Citation: | Luo Jinxuan,Tian Yichao,Zhang Qiang, et al. Estimation of aboveground biomass of mangrove forest using UAV-LiDAR[J]. Haiyang Xuebao,2023, 45(8):108–119 doi: 10.12284/hyxb2023088 |
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