Estimating Soil Parameters From Hyperspectral Images: A benchmark dataset and the outcome of the HYPERVIEW challenge

Jakub Nalepa, Lukasz Tulczyjew,Bertrand Le Saux,Nicolas Longépé,Bogdan Ruszczak,Agata M. Wijata, Krzysztof Smykala, Michal Myller,Michal Kawulok,Ridvan Salih Kuzu, Frauke Albrecht, Caroline Arnold, Mohammad Alasawedah, Suzanne Angeli, Delphine Nobileau, Achille Ballabeni,Alessandro Lotti,Alfredo Locarini,Dario Modenini,Paolo Tortora, Michal Gumiela

IEEE Geoscience and Remote Sensing Magazine(2024)

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摘要
Enhancing agricultural methods through the utilization of Earth observation and artificial intelligence (AI) has emerged as a significant concern. The ability to quantify soil parameters on a large scale can play a pivotal role in optimizing the fertilization process. While techniques for noninvasive estimation of soil parameters from hyperspectral images (HSIs) exist, their validation typically occurs across different datasets and employs varying validation protocols. This diversity renders them inherently challenging (or even impossible) to compare objectively.
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