Digital mapping of soil organic carbon density using newly developed bare soil spectral indices and deep neural network
Author:
Liu QianORCID,
He Li,
Guo Long,
Wang Mengdi,
Deng Dongping,
Lv Pin,
Wang Ran,
Jia Zhongfu,
Hu Zhongwen,
Wu Guofeng,
Shi Tiezhu
Subject
Earth-Surface Processes
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