Back to Search Start Over

Camera settings and biome influence the accuracy of citizen science approaches to camera trap image classification

Authors :
Nicole Egna
David O'Connor
Jenna Stacy‐Dawes
Mathias W. Tobler
Nicholas Pilfold
Kristin Neilson
Brooke Simmons
Elizabeth Oneita Davis
Mark Bowler
Julian Fennessy
Jenny Anne Glikman
Lexson Larpei
Jesus Lekalgitele
Ruth Lekupanai
Johnson Lekushan
Lekuran Lemingani
Joseph Lemirgishan
Daniel Lenaipa
Jonathan Lenyakopiro
Ranis Lenalakiti Lesipiti
Masenge Lororua
Arthur Muneza
Sebastian Rabhayo
Symon Masiaine Ole Ranah
Kirstie Ruppert
Megan Owen
Source :
Ecology and Evolution, Vol 10, Iss 21, Pp 11954-11965 (2020)
Publication Year :
2020
Publisher :
Wiley, 2020.

Abstract

Abstract Scientists are increasingly using volunteer efforts of citizen scientists to classify images captured by motion‐activated trail cameras. The rising popularity of citizen science reflects its potential to engage the public in conservation science and accelerate processing of the large volume of images generated by trail cameras. While image classification accuracy by citizen scientists can vary across species, the influence of other factors on accuracy is poorly understood. Inaccuracy diminishes the value of citizen science derived data and prompts the need for specific best‐practice protocols to decrease error. We compare the accuracy between three programs that use crowdsourced citizen scientists to process images online: Snapshot Serengeti, Wildwatch Kenya, and AmazonCam Tambopata. We hypothesized that habitat type and camera settings would influence accuracy. To evaluate these factors, each photograph was circulated to multiple volunteers. All volunteer classifications were aggregated to a single best answer for each photograph using a plurality algorithm. Subsequently, a subset of these images underwent expert review and were compared to the citizen scientist results. Classification errors were categorized by the nature of the error (e.g., false species or false empty), and reason for the false classification (e.g., misidentification). Our results show that Snapshot Serengeti had the highest accuracy (97.9%), followed by AmazonCam Tambopata (93.5%), then Wildwatch Kenya (83.4%). Error type was influenced by habitat, with false empty images more prevalent in open‐grassy habitat (27%) compared to woodlands (10%). For medium to large animal surveys across all habitat types, our results suggest that to significantly improve accuracy in crowdsourced projects, researchers should use a trail camera set up protocol with a burst of three consecutive photographs, a short field of view, and determine camera sensitivity settings based on in situ testing. Accuracy level comparisons such as this study can improve reliability of future citizen science projects, and subsequently encourage the increased use of such data.

Details

Language :
English
ISSN :
20457758
Volume :
10
Issue :
21
Database :
Directory of Open Access Journals
Journal :
Ecology and Evolution
Publication Type :
Academic Journal
Accession number :
edsdoj.757cea0b81741aa92b735fc35b6423d
Document Type :
article
Full Text :
https://doi.org/10.1002/ece3.6722