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首页> 外文期刊>International journal of applied earth observation and geoinformation >Classification of vegetation in an open landscape using full-waveform airborne laser scanner data
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Classification of vegetation in an open landscape using full-waveform airborne laser scanner data

机译:使用全波形机载激光扫描仪数据对开放景观中的植被进行分类

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Airborne laser scanning (ALS) is increasingly being used for the mapping of vegetation, although the focus so far has been on woody vegetation, and ALS data have only rarely been used for the classification of grassland vegetation. In this study, we classified the vegetation of an open alkali landscape, characterized by two Natura 2000 habitat types: Pannonic salt steppes and salt marshes and Pannonic loess steppic grasslands. We generated 18 variables from an ALS dataset collected in the growing (leaf-on) season. Elevation is a key factor determining the patterns of vegetation types in the landscape, and hence 3 additional variables were based on a digital terrain model (DTM) generated from an ALS dataset collected in the dormant (leaf-off) season. We classified the vegetation into 24 classes based on these 21 variables, at a pixel size of 1 m. Two groups of variables with and without the DTM-based variables were used in a Random Forest classifier, to estimate the influence of elevation, on the accuracy of the classification. The resulting classes at Level 4, based on associations, were aggregated at three levels Level 3 (11 classes), Level 2 (8 classes) and Level 1 (5 classes) based on species pool, site conditions and structure, and the accuracies were assessed. The classes were also aggregated based on Natura 2000 habitat types to assess the accuracy of the classification, and its usefulness for the monitoring of habitat quality. The vegetation could be classified into dry grasslands, wetlands, weeds, woody species and man-made features, at Level I, with an accuracy of 0.79 (Cohen's kappa coefficient, K). The accuracies at Levels 2-4 and the classification based on the Natura 2000 habitat types were K: 0.76, 0.61, 0.51 and 0.69, respectively. Levels 1 and 2 provide suitable information for nature conservationists and land managers, while Levels 3 and 4 are especially useful for ecologists, geologists and soil scientists as they provide high resolution data on species distribution, vegetation patterns, soil properties and on their correlations. Including the DTM-based variables increased the accuracy (K) from 0.73 to 0.79 for Level 1. These findings show that the structural and spectral attributes of AIS echoes can be used for the classification of open landscapes, especially those where vegetation is influenced by elevation, such as coastal salt marshes, sand dunes, karst or alluvial areas; in these cases, ALS has a distinct advantage over other remotely sensed data. (C) 2015 Elsevier B.V. All rights reserved.
机译:机载激光扫描(ALS)越来越多地用于绘制植被图,尽管到目前为止,重点一直是木质植被,而ALS数据很少用于草地植被的分类。在这项研究中,我们对开放性碱景观的植被进行了分类,其特征是两种Natura 2000栖息地类型:Pannonic盐草原和盐沼以及Pannonic黄土草原。我们从生长(叶子)季节收集的ALS数据集中生成了18个变量。高程是确定景观中植被类型模式的关键因素,因此,另外三个变量是基于从休眠(休假)季节收集的ALS数据集生成的数字地形模型(DTM)得出的。我们基于这21个变量将植被分为24类,像素大小为1 m。在随机森林分类器中使用具有和不具有基于DTM的变量的两组变量来估计海拔对分类准确性的影响。根据物种关联,将第4级得出的类别汇总为三个级别,分别为3级(11个类别),2级(8个类别)和1级(5个类别),具体取决于物种库,场所条件和结构,其准确性为评估。还根据Natura 2000栖息地类型汇总了这些类别,以评估分类的准确性及其对监测栖息地质量的有用性。在第I级,植被可以分为旱地,湿地,杂草,木本物种和人为特征,精确度为0.79(科恩卡帕系数,K)。 2-4级精度和基于Natura 2000生境类型的分类分别为K:0.76、0.61、0.51和0.69。第1级和第2级为自然保护主义者和土地管理者提供合适的信息,而第3级和第4级对于生态学家,地质学家和土壤科学家特别有用,因为它们提供了有关物种分布,植被格局,土壤特性及其相关性的高分辨率数据。包括基于DTM的变量,第一级的准确度(K)从0.73提高到0.79。这些发现表明,AIS回波的结构和光谱属性可用于对开放景观进行分类,尤其是那些植被受到海拔高度影响的景观,例如沿海盐沼,沙丘,喀斯特或冲积区;在这些情况下,ALS与其他遥感数据相比具有明显的优势。 (C)2015 Elsevier B.V.保留所有权利。

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