Estimating Maize Above-Ground Biomass Using 3D Point Clouds of Multi-Source Unmanned Aerial Vehicle Data at Multi-Spatial Scales
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Jing Li | Yaohuan Huang | Bin Yang | Zhigang Sun | Junqiang Zhang | Xiaohan Liao | Wanxue Zhu | Jinbang Peng | Bin Yang | Zhigang Sun | Yaohuan Huang | Junqiang Zhang | X. Liao | Jing Li | Wanxue Zhu | Jinbang Peng
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