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Classification of coniferous tree species and age classes using hyperspectral data and geostatistical methods

机译:使用高光谱数据和地统计学方法对针叶树种和年龄类别进行分类

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Classifications of coniferous forest stands regarding tree species and age classes were performed using hyperspectral remote sensing data (HyMap) of a forest in western Germany. Spectral angle mapper (SAM) and maximum likelihood (ML) classifications were used to classify the images. Classification was performed using (ⅰ) spectral information alone, (ⅱ) spectral information and stem density, (ⅲ) spectral and textural information, (ⅳ) all data together, and results were compared. Geostatistical and grey level co-occurrence matrix based texture channels were derived from the HyMap data. Variograms, cross variograms, pseudo-cross variograms, madograms, and pseudo-cross madograms were tested as geostatistical texture measures. Pseudo-cross madograms, a newly introduced geostatistical texture measure, performed best. The classification accuracy (kappa) using hyperspectral data alone was 0.66. Application of pseudo-cross madograms increased it to 0.74, a result comparable to that obtained with stem density information derived from high spatial resolution imagery.
机译:使用德国西部森林的高光谱遥感数据(HyMap)对针叶林的林木种类和年龄进行分类。光谱角映射器(SAM)和最大似然(ML)分类用于对图像进行分类。仅使用(ⅰ)光谱信息,(ⅱ)光谱信息和茎密度,(ⅲ)光谱和质地信息,(ⅳ)所有数据一起进行分类,然后比较结果。基于HyMap数据的基于地统计和灰度共生矩阵的纹理通道。测试了方差图,交叉变异函数图,伪交叉变异函数图,madogram和伪交叉madograms作为地统计纹理度量。伪交叉madograms是一种新引入的地统计纹理度量,效果最好。仅使用高光谱数据的分类准确度(kappa)为0.66。伪十字形马尔代夫图的应用将其增加到0.74,这一结果与使用从高空间分辨率影像获得的茎密度信息获得的结果相当。

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