Estimation of Chlorophyll-a Concentrations in Small Water Bodies: Comparison of Fused Gaofen-6 and Sentinel-2 Sensors
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Qian Shen | Yuting Zhou | Yue Yao | Wenting Xu | Fu Chen | Ru Wang | Jiarui Shi | Junsheng Li | Zuoyan Gao | Libing Wang | Yuting Zhou | Junsheng Li | Q. Shen | Libing Wang | Fuxiang Chen | Wenting Xu | Yue Yao | Jiarui Shi | Ru Wang | Zuoyan Gao
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