期刊论文详细信息
Remote Sensing in Ecology and Conservation
UAV thermal image detects genetic trait differences among populations and genotypes of Fremont cottonwood (Populus fremontii, Salicaceae)
Hillary Cooper1  Gerard Allan1  Catherine Gehring1  Davis Blasini2  Dan Koepke2  Kevin Hultine2  Kevin Grady3  Temuulen Sankey4  Nathaniel Bransky4 
[1] Department of Biological Sciences and Merriam‐Powell Center for Environmental Research Northern Arizona University Flagstaff Arizona86011USA;Department of Research, Conservation and Collections Desert Botanical Garden Phoenix Arizona85008USA;School of Forestry Northern Arizona University Flagstaff Arizona86011USA;School of Informatics, Computing, and Cyber Systems Northern Arizona University Flagstaff Arizona86011USA;
关键词: Genetics;    high‐throughput phenotyping;    intraspecific detection;    phenotyping;    tree canopy temperatures;    UAV thermal images;   
DOI  :  10.1002/rse2.185
来源: DOAJ
【 摘 要 】

Abstract Many plants are becoming increasingly maladapted to their environments due to changing climate and environmental conditions. It is, therefore, important to quantitatively evaluate what species, populations, and genotypes will survive in projected climate change scenarios and the implications this can have for associated biodiversity. We evaluate unmanned aerial vehicle (UAV)‐based high‐resolution thermal images for differentiating populations and genotypes in Fremont cottonwood (Populus fremontii S. Wats.), a foundation tree species that supports high levels of biodiversity and associated processes in riparian ecosystems. Specifically, we compare UAV thermal image‐derived tree canopy temperatures among 16 different populations and 10 replicated genotypes within two of the populations of Fremont cottonwood trees sourced from a broad environmental gradient and growing together in a common garden in central Arizona, USA. The UAV image‐derived tree canopy temperatures ranged 30°C–42°C resulting in a high overall accuracy of 85% in tree canopy classification. Our results indicate that the UAV thermal image‐derived mean tree canopy temperatures were significantly different among most of the 16 populations (P < 0.001). Within a warm‐adapted Sonoran Desert population and a cooler High Plateau population, the UAV thermal image‐derived tree canopy temperatures were also significantly different among many genotypes (P < 0.001). Furthermore, the UAV thermal image‐derived tree canopy temperatures were significantly correlated with tree canopy cover (R2 = 0.73; P‐value < 0.001) and varied with locations across the garden. Our findings have important implications for characterizing intraspecific genetic diversity in long‐lived forest trees like Fremont cottonwood and inferences for understanding ecosystem processes and guiding restoration efforts. We suggest that UAV thermal images can be used to rapidly scale laboratory‐ and plot‐based genetics research up to the landscape level. Ecological restoration efforts informed by projected climate scenarios can benefit from the UAV‐based genetics findings to identify future climate‐adapted populations and genotypes for potential propagation sources.

【 授权许可】

Unknown   

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