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Improving Landsat and IRS Image Classification: Evaluation of Unsupervised and Supervised Classification through Band Ratios and DEM in a Mountainous Landscape in Nepal

机译:改善Landsat和IRS图像分类:通过带比率和DEM在尼泊尔的山地景观中评估无监督和有监督的分类

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Modification of the original bands and integration of ancillary data in digital image classification has been shown to improve land use land cover classification accuracy. There are not many studies demonstrating such techniques in the context of the mountains of Nepal. The objective of this study was to explore and evaluate the use of modified band and ancillary data in Landsat and IRS image classification, and to produce a land use land cover map of the Galaudu watershed of Nepal. Classification of land uses were explored using supervised and unsupervised classification for 12 feature sets containing the Landsat MSS, TM and IRS original bands, ratios, normalized difference vegetation index, principal components and a digital elevation model. Overall, the supervised classification method produced higher accuracy than the unsupervised approach. The result from the combination of bands ration 4/3, 5/4 and 5/7 ranked the highest in terms of accuracy (82.86%), while the combination of bands 2, 3 and 4 ranked the lowest (45.29%). Inclusion of DEM as a component band shows promising results.
机译:在数字图像分类中,原始带的修改和辅助数据的整合已被证明可以提高土地利用土地覆盖分类的准确性。在尼泊尔的山区背景下,没有太多研究证明这种技术。这项研究的目的是探索和评估Landsat和IRS图像分类中修改后的波段和辅助数据的使用,并制作尼泊尔Galaudu流域的土地利用土地覆盖图。利用有监督和无监督的分类方法,探索了土地利用的分类,对12个要素集进行了分类,这些要素集包括Landsat MSS,TM和IRS原始谱带,比例,归一化差异植被指数,主成分和数字高程模型。总体而言,监督分类方法比无监督方法产生的准确性更高。比率为4 / 3、5 / 4和5/7的频段组合的结果在准确性方面排名最高(82.86%),而频带2、3和4的组合排名最低(45.29%)。包含DEM作为分量带显示出令人鼓舞的结果。

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