Wang Yueting, Jia Xiang, Chai Guoqi, Lei Lingting, Zhang Xiaoli
Beijing Key Laboratory of Precision Forestry, College of Forestry, Beijing Forestry University, Beijing, 100083, China.
Key Laboratory of Forest Cultivation and Protection, Ministry of Education, Beijing Forestry University, Beijing, 100083, China.
Plant Methods. 2023 Jun 30;19(1):65. doi: 10.1186/s13007-023-01043-9.
Forest aboveground biomass (AGB) is not only the basis for estimating forest carbon storage, but also an important parameter for evaluating forest carbon cycle contribution and forest ecological function. Data saturation and fewer field plots limit the accuracy of AGB estimation. In response to these questions, we constructed a point-line-polygon framework for regional coniferous forests AGB mapping using field survey data, UAV-LiDAR strip data, Sentinel-1 and Sentinel-2 imageries in this study. Under this framework, we explored the feasibility of acquiring the LiDAR sampling plots using the LiDAR sampling strategy consistent with the field survey, and analyzed the potentials of multi-scale wavelet transform (WT) textures and tree species stratification for improving AGB estimation accuracy of coniferous forests in North China.
The results showed that UAV-LiDAR strip data of high density point clouds could be used as a sampling tool to achieve sample amplification. Experimental comparison results showed that the Sentinel-based AGB estimation models incorporating the multi-scale WT textures and SAR data performed better, and the model based on coniferous forests tree species significantly improved the performance of AGB estimation. Additionally, the accuracy comparison using different validation sets indicated that the proposed LiDAR sampling strategy under the point-line-polygon framework was suitable for estimating coniferous forests AGB on a large area. The highest accuracy of AGB estimation of larch, Chinese pine and all coniferous forests was 74.55%, 78.96%, and 73.42%, respectively.
The proposed approach can successfully alleviate the data signal saturation issue and accurately produce a large-scale wall-to-wall high-resolution AGB map by integrating optical and SAR data with a relative small number of field plots.
森林地上生物量(AGB)不仅是估算森林碳储量的基础,也是评估森林碳循环贡献和森林生态功能的重要参数。数据饱和以及野外样地较少限制了AGB估算的准确性。针对这些问题,本研究利用实地调查数据、无人机激光雷达带状数据、哨兵 - 1和哨兵 - 2影像,构建了一个用于区域针叶林AGB制图的点 - 线 - 多边形框架。在此框架下,我们探索了使用与实地调查一致的激光雷达采样策略获取激光雷达采样样地的可行性,并分析了多尺度小波变换(WT)纹理和树种分层对提高中国北方针叶林AGB估算精度的潜力。
结果表明,高密度点云的无人机激光雷达带状数据可作为采样工具实现样本放大。实验比较结果表明,纳入多尺度WT纹理和SAR数据的基于哨兵的AGB估算模型表现更好,基于针叶林树种的模型显著提高了AGB估算性能。此外,使用不同验证集的精度比较表明,点 - 线 - 多边形框架下提出的激光雷达采样策略适用于大面积针叶林AGB估算。落叶松、油松和所有针叶林AGB估算的最高精度分别为74.55%、78.96%和73.42%。
所提出的方法可以成功缓解数据信号饱和问题,并通过将光学和SAR数据与相对较少的野外样地相结合,准确生成大面积无缝的高分辨率AGB地图。