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RESEARCH PRODUCT
Estimating soil moisture content under grassland with hyperspectral data using radiative transfer modelling and machine learning
Veronika DöpperAlby Duarte RochaKatja BergerTobias GränzigJochem VerrelstBirgit KleinschmitMichael Förstersubject
Global and Planetary ChangeManagement Monitoring Policy and LawComputers in Earth SciencesEarth-Surface Processesdescription
The monitoring of soil moisture content (SMC) at very high spatial resolution (10m) using unmanned aerial systems (UAS) is of high interest for precision agriculture and the validation of large scale SMC products. Data-driven approaches are the most common method to retrieve SMC with UAS-borne data at water limited sites over non-disturbed agricultural crops. A major disadvantage of data-driven algorithms is the limited transferability in space and time and the need of a high number of ground reference samples. Physically-based approaches are less dependent on the amount of samples and are transferable in space and time. This study explores the potential of (1) a hybrid method targeting the soil brightness factor of the PROSAIL model using a variational heteroscedastic Gaussian Processes regression (VHGPR) algorithm, and (2) a data-driven method employing VHGPR for the retrieval of SMC over three grassland sites based on UAS-borne VIS-NIR (399-1001 nm) hyperspectral data. The sites were managed by mowing (Fendt), grazing (Grosses Bruch) and irrigation (Marquardt). With these distinct local pre-conditions we aimed to identify factors that favor and limit the retrieval of SMC. The hybrid approach presented encouraging results in Marquardt (RMSE = 1.5 Vol_%, R
year | journal | country | edition | language |
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2023-06-01 | International Journal of Applied Earth Observation and Geoinformation |