首页> 外文会议>Conference on Remote Sensing for Agriculture, Ecosystems, and Hydrology; 20070918-20; Florence(IT) >Optimal land use/cover classification using remote sensing imagery for hydrological modelling in a Himalayan watershed
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Optimal land use/cover classification using remote sensing imagery for hydrological modelling in a Himalayan watershed

机译:在喜马拉雅流域中使用遥感图像进行水文建模的最佳土地利用/土地覆盖分类

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Land use/cover is an important watershed surface characteristic that affects surface runoff and erosion. Many of the available hydrological models divide the watershed into Hydrological Response Units (HRU), which are spatial units with expected similar hydrological behaviours. The division into HRU's requires good-quality spatial data on land use/cover. This paper presents different approaches to attain an optimal land use/cover map based on remote sensing imagery for a Himalayan watershed in northern India. First digital classifications using maximum likelihood classifier (MLC) and a decision tree classifier were applied. The results obtained from the decision tree were better and even improved after post classification sorting. But the obtained land use/cover map was not sufficient for the delineation of HRUs, since the agricultural land use/cover class did not discriminate between the two major crops in the area i.e. paddy and maize. Therefore we adopted a visual classification approach using optical data alone and also fused with ENVISAT ASAR data. This second step with detailed classification system resulted into better classification accuracy within the 'agricultural land' class which will be further combined with topography and soil type to derive HRU's for physically-based hydrological modelling.
机译:土地利用/覆盖是影响流域径流和侵蚀的重要流域地表特征。许多可用的水文模型将流域划分为水文响应单位(HRU),这是具有预期相似水文行为的空间单位。 HRU的划分需要有关土地使用/覆盖的高质量空间数据。本文提出了基于遥感影像的印度北部喜马拉雅流域最佳土地利用/覆盖图的不同方法。应用了使用最大似然分类器(MLC)和决策树分类器的第一个数字分类。经过分类后的分类,决策树获得的结果更好甚至更好。但是,所获得的土地利用/土地覆盖图不足以描绘HRU,因为农业土地利用/土地覆盖类别并未区分该地区的两种主要农作物,即水稻和玉米。因此,我们采用了仅使用光学数据并将其与ENVISAT ASAR数据融合的视觉分类方法。第二步是采用详细的分类系统,从而在“农业用地”类别中实现了更好的分类准确性,并将其与地形和土壤类型进一步结合,以得出HRU进行基于物理的水文建模。

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