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Tree species classification in the Southern Alps with very high geometrical resolution multispectral and hyperspectral data

机译:具有非常高的几何分辨率多光谱和高光谱数据的南阿尔卑斯山的树种分类

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In this paper we analyze the problem of tree species classification in the Southern Alps by using high geometrical resolution airborne hyperspectral data. In addition, we study the effects of downscaling the spectral resolution through the use of very high geometrical resolution satellite images. The analysis is carried out on data acquired over a mountain area in the Southern Alps. This area is characterized by eleven tree species, both coniferous and broadleaved, distributed in topographically complex site. For each data source a specific processing chain was developed and a Support Vector Machine classifier was used. The experimental results made it clear that airborne hyperspectral data are effective for tree species classification in complex mountain areas (kappa accuracy of about 0.78). The spectral downscaling to very high resolution satellite multispectral images allows one to keep the spatial detail of the analysis but reducing significantly the level of accuracy in class discrimination (acceptable results were obtained only for macro-classes of species, for which the kappa accuracy was 0.70).
机译:在本文中,我们使用高几何分辨率的机载高光谱数据分析了南阿尔卑斯山的树种分类问题。此外,我们研究了通过使用非常高的几何分辨率卫星图像来降低频谱分辨率的影响。该分析是根据在阿尔卑斯山南部山区获取的数据进行的。该地区的特征是分布在复杂地形中的11种针叶和阔叶树种。对于每个数据源,都开发了特定的处理链,并使用了支持向量机分类器。实验结果清楚地表明,机载高光谱数据对于复杂山区的树种分类有效(kappa精度约为0.78)。将光谱缩小到非常高分辨率的卫星多光谱图像后,可以保留分析的空间细节,但会大大降低类别识别的准确性(仅对于kappa准确性为0.70的宏观类别的物种,才可以接受结果) )。

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