| Literature DB >> 29255157 |
Seth T Sykora-Bodie1, Vanessa Bezy2, David W Johnston3, Everette Newton3, Kenneth J Lohmann2.
Abstract
Although sea turtles face significant pressure from human activities, some populations are recovering due to conservation programs, bans on the trade of turtle products, and reductions in bycatch. While these trends are encouraging, the status of many populations remains unknown and scientific monitoring is needed to inform conservation and management decisions. To address these gaps, this study presents methods for using unmanned aerial systems (UAS) to conduct population assessments. Using a fixed-wing UAS and a modified strip-transect method, we conducted aerial surveys along a three-kilometer track line at Ostional, Costa Rica during a mass-nesting event of olive ridley turtles (Lepidochelys olivacea). We visually assessed images collected during six transects for sea turtle presence, resulting in 682 certain detections. A cumulative total of 1091 certain and probable turtles were detected in the collected imagery. Using these data, we calculate estimates of sea turtle density (km-2) in nearshore waters. After adjusting for both availability and perception biases, we developed a low-end estimate of 1299 ± 458 and a high-end estimate of 2086 ± 803 turtles per km-2. This pilot study illustrates how UAS can be used to conduct robust, safe, and cost-effective population assessments of sea turtle populations in coastal marine ecosystems.Entities:
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Year: 2017 PMID: 29255157 PMCID: PMC5735099 DOI: 10.1038/s41598-017-17719-x
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1The Ostional National Wildlife Refuge in Costa Rica with the take-off point, transit path, and 3 km aerial transect shown in red. Map created in ArcGIS Desktop: Release 10.4.1, Environmental Systems Research Institute.
Figure 2A schematic of the eBee small unmanned aerial system with labels indicating sensors and major components. Figure created by David Johnston.
Figure 3An example of a near-infrared photo of olive ridley sea turtles obtained from the eBee fixed-wing UAS during a survey (90 m altitude, 2.5 cm resolution).
The low-end (“certain” counts) and high-end (including “possible” counts) density of sea turtles km−2 adjusted standardized to km−2.
| Turtles Detected | Adjusted Estimates | |||
|---|---|---|---|---|
| Low-end | High-end | Low-end | High-end | |
| Mean Density ± SD (turtles km−2) | 227 ± 80 | 365 ± 140 | 1299 ± 458 | 2086 ± 803 |
| 95% Confidence Level (CI) | 50.96 | 89.26 | 291.19 | 510.06 |
| Coefficient of Variation (Cv) | 0.35 | 0.38 | 0.35 | 0.38 |
Figure 4The availability-bias adjusted low-end (‘certain’) estimates of sea turtles during transect flights conducted at Ostional Beach in August 2015. Samples consist of the even or odd images collected during each flight as explained above under the Aircraft and Sensors sub-section of Methods.