Advancing Forest Inventory in Tropical Rainforests: A Multi-Source LiDAR Approach for Accurate 3D Tree Modeling and Volume Estimation
2025
Zongzhu Chen | Ziwei Lin | Tiezhu Shi | Dongping Deng | Yiqing Chen | Xiaoyan Pan | Xiaohua Chen | Tingtian Wu | Jinrui Lei | Yuanling Li
This study proposes an Automatic Branch Modeling (ABM) framework that combines AdTree and AdQSM algorithms to reconstruct individual tree models and estimate timber volume from fused Hand-held Laser Scanners (HLS) and Unmanned Aerial Vehicle Laser Scanners (UAV-LS) point cloud data. The research focuses on two 50 ×: 50 m primary tropical rainforest plots in Hainan Island, China, characterized by dense and vertically stratified vegetation. Key steps include multi-source point cloud registration and noise removal, individual tree segmentation using the Comparative Shortest Path (CSP) algorithm, extraction of diameter at breast height (DBH) and tree height, and 3D reconstruction and volume estimation via cylindrical fitting and convex polyhedron decomposition. Results demonstrate high accuracy in parameter extraction, with DBH estimation achieving R2 = 0.89&ndash:0.90, RMSE = 2.93&ndash:3.95 cm and RMSE% = 13.95&ndash:14.75%, while tree height estimation yielded R2 = 0.89&ndash:0.94, RMSE = 1.26&ndash:1.81 m and RMSE% = 9.41&ndash:13.2%. Timber volume estimates showed strong agreement with binary volume models (R2 = 0.90&ndash:0.94, RMSE = 0.10&ndash:0.18 m3, RMSE% = 32.33&ndash:34.65%), validated by concordance correlation coefficients (CCC) of 0.95&ndash:0.97. The fusion of HLS (ground-level trunk details) and UAV-LS (canopy structure) data significantly improved structural completeness, overcoming occlusion challenges in dense forests. This study highlights the efficacy of multi-source LiDAR fusion and 3D modeling for precise forest inventory in complex ecosystems. The ABM framework provides a scalable, non-destructive alternative to traditional methods, supporting carbon stock assessment and sustainable forest management in tropical rainforests. Future work should refine individual tree segmentation and wood-leaf separation to further enhance accuracy in heterogeneous environments.
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