Species identification by conservation practitioners using online images: accuracy and agreement between experts

Austen, Gail E. and Bindemann, Markus and Griffiths, Richard A. and Roberts, David L. (2018) Species identification by conservation practitioners using online images: accuracy and agreement between experts. MS Excel file. Located at: N/A. https://doi.org/10.7717/peerj.4157. (doi:https://doi.org/10.7717/peerj.4157) (Full text available)

MS Excel (Dataset from Austen et al. (2018), Species identification by conservation practitioners using online images: accuracy and agreement between experts. PeerJ 6:e4157; DOI 10.7717/peerj.4157) - Supplemental Material
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Abstract

Emerging technologies have led to an increase in species observations being recorded via digital images. Such visual records are easily shared, and are often uploaded to online communities when help is required to identify or validate species. Although this is common practice, little is known about the accuracy of species identification from such images. Using online images of newts that are native and non-native to the UK, this study asked holders of great crested newt (Triturus cristatus) licences (issued by UK authorities to permit surveying for this species) to sort these images into groups, and to assign species names to those groups. All of these experts identified the native species, but agreement among these participants was low, with some being cautious in committing to definitive identifications. Individuals’ accuracy was also independent of both their experience and self-assessed ability. Furthermore, mean accuracy was not uniform across species (69–96%). These findings demonstrate the difficulty of accurate identification of newts from a single image, and that expert judgements are variable, even within the same knowledgeable community. We suggest that identification decisions should be made on multiple images and verified by more than one expert, which could improve the reliability of species data.

Item Type: Datasets / databases
Subjects: B Philosophy. Psychology. Religion > BF Psychology
Q Science > QH Natural history
Q Science > QH Natural history > QH541 Ecology
Q Science > QH Natural history > QH75 Conservation (Biology)
Q Science > QL Zoology
Divisions: Faculties > Social Sciences > School of Anthropology and Conservation
Faculties > Social Sciences > School of Anthropology and Conservation > Biodiversity Conservation Group
Faculties > Social Sciences > School of Anthropology and Conservation > Biodiversity Management Group
Faculties > Social Sciences > School of Anthropology and Conservation > DICE (Durrell Institute of Conservation and Ecology)
Faculties > Social Sciences > School of Psychology
Faculties > Social Sciences > School of Psychology > Applied Psychology
Depositing User: David Roberts
Date Deposited: 18 Jan 2018 15:58 UTC
Last Modified: 15 Feb 2019 15:36 UTC
Resource URI: https://kar.kent.ac.uk/id/eprint/65753 (The current URI for this page, for reference purposes)
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