Inversion study of soil organic matter content based on reflectance spectroscopy and the improved hybrid extreme learning machine
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Nisha Bao | Jian Li | Yachun Mao | Yanhua Fu | Zhen-Nan Li | Dong Xiao | Jie Huang
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