College of Resource Environment and Tourism, Capital Normal University, Beijing, China.
Forest Cultivation Department, Liaoning Provincial Academy of Forestry Sciences, Liaoning, China.
PLoS One. 2024 Oct 21;19(10):e0311642. doi: 10.1371/journal.pone.0311642. eCollection 2024.
Precise estimation of forest above ground biomass (AGB) is essential for assessing its ecological functions and determining forest carbon stocks. It is difficult to directly obtain diameter at breast height (DBH) based on remote sensing imagery. Therefore, it is crucial to accurately estimate the AGB with features extracted directly from RS. This paper demonstrates the feasibility of estimating AGB from crown radius (R) and tree height (H) features extracted from multi-source RS data. Accurate information on tree height (H), crown radius (R), and diameter at breast height (DBH) can be obtained through point clouds generated by airborne laser scanning (ALS) and terrestrial laser scanning (TLS), respectively. Nine allometric growth equations were used to fit coniferous forests (Larix principis-rupprechtii) and broadleaf forests (Fraxinus chinensis and Sophora japonica). The fitting performance of models constructed using only "H" or "R" was compared with that of models constructed using both combined. The results showed that the quadratic polynomial model constructed with "H+R" fitted the AGB estimation better in each vegetation type, especially in the scenario of mixed tall and short coniferous forests, in which the R2 and RMSE were 0.9282 and 25.30 kg (rRMSE 17.31%), respectively. Therefore, using high-resolution data to extract crown radius and tree height can achieve high-precision, global-scale estimation of forest above ground biomass.
精确估计森林地上生物量(AGB)对于评估其生态功能和确定森林碳储量至关重要。基于遥感图像直接获取胸径(DBH)是困难的。因此,从 RS 直接提取特征来准确估计 AGB 是非常重要的。本文展示了从多源 RS 数据中提取的冠半径(R)和树高(H)特征来估计 AGB 的可行性。机载激光扫描(ALS)和地面激光扫描(TLS)分别生成的点云可提供准确的树木高度(H)、冠半径(R)和胸径(DBH)信息。使用九种对数生长方程拟合针叶林(落叶松)和阔叶林(刺槐和槐树)。比较了仅使用“H”或“R”构建模型的拟合性能与同时使用两者构建模型的拟合性能。结果表明,在每种植被类型中,使用“H+R”构建的二次多项式模型在估计 AGB 方面表现更好,尤其是在高大和矮小针叶林混合的情况下,R2 和 RMSE 分别为 0.9282 和 25.30 kg(rRMSE 为 17.31%)。因此,使用高分辨率数据提取冠半径和树高可以实现高精度、全球范围的森林地上生物量估计。