Año Nuevo Island Animal Count: analyzing citizen science pinniped counts from drone imagery

Fluctuations in marine mammal abundance can reveal changes in local ecosystem health and inform conservation strategies. Unmanned aircraft systems (UAS) such as drones are increasingly being used to photograph and count marine mammals in remote locations; however, counting animals in images is a lab...

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Bibliographic Details
Main Author: Wood, Sarah
Format: Dataset
Language:unknown
Published: 2020
Subjects:
Online Access:https://zenodo.org/record/4279795
https://doi.org/10.7291/D1J66X
id ftzenodo:oai:zenodo.org:4279795
record_format openpolar
spelling ftzenodo:oai:zenodo.org:4279795 2023-05-15T16:05:45+02:00 Año Nuevo Island Animal Count: analyzing citizen science pinniped counts from drone imagery Wood, Sarah 2020-11-18 https://zenodo.org/record/4279795 https://doi.org/10.7291/D1J66X unknown https://zenodo.org/communities/dryad https://zenodo.org/record/4279795 https://doi.org/10.7291/D1J66X oai:zenodo.org:4279795 info:eu-repo/semantics/openAccess https://creativecommons.org/publicdomain/zero/1.0/legalcode drone imagery Marine mammals crowd-sourced data info:eu-repo/semantics/other dataset 2020 ftzenodo https://doi.org/10.7291/D1J66X 2023-03-10T19:03:00Z Fluctuations in marine mammal abundance can reveal changes in local ecosystem health and inform conservation strategies. Unmanned aircraft systems (UAS) such as drones are increasingly being used to photograph and count marine mammals in remote locations; however, counting animals in images is a laborious task. Crowd-sourced science has the potential to considerably reduce the time required to conduct these censuses but must first be validated against expert counts to confirm accuracy. Our objectives were to examine the citizen science counts for accuracy, identify costs and benefits of drone imagery and citizen science for pinniped censuses, and make recommendations for future uses of the data. We obtained and uploaded drone imagery of Año Nuevo Island in California to a custom citizen science website (sealcount.com) that instructed volunteers to count seals and sea lions. Across 212 days, over 1,500 volunteers counted northern elephant seals, harbor seals, California sea lions, and Steller sea lions in 90,000 photographs. We created five simple algorithms to extract one count per photograph from the crowd-sourced data and then analyzed each algorithm for accuracy by comparing to expert counts. We found that the median was the most accurate metric for extracting counts of seals but not sea lions. Volunteers consistently underestimated sea lions, so removing minimum values was the best strategy for extracting accurate counts of sea lions. We also found that while citizen scientists were able to accurately count adult seals, their accuracy was lower during pupping season, when small pups were present but difficult to detect. With proper precautions, citizen science saves money, labor, and time, while producing large amounts of accurate data that can be used to analyze a suite of biological patterns. Future applications include analyses of geo-spatial patterns within and between species, quantifying interspecific niche partitioning, and life history phenology. Dataset Elephant Seals Zenodo
institution Open Polar
collection Zenodo
op_collection_id ftzenodo
language unknown
topic drone imagery
Marine mammals
crowd-sourced data
spellingShingle drone imagery
Marine mammals
crowd-sourced data
Wood, Sarah
Año Nuevo Island Animal Count: analyzing citizen science pinniped counts from drone imagery
topic_facet drone imagery
Marine mammals
crowd-sourced data
description Fluctuations in marine mammal abundance can reveal changes in local ecosystem health and inform conservation strategies. Unmanned aircraft systems (UAS) such as drones are increasingly being used to photograph and count marine mammals in remote locations; however, counting animals in images is a laborious task. Crowd-sourced science has the potential to considerably reduce the time required to conduct these censuses but must first be validated against expert counts to confirm accuracy. Our objectives were to examine the citizen science counts for accuracy, identify costs and benefits of drone imagery and citizen science for pinniped censuses, and make recommendations for future uses of the data. We obtained and uploaded drone imagery of Año Nuevo Island in California to a custom citizen science website (sealcount.com) that instructed volunteers to count seals and sea lions. Across 212 days, over 1,500 volunteers counted northern elephant seals, harbor seals, California sea lions, and Steller sea lions in 90,000 photographs. We created five simple algorithms to extract one count per photograph from the crowd-sourced data and then analyzed each algorithm for accuracy by comparing to expert counts. We found that the median was the most accurate metric for extracting counts of seals but not sea lions. Volunteers consistently underestimated sea lions, so removing minimum values was the best strategy for extracting accurate counts of sea lions. We also found that while citizen scientists were able to accurately count adult seals, their accuracy was lower during pupping season, when small pups were present but difficult to detect. With proper precautions, citizen science saves money, labor, and time, while producing large amounts of accurate data that can be used to analyze a suite of biological patterns. Future applications include analyses of geo-spatial patterns within and between species, quantifying interspecific niche partitioning, and life history phenology.
format Dataset
author Wood, Sarah
author_facet Wood, Sarah
author_sort Wood, Sarah
title Año Nuevo Island Animal Count: analyzing citizen science pinniped counts from drone imagery
title_short Año Nuevo Island Animal Count: analyzing citizen science pinniped counts from drone imagery
title_full Año Nuevo Island Animal Count: analyzing citizen science pinniped counts from drone imagery
title_fullStr Año Nuevo Island Animal Count: analyzing citizen science pinniped counts from drone imagery
title_full_unstemmed Año Nuevo Island Animal Count: analyzing citizen science pinniped counts from drone imagery
title_sort año nuevo island animal count: analyzing citizen science pinniped counts from drone imagery
publishDate 2020
url https://zenodo.org/record/4279795
https://doi.org/10.7291/D1J66X
genre Elephant Seals
genre_facet Elephant Seals
op_relation https://zenodo.org/communities/dryad
https://zenodo.org/record/4279795
https://doi.org/10.7291/D1J66X
oai:zenodo.org:4279795
op_rights info:eu-repo/semantics/openAccess
https://creativecommons.org/publicdomain/zero/1.0/legalcode
op_doi https://doi.org/10.7291/D1J66X
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