首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Tree species classification and estimation of stem volume and DBH based on single tree extraction by exploiting airborne full-waveform LiDAR data
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Tree species classification and estimation of stem volume and DBH based on single tree extraction by exploiting airborne full-waveform LiDAR data

机译:利用机载全波形LiDAR数据基于单树提取的树种分类和​​茎量和DBH估计

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The paper highlights recent results of forest structure analysis at single tree level based on analyzing airborne full waveform LiDAR data. Single trees are automatically detected by a 3D segmentation technique applied directly to laser point clouds, which uses the normalized cut segmentation combined with a stem detection method. A subsequent classification identifies tree species using salient features that are defined on single 3D tree segments and utilize the additional information extracted from the reflected laser signal by the waveform decomposition. The stem volume and diameter at breast height (DBH) are estimated by a multiple linear regression analysis which uses tree shape parameters derived from the 3D model of the trees. Experiments were conducted in the Bavarian Forest National Park with full waveform LiDAR data. The data were captured with the Riegl LMS Q-560 system at a point density of 25points/m ~2 under leaf-off and leaf-on conditions. The analysis of waveform data in the tree structure shows that the intensity and pulse width discriminate stem points, crown points and ground points significantly. The unsupervised classification of deciduous and coniferous trees is in the best case 93%. If a supervised classification is applied the accuracy is slightly increased to 95%. Concerning stem volume estimation, in the case of coniferous trees the study shows a low RMSE of about 0.46m ~3 to 0.43m ~3 both for the watershed segmentation and the new normalized cut segmentation. In the case of deciduous trees RMSE has increased by 14% in leaf off condition and by 4% in leaf on condition for the normalized cut segmentation. A similar trend can be confirmed for DBH estimation as well, even demonstrating a larger benefit from 3D segmentation. The study results proved that the 3D segmentation approach is not only capable of detecting more small trees in the lower forest layer but also can allow to derive more promising features of single trees used for yielding better performance in species classification and estimation of forest structural parameters, especially for deciduous trees.
机译:本文基于对机载全波形LiDAR数据的分析,重点介绍了单棵树森林结构分析的最新结果。通过将3D分割技术直接应用到激光点云上,可以自动检测单棵树,该技术使用归一化割线分割与词根检测方法相结合。随后的分类使用在单个3D树段上定义的显着特征识别树种,并利用通过波形分解从反射激光信号中提取的其他信息。通过使用来自树木3D模型的树木形状参数的多元线性回归分析,可以估算出乳房体积和胸高处的直径(DBH)。实验是在巴伐利亚森林国家公园以全波形LiDAR数据进行的。在下叶和下叶条件下,使用Riegl LMS Q-560系统以25点/ m〜2的点密度捕获数据。对树形结构中的波形数据进行的分析表明,强度和脉冲宽度可明显区分出茎点,冠点和地面点。在最佳情况下,落叶树和针叶树的无监督分类为93%。如果应用监督分类,则准确性会略微提高到95%。关于茎的体积估计,在针叶树的情况下,研究表明,分水岭分割和新的归一化分割分割均具有约0.46m〜3至0.43m〜3的低RMSE。在落叶乔木的情况下,RMSE在脱叶条件下增加了14%,在叶片开裂条件下增加了4%,以进行标准化切割分割。 DBH估计也可以确认类似的趋势,甚至表明3D分割具有更大的优势。研究结果证明,3D分割方法不仅能够检测出较低森林层中的更多小树,而且还可以导出单棵树的更多有前途的特征,从而在物种分类和森林结构参数估计中表现出更好的性能,特别是对于落叶树。

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