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Estimation of forest structural variables using small-footprint full-waveform LiDAR in a subtropical forest, China

机译:利用小足迹全波形LiDAR估算亚热带森林的森林结构变量

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Quantification of forest structure is critical for making management decisions and improving our understanding of forest ecosystem functions. This research investigates the estimation of forest structural variables from small-footprint full-waveform (FW) light detection and ranging (LiDAR) data. This study was undertaken in the mixed subtropical Yushan forest dominated by Masson pine (Pinus massoniana Lamb.) and Sawtooth oak (Quercus acutissima Carruth.), in southeast China. Ground truth data were collected across 68 plots. Overall, the results indicated that FW metrics had a good performance for predicting typical forest structural indices (i.e. basal area, Lorey's height and volume). The “All metrics-included” models showed significantly improved performance for predicting forest structural variables when compared to “Height distribution-related” models, confirming that the additional waveform metrics (i.e. Outer-canopy and Pulse-attribute metrics) were important when predicting structural parameters of subtropical forest.
机译:森林结构的量化对于制定管理决策和增进我们对森林生态系统功能的理解至关重要。这项研究调查了从小足迹全波形(FW)光检测和测距(LiDAR)数据估算森林结构变量的可能性。这项研究是在中国东南部的以马森松(Pinus massoniana Lamb。)和锯齿栎(Quercus acutissima Carruth。)为主的亚热带混热带雨山森林中进行的。在68个样地中收集了地面真相数据。总体而言,结果表明FW指标在预测典型的森林结构指标(即基础面积,Lorey的高度和体积)方面表现良好。与“与高度分布相关”的模型相比,“包括所有度量”的模型在预测森林结构变量方面表现出显着提高的性能,这证实了在预测结构时,其他波形度量(即外冠层和脉动属性)非常重要亚热带森林的参数。

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