats. Declines in wildlife populations can remain undetected for years unless effective monitoring techniques are developed, guiding appropriate management actions. We developed an automated survey workflow using unmanned aerial vehicles (drones) to quantify the number and size of individual animals, using the well-studied Scandinavian harbour seal (Phoca vitulina) as a model species. We compared ground-based counts using telescopes with manual flights, using a zoom photo/video, and pre-programmed flights producing orthomosaic photo maps. We used machine learning to identify and count both pups and older seals and we present a new method for measuring body size automatically. We evaluate the population’s reproductive success using drone data, historical counts and predictions from a Leslie matrix population model. The most accurate and time-efficient results were achieved by performing pre-programmed flights where individual seals are identified by machine learning and their body sizes are measured automatically. The accuracy of the machine learning detector was 95–97% and the classification error was 4.6 ± 2.9 for pups and 3.1 ± 2.1 for older seals during good light conditions. There was a clear distinction between the body sizes of pups and older seals during breeding time. We estimated 320 pups in the breeding season 2021 with the drone, which is well beyond the expected number, based on historical data on pup production. The new high quality data from the drone survey confirms earlier indications of a deteriorating reproductive rate in this important harbour seal colony. We show that aerial drones and machine learning are powerful tools for monitoring wildlife in inaccessible areas which can be used to assess annual recruitment and seasonal variations in body condition.</p>}},
  author       = {{Infantes, Eduardo and Carroll, Daire and Silva, Willian T.A.F. and Härkönen, Tero and Edwards, Scott V. and Harding, Karin C.}},
  issn         = {{2296-701X}},
  keywords     = {{drone monitoring; harbour seals (Phoca vitulina); machine learning (ML); marine mammal monitoring; population dynamics; somatic growth; wildlife conservation; wildlife management}},
  language     = {{eng}},
  month        = {{08}},
  publisher    = {{Frontiers Media S. A.}},
  series       = {{Frontiers in Ecology and Evolution}},
  title        = {{An automated work-flow for pinniped surveys : A new tool for monitoring population dynamics}},
  url          = {{http://dx.doi.org/10.3389/fevo.2022.905309}},
  doi          = {{10.3389/fevo.2022.905309}},
  volume       = {{10}},
  year         = {{2022}},
}