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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Structure metrics to generalize biomass estimation from lidar across forest types from different continents
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Structure metrics to generalize biomass estimation from lidar across forest types from different continents

机译:结构指标概括不同大陆森林类型的激光雷达的生物量估计

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摘要

Forest aboveground biomass is a key variable in remote sensing based forest monitoring. Active sensor systems, such as lidar, can generate detailed canopy height products. Relationships between canopy height and biomass are commonly established via regression analysis using information from ground-truth plots. In this way, many site-specific height-biomass relationships have been proposed in the literature and applied for mapping in regional contexts. However, such relationships are only valid within the specific forest type for which they were calibrated. A generalized relationship would facilitate biomass estimation across forest types and regions. In this study, a combination of lidar-derived and ancillary structural descriptors is proposed as an approach for generalization between forest types. Each descriptor is supposed to quantify a different aspect of forest structure, i.e., mean canopy height, maximum canopy height, maximum stand density, vertical heterogeneity and wood density. Airborne discrete return lidar data covering 194 ha of forest inventory plots from five different sites including temperate and tropical forests from Africa, Europe, North, Central and South America was used. Biomass predictions using the best general model (nRMSE = 12.4%, R-2 = 0.74) were found to be almost as accurate as predictions using five site-specific models (nRMSE = 11.6%, R-2 = 0.78). The results further allow interpretation about the importance of the employed structure descriptors in the biomass estimation and the mechanisms behind the relationships. Understanding the relationship between canopy structure and aboveground biomass and being able to generalize it across forest types are important steps towards consistent large scale biomass mapping and monitoring using airborne and potentially also spaceborne platforms.
机译:地上生物量的森林是基于遥感的森林监测的关键变量。活性传感器系统(如LIDAR)可以产生详细的冠层高度产品。通过从地面图中的信息,通常通过回归分析建立冠层高度和生物量之间的关系。以这种方式,在文献中提出了许多特异性特异性高度 - 生物量关系,并施加用于在区域背景下映射。然而,这种关系仅在他们校准的特定林类型内有效。广义关系将促进森林类型和地区的生物质估计。在该研究中,提出了激光雷达推导和辅助结构描述符的组合作为森林类型之间的泛化方法。每个描述符应该量化森林结构的不同方面,即平均冠层高度,最大冠层高度,最大立式密度,垂直异质性和木质密度。使用来自非洲,欧洲,北,中美洲和南美洲的温带和热带森林,包括来自五种不同地点的194公顷的森林库存图,覆盖了194公顷的森林库存图。使用最佳常规模型(NRMSE = 12.4%,R-2 = 0.74)的生物质预测几乎与使用五个站点特定模型的预测一样准确(NRMSE = 11.6%,R-2 = 0.78)。结果进一步允许解释关于所采用的结构描述符在生物量估计和关系背后的机制的重要性。了解冠层结构与地上生物量之间的关系,能够穿越森林类型的关系是朝向一致的大规模生物量映射和使用空中的监测的重要步骤,并且可能是太空载流平台。

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