FAO AGRIS - Système international des sciences et technologies agricoles

Evaluating Sentinel-1A datasets for rice leaf area index estimation based on machine learning regression models

2022

Mansaray, Lamin R. | Wang, Fumin | Kanu, Adam S. | Yang, Lingbo


Informations bibliographiques
Editeur
Elsevier Science Ltd.
D'autres materias
Green lai; Sentinel-1a datasets; Paddy rice
Langue
anglais
Note
This study was funded by the National Natural Science Foundation of China (41871328), and the National Key R&D Programme of China under the thematic areas “Monitoring methods of paddy rice agro-meteorological disasters in the middle and lower reaches of the Yangtze River (Grant No. 2017YFD0300402-3)” and “Monitoring and prediction methods of paddy rice and winter wheat in the middle and lower reaches of the Yangtze River (Grant No. 2016YFD0300603-5)”. Also, our gratitude goes to all students of the Key Laboratory of Agricultural Remote Sensing and Information Systems at Zhejiang University for their assistance during field work. Furthermore, this paper benefited from the comments and advices of peer reviewers.
Type
Journal Article; Text

2024-02-29
MODS
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