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Exploring horizontal area-based metrics to discriminate the spatial pattern of trees and need for first thinning using airborne laser scanning

机译:探索基于水平区域的度量标准,以区分树木的空间模式以及需要使用机载激光扫描进行首次细化的条件

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摘要

The objectives of this study were (1) to identify point cloud metrics and horizontal texture and landscape metrics from airborne laser scanning (ALS) data, which can be used to determine the spatial pattern of trees and, further, the need for first thinning and (2) to study if the clustered spatial pattern of trees and the need for first thinning can be separated from other spatial patterns and need for thinning classes. The field data consisted of 28 microstands, which had reached the first thinning height but had not yet been thinned. Linear discriminant analysis was used to classify microstands by means of the metrics calculated from the ALS data. A classification based on the spatial pattern of trees discriminated stands with the overall accuracy (OA) being 0.89 and kappa-value (k) 0.77. Similarly, a classification based on the need for first thinning was also successful (OA = 0.96 and k = 0.93). Horizontal landscape metrics were found to be good predictors of the spatial patterns of trees, whereas the landscape and point cloud metrics were found good predictors of the need for first thinning.
机译:这项研究的目的是(1)从机载激光扫描(ALS)数据中识别点云指标以及水平纹理和景观指标,这些指标可用于确定树木的空间格局,此外,还需要首先进行疏伐和(2)研究是否可以将树木的群集空间模式和第一次稀疏的需求与其他空间格局和稀疏类别的需求分开。现场数据由28个微型林组成,它们已经达到了第一个稀疏高度,但尚未稀疏。线性判别分析用于根据从ALS数据计算得出的指标对微型林进行分类。根据所识别树木的空间格局进行分类的总体准确度(OA)为0.89,kappa值(k)为0.77。同样,基于首次细化的需求进行的分类也很成功(OA = 0.96和k = 0.93)。人们发现水平的景观指标可以很好地预测树木的空间格局,而景观和点云指标则可以很好地预测树木的第一次疏伐。

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