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首页> 外文期刊>International journal of applied earth observation and geoinformation >Investigating multiple data sources for tree species classification in temperate forest and use for single tree delineation
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Investigating multiple data sources for tree species classification in temperate forest and use for single tree delineation

机译:研究温带森林中树种分类的多个数据源并用于单个树的描绘

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摘要

Despite numerous studies existing for tree species classification the difficult situation in dense and mixed temperate forest is still a challenging task. This study attempts to extend the existing limitations by investigating comprehensive sets of different types of features derived from multiple data sources. These sets include features from full-waveform LiDAR, LiDAR height metrics, texture, hyperspectral data and colour infrared (CIR) images. Support vector machines (SVM) are used as an appropriate classifier to handle the high dimensional feature space and an internal ranking method allows the determination of the most important parameters. In addition, for species discrimination, focus is put on single tree applicable scale. While most experiences within these scales derive from boreal forests and are often restricted to two or three species, we concentrate on more complex temperate forests. The four main species pine (Pinus sylvestris), spruce (Picea abies), oak (Quercus petraea) and beech (Fagus sylvatica) are classified with an accuracy of 89.7%, 88.7%, 83.1% and 90.7%, respectively. Instead of directly classifying delineated single trees a raster cell based classification is conducted. This overcomes problems with erroneous polygons of merged tree crowns, which occur frequently within dense deciduous or mixed canopies. Lastly, we further test the possibility to correct these failures by combining species classification with single tree delineation.
机译:尽管已有许多关于树种分类的研究,但在茂密和温带混交林中的困难情况仍然是一项艰巨的任务。这项研究试图通过调查从多个数据源派生的不同类型特征的综合集合来扩展现有限制。这些集合包括全波形LiDAR,LiDAR高度度量,纹理,高光谱数据和彩色红外(CIR)图像的功能。支持向量机(SVM)用作处理高维特征空间的适当分类器,内部排序方法可确定最重要的参数。另外,对于物种歧视,重点放在单树适用规模上。虽然这些规模内的大多数经验都来自北方森林,并且通常仅限于两种或三种物种,但我们专注于更复杂的温带森林。四个主要种类的松树(Pinus sylvestris),云杉(Picea abies),橡树(Quercus petraea)和山毛榉(Fagus sylvatica)的准确度分别为89.7%,88.7%,83.1%和90.7%。代替直接对描绘的单棵树进行分类,而是进行基于栅格单元的分类。这克服了合并树冠的错误多边形所产生的问题,该错误多边形经常发生在茂密的落叶或混合冠层内。最后,我们进一步测试了通过将物种分类与单棵树描绘相结合来纠正这些故障的可能性。

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