FAO AGRIS - International System for Agricultural Science and Technology

Using soil library hyperspectral reflectance and machine learning to predict soil organic carbon: Assessing potential of airborne and spaceborne optical soil sensing

2022

Wang, Sheng | Guan, Kaiyu | Zhang, Chenhui | Lee, DoKyoung | Margenot, Andrew J. | Ge, Yufeng | Peng, Jian | Zhou, Wang | Zhou, Qu | Huang, Yizhi


Bibliographic information
Volume 271 Pagination 112914 ISSN 0034-4257
Publisher
Malden, USA : Blackwell Publishing Inc
Other Subjects
Sbg; Radiative transfer modeling; Hyperspectral reflectance; Cost effectiveness; Long short-term memory; Radiative transfer
Language
English
Type
Journal Article; Text

2024-02-27
MODS
Data Provider
Lookup at Google Scholar
If you notice any incorrect information relating to this record, please contact us at [email protected]