Using High‐Resolution Satellite Imagery and Deep Learning to Track Dynamic Seasonality in Small Water Bodies

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Date
2023-04Author
Mullen, Andrew L.
Watts, Jennifer D.
Rogers, Brendan M.
Carroll, Mark L.
Elder, Clayton D.
Noomah, Jonas
Williams, Zachary
Caraballo‐Vega, Jordan A.
Bredder, Allison
Rickenbaugh, Eliza
Levenson, Eric
Cooley, Sarah W.
Hung, Jacqueline K. Y.
Fiske, Greg
Potter, Stefano
Yang, Yili
Miller, Charles E.
Natali, Susan M.
Douglas, Thomas A.
Kyzivat, Ethan D.
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Small water bodies (i.e., ponds; <0.01 km2) play an important role in Earth System processes, including carbon cycling and emissions of methane. Detection and monitoring of ponds using satellite imagery has been extremely difficult and many water maps are biased toward lakes (>0.01 km2). We leverage high-resolution (3 m) optical satellite imagery from Planet Labs and deep learning methods to map seasonal changes in pond and lake areal extent across four regions in Alaska. Our water maps indicate that changes in open water extent over the snow-free season are especially pronounced in ponds. To investigate potential impacts of seasonal changes in pond area on carbon emissions, we provide a case study of open water methane emission budgets using the new water maps. Our approach has widespread applications for water resources, habitat and land cover change assessments, wildlife management, risk assessments, and other biogeochemical modeling efforts.
Description
Andrew L. Mullen et al, 2023, Using High‐Resolution Satellite Imagery and Deep Learning to Track Dynamic Seasonality in Small Water Bodies, Geophysical Research Letters, 50, Citation number, 10.1029/2022GL102327. To view the published open abstract, go to https://doi.org/10.1029/2022GL102327
Citation
Mullen, A. L., Watts, J. D., Rogers, B. M., Carroll, M. L., Elder, C. D., Noomah, J., et al. (2023). Using high-resolution satellite imagery and deep learning to track dynamic seasonality in small water bodies. Geophysical Research Letters, 50, e2022GL102327. https://doi.org/10.1029/2022GL102327