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Assessing the validity of crowdsourced wildlife observations for conservation using public participatory mapping methods.

Authors :
Brown, Greg
McAlpine, Clive
Rhodes, Jonathan
Lunney, Daniel
Goldingay, Ross
Fielding, Kelly
Hetherington, Scott
Hopkins, Marama
Manning, Clare
Wood, Mathew
Brace, Angie
Vass, Lorraine
Source :
Biological Conservation. Nov2018, Vol. 227, p141-151. 11p.
Publication Year :
2018

Abstract

Abstract Public participatory mapping is a method of crowdsourcing where the lay public can contribute spatial information for a range of applications including conservation planning. When used to collect wildlife observation data, participatory mapping becomes a type of "geographic citizen science" that involves collaboration with members of the public. While the potential of crowdsourcing to assist in wildlife conservation appears to be large, the quality and validity of the observational data collected remain a key concern. In this study, we examined the quality and validity of spatial data collected in a public participatory mapping project implemented in northern New South Wales (Australia) in 2018 where the public was asked to identify and map the location and frequency of koala (Phascolarctos cinereus) sightings using an internet mapping application. The iconic koala is a nationally-listed threatened species and has wide public recognition, making it an ideal test of our approach to examining the value of citizen science for wildlife. We assessed the validity of koala observation data from two perspectives of validity-as-accuracy (positional accuracy and data completeness) and validity-as-credibility (characteristics of spatial data contributors). To assess validity-as-accuracy , we analysed the distribution of citizen observations of koala sightings compared to an expert-derived probability distribution of koalas (likelihood model). To assess validity-as-credibility , we analysed the survey data to determine which participant characteristics increased the credibility of observational data. We found significant spatial association between crowdsourced koala observations and the likelihood model to validate koala locations, but there was under-reporting in more rural, remote areas. Significant variables contributing to accuracy in koala observations included participant knowledge of koalas, age, length of residence, and formal education. We also compared the crowdsourced results to a field-based citizen science koala observation project implemented in the same region and found crowdsourced participatory mapping provided comparable, if not superior results. Crowdsourced koala observations can augment field-based koala research by covering large geographic areas while engaging a broader public in conservation efforts. However, effective geographic citizen science projects require a significant commitment of resources, including the creation of community partnerships, to obtain high quality spatial data. Highlights • Evaluates validity of crowdsourced observation data for wildlife conservation (koala) • Compared accuracy of citizen observations against authoritative koala distribution model • Analysed citizen characteristics as predictors of koala observation accuracy • Found significant spatial association between citizen observations and koala model • Participant knowledge of koalas, age, length of residence, and formal education were related to observation accuracy [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00063207
Volume :
227
Database :
Academic Search Index
Journal :
Biological Conservation
Publication Type :
Academic Journal
Accession number :
132320261
Full Text :
https://doi.org/10.1016/j.biocon.2018.09.016