4.7 Article

High-resolution CubeSat imagery and machine learning for detailed snow-covered area

期刊

REMOTE SENSING OF ENVIRONMENT
卷 258, 期 -, 页码 -

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2021.112399

关键词

Planet; PlanetScope; Machine learning; Seasonal snow; Snow covered area; Airborne lidar; Supervised classification

资金

  1. NSF IGERT grant [DGE-1258485]
  2. NSF Graduate Research Fellowship [DGE-1762114]
  3. NASA THP award [80NSSC18K1405]
  4. ESIP Incubator award
  5. NSF EAR Award [EAR-1947875]
  6. NASA Commercial Smallsat Data Acqusition Program 2018 Pilot Study

向作者/读者索取更多资源

The article discusses the development of a method using convolutional neural networks to identify snow-covered areas, achieving high accuracy in different climatic regions with sub-meter resolution remote sensing data. The study shows great potential for observing snow-covered areas at high spatial and temporal resolutions, despite limitations in radiometric bandwidth and band placement, and also evaluates the performance of the data in forested regions, suggesting further avenues for research.
Snow cover affects a diverse array of physical, ecological, and societal systems. As such, the development of optical remote sensing techniques to measure snow-covered area (SCA) has enabled progress in a wide variety of research domains. However, in many cases, the spatial and temporal resolutions of currently available remotely sensed SCA products are insufficient to capture SCA evolution at spatial and temporal resolutions relevant to the study of fine-scale spatially heterogeneous phenomena. We developed a convolutional neural network-based method to identify snow covered area using the similar to 3 m, 4-band PlanetScope optical satellite image dataset with similar to daily, near-global coverage. By comparing our model performance to snow extent derived from high-resolution airborne lidar differential depth measurements and satellite platforms in two North American sites (Sierra Nevada, CA, USA and Rocky Mountains, CO, USA), we show that these emerging image archives have great potential to accurately observe snow-covered area at high spatial and temporal resolutions despite limited radiometric bandwidth and band placement. We achieve average snow classification F-Scores of 0.73 in our training basin and 0.67 in a climatically-distinct out-of-sample basin, suggesting opportunities for model transferability. We also evaluate the performance of these data in forested regions, suggesting avenues for further research. The unparalleled spatial and temporal coverage of CubeSat imagery offers an excellent opportunity for satellite remote sensing of snow, with real implications for ecological and water resource applications.

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