Qin Haiming, Wang Cheng, Xi Xiaohuan, Tian Jianlin, Zhou Guoqing
Opt Express. 2017 Aug 7;25(16):A851-A869. doi: 10.1364/OE.25.00A851.
Forest aboveground biomass (AGB) is critical for assessing forest productivity and evaluating carbon sequestration rates. Discrete-return LiDAR has been widely used to estimate forest AGB, however, fewer studies have estimated the coniferous forest AGB using airborne small-footprint full-waveform LiDAR data. The objective of this study was to extract a suite of newly proposed metrics from airborne small-footprint full-waveform LiDAR data and to evaluate the ability of these metrics in estimating coniferous forest AGB. To achieve this goal, each waveform was first preprocessed, including de-noising, smoothing, and normalization. Next, all the waveforms within each plot were aggregated into a large pseudo waveform and the return energy profile was generated. Then, the foliage profile was retrieved from the return energy profile based on the Geometric Optical and Radiative Transfer (GORT) model. Finally, a series of new return energy profile metrics and foliage profile metrics were extracted to estimate forest AGB. Simple linear regression was conducted to assess the correlation between each LiDAR metric and forest AGB. Stepwise multiple regression analysis was then carried out to select important prediction metrics and establish the optimal forest AGB estimation model. Results indicated that both return energy profile and foliage profile based height-related metrics were strongly correlated to forest AGB. The energy weighted canopy height (H) (R = 0.88) and foliage area weighted height (H) (R = 0.89) all had the highest correlation coefficients with forest AGB in return energy profile metrics and foliage profile metrics respectively. Energy height percentiles and foliage height percentiles also had the ability to explain AGB variation. The energy-related metrics, foliage area-related metrics, and bounding volume-related metrics derived from the return energy profile and foliage profile were not all sensitive to forest AGB. This study also concluded that combining return energy profile metrics and foliage profile metrics could improve the accuracy of forest AGB estimation, and the optimal model contained the metrics of H, H, and Volume, which is the product of the maximum canopy return energy profile amplitude (maxCE) and the maximum height of return energy profile (maxH).
森林地上生物量(AGB)对于评估森林生产力和估算碳固存率至关重要。离散回波激光雷达已被广泛用于估算森林AGB,然而,利用机载小光斑全波形激光雷达数据估算针叶林AGB的研究较少。本研究的目的是从机载小光斑全波形激光雷达数据中提取一组新提出的指标,并评估这些指标估算针叶林AGB的能力。为实现这一目标,首先对每个波形进行预处理,包括去噪、平滑和归一化。接下来,将每个样地内的所有波形聚合为一个大的伪波形,并生成回波能量剖面。然后,基于几何光学和辐射传输(GORT)模型从回波能量剖面中检索叶面积剖面。最后,提取一系列新的回波能量剖面指标和叶面积剖面指标来估算森林AGB。进行简单线性回归以评估每个激光雷达指标与森林AGB之间的相关性。然后进行逐步多元回归分析,以选择重要的预测指标并建立最优的森林AGB估算模型。结果表明,基于回波能量剖面和叶面积剖面的与高度相关的指标均与森林AGB高度相关。在回波能量剖面指标和叶面积剖面指标中,能量加权冠层高度(H)(R = 0.88)和叶面积加权高度(H)(R = 0.89)分别与森林AGB的相关系数最高。能量高度百分位数和叶面积高度百分位数也能够解释AGB的变化。从回波能量剖面和叶面积剖面导出的与能量相关指标、与叶面积相关指标以及与包围体积相关指标并非都对森林AGB敏感。本研究还得出结论,结合回波能量剖面指标和叶面积剖面指标可以提高森林AGB估算的准确性,最优模型包含H、H和体积(Volume)指标,体积是最大冠层回波能量剖面振幅(maxCE)与回波能量剖面最大高度(maxH)的乘积