Remote sensing of the terrestrial carbon cycle: A review of advances over 50 years
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J. Hicke | A. Huete | L. Guanter | Xiaoyang Zhang | Y. Pang | Li Zhang | F. Chevallier | Guoqing Sun | Jingfeng Xiao | W. Yuan | K. Ichii | A. F. Rahman | C. Gomez | W. Ni | Abdullah F. Rahman | G. Sun | J. Xiao | A. Rahman
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