Measuring River Wetted Width From Remotely Sensed Imagery at the Subpixel Scale With a Deep Convolutional Neural Network
Feng Ling(Chinese Academy of Sciences), Yun Du(Chinese Academy of Sciences), Yihang Zhang(Chinese Academy of Sciences), Cheng Shang(Chinese Academy of Sciences), Doreen S. Boyd(University of Nottingham), Giles M. Foody(University of Southampton), Lingfei Shi(Chinese Academy of Sciences), Xinyan Li(University of Nottingham), Xiaodong Li(Chinese Academy of Sciences), Lihui Wang(Chinese Academy of Sciences), Yong Ge(Chinese Academy of Sciences)
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