首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Performance of terrestrial laser scanning to characterize managed Scots pine (Pinus sylvestris L.) stands is dependent on forest structural variation
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Performance of terrestrial laser scanning to characterize managed Scots pine (Pinus sylvestris L.) stands is dependent on forest structural variation

机译:陆地激光扫描的性能表征管理苏格兰松树(Pinus Sylvestris L.)代表依赖于森林结构变异

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There is a limited understanding of how forest structure affects the performance of methods based on terrestrial laser scanning (TLS) in characterizing trees and forest environments. We aim to improve this understanding by studying how different forest management activities that shape tree size distributions affect the TLS-based forest characterization accuracy in managed Scots pine (Pinus sylvestris L.) stands. For that purpose, we investigated 27 sample plots consisting of three different thinning types, two thinning intensities as well as control plots without any treatments. Multi-scan TLS point clouds were collected from the sample plots, and a point cloud processing algorithm was used to segment individual trees and classify the segmented point clouds into stem and crown points. The classified point clouds were further used to estimate tree and forest structural attributes. With the TLS-based forest characterization, almost 100% completeness in tree detection, 0.7 cm (3.4%) root-mean-square-error (RMSE) in diameter-at-breast-height measurements, 0.9-1.4 m (4.5-7.3%) RMSE in tree height measurements, and 6% relative RMSE in the estimates of forest structural attributes (i.e. mean basal area, number of trees per hectare, mean volume, basal area-weighted mean diameter and height) were obtained depending on the applied thinning type. Thinnings decreased variation in horizontal and vertical forest structure, which especially favoured the TLS-based tree detection and tree height measurements, enabling reliable estimates for forest structural attributes. A considerably lower performance was recorded for the control plots. Thinning intensity was noticed to affect more on the accuracy of TLS-based forest characterization than thinning type. The number of trees per hectare and the proportion of suppressed trees were recognized as the main factors affecting the accuracy of TLS-based forest characterization. The more variation there was in the tree size distribution, the more challenging it was for the TLS-based method to capture all the trees and derive the tree and forest structural attributes. In general, consistent accuracy and reliability in the estimates of tree and forest attributes can be expected when using TLS for characterizing managed boreal forests.
机译:有限地了解森林结构如何影响基于陆地激光扫描(TLS)的方法的性能,在于树木和森林环境。我们的目标是通过研究形状树尺寸分布的不同森林管理活动如何影响基于TLS的森林表征精度(Pinus Sylvestris L.)的森林表征精度来改进这种理解。为此目的,我们调查了由三种不同的细化类型组成的27个样本地块,两个稀疏强度以及没有任何治疗的控制图。从样本图中收集多扫描TLS点云,点云处理算法用于对各个树进行分割并将分段点云分类为阀杆和冠点。分类点云进一步用于估计树和森林结构属性。随着基于TLS的森林特征,树木检测的完整性几乎100%,直径为乳房高度测量的0.7厘米(3.4%)根平均方误差(RMSE),0.9-1.4米(4.5-7.3 %)在树高测量中RMSE,并且根据森林结构属性估计(即平均基部区域,每公顷的树木数,平均体积,基部加权平均直径和高度)的<6%相对RMSE。施加薄型。薄型减少了水平和垂直森林结构的变化,特别是基于TLS的树检测和树高测量,从而实现了森林结构属性的可靠估计。对控制图​​记录了相当低的性能。注意到稀释强度,以影响基于TLS的森林特征的准确性而不是细化类型。每公顷的树木数量和抑制树木的比例被认为是影响基于TLS的森林特征的准确性的主要因素。在树大小分布中的变化越多,基于TLS的方法越挑战,捕获所有树木并导出树和森林结构属性。通常,在使用TLS以表征群体林的TLS时,可以预期树木和森林属性估计的一致精度和可靠性。

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