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Influence of different topographic correction strategies on mountain vegetation classification accuracy in the Lancang Watershed, China

机译:澜沧江流域不同地形校正策略对山地植被分类精度的影响

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摘要

Mapping of vegetation using remote sensing in mountainous areas is considerably hampered by topographic effects on the spectral response pattern. A variety of topographic normalization techniques have been proposed to correct these illumination effects due to topography. The purpose of this study was to compare six different topographic normalization methods (Cosine correction, Minnaert correction, C-correction, Sun-canopy-sensor correction, two-stage topographic normalization, and slope matching technique) for their effectiveness in enhancing vegetation classification in mountainous environments. Since most of the vegetation classes in the rugged terrain of the Lancang Watershed (China) did not feature a normal distribution, artificial neural networks (ANNs) were employed as a classifier. Comparing the ANN classifications, none of the topographic correction methods could significantly improve ETM+ image classification overall accuracy. Nevertheless, at the class level, the accuracy of pine forest could be increased by using topographically corrected images. On the contrary, oak forest and mixed forest accuracies were significantly decreased by using corrected images. The results also showed that none of the topographic normalization strategies was satisfactorily able to correct for the topographic effects in severely shadowed areas.
机译:对光谱响应模式的地形影响极大地阻碍了在山区使用遥感进行植被测绘。已经提出了各种地形归一化技术来校正由于地形引起的这些照明效果。本研究的目的是比较六种不同的地形归一化方法(余弦校正,Minnaert校正,C校正,太阳冠层传感器校正,两阶段地形归一化和坡度匹配技术)在增强植被分类方面的有效性。山区环境。由于澜沧江流域(中国)崎terrain地形中的大多数植被类别都不具有正态分布,因此采用人工神经网络(ANN)作为分类器。比较ANN分类,没有一种地形校正方法可以显着提高ETM +图像分类的整体准确性。不过,在班级水平上,可以使用地形校正的图像来提高松林的准确性。相反,使用校正后的图像会大大降低橡树林和混交林的准确性。结果还表明,没有一种地形归一化策略能够令人满意地校正严重阴影区域中的地形影响。

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