Data from: Drones count wildlife more accurately and precisely than humans
Data files
Jan 16, 2019 version files 53.26 MB
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Colony_imagery.zip
53.19 MB
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MASTER_AllCountData.csv
50.81 KB
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MASTER_analysisScript_v1.4.R
18.37 KB
Abstract
Knowing how many individuals are in a wildlife population allows informed management decisions to be made. Ecologists are increasingly using technologies, such as remotely piloted aircraft (RPA; commonly known as “drones,” unmanned aerial systems or unmanned aerial vehicles), for wildlife monitoring applications. Although RPA are widely touted as a cost-effective way to collect high-quality wildlife population data, the validity of these claims is unclear.
Using life-sized, replica seabird colonies containing a known number of fake birds, we assessed the accuracy of RPA-facilitated wildlife population monitoring compared to the traditional ground-based counting method. The task for both approaches was to count the number of fake birds in each of 10 replica seabird colonies.
We show that RPA-derived data are, on average, between 43% and 96% more accurate than the traditional ground-based data collection method. We also demonstrate that counts from this remotely sensed imagery can be semi-automated with a high degree of accuracy.
The increased accuracy and increased precision of RPA-derived wildlife monitoring data provides greater statistical power to detect fine-scale population fluctuations allowing for more informed and proactive ecological management.
- Hodgson, Jarrod C. et al. (2018), Drones count wildlife more accurately and precisely than humans, Methods in Ecology and Evolution, Article-journal, https://doi.org/10.1111/2041-210x.12974
- Hodgson, Jarrod; Pham, Trung; Koh, Lian Pin; Reid, Ian (2018), Drones count wildlife more accurately and precisely than humans: semi-automated aerial image counting approach - archived source code and dataset, , Article, https://doi.org/10.4225/55/5a57f969d82e0
