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Classification of high-resolution remote sensing images based on multi-scale superposition

机译:基于多尺度叠加的高分辨率遥感图像分类

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Landscape structures and process on different scale show different characteristics. In the study of specific target landmarks, the most appropriate scale for images can be attained by scale conversion, which improves the accuracy and efficiency of feature identification and classification. In this paper, the authors carried out experiments on multi-scale classification by taking the Shangri-la area in the north-western Yunnan province as the research area and the images from SPOT5 HRG and GF-1 Satellite as date sources. Firstly, the authors upscaled the two images by cubic convolution, and calculated the optimal scale for different objects on the earth shown in images by variation functions. Then the authors conducted multi-scale superposition classification on it by Maximum Likelyhood, and evaluated the classification accuracy. The results indicates that: (1) for most of the object on the earth, the optimal scale appears in the bigger scale instead of the original one. To be specific, water has the biggest optimal scale, i.e. around 25-30m; farmland, grassland, brushwood, roads, settlement places and woodland follows with 20-24m. The optimal scale for shades and flood land is basically as the same as the original one, i.e. 8m and 10m respectively. (2) Regarding the classification of the multi-scale superposed images, the overall accuracy of the ones from SPOT5 HRG and GF-1 Satellite is 12.84% and 14.76% higher than that of the original multi-spectral images, respectively, and Kappa coefficient is 0.1306 and 0.1419 higher, respectively. Hence, the multi-scale superposition classification which was applied in the research area can enhance the classification accuracy of remote sensing images.
机译:不同规模的景观结构和过程显示了不同的特点。在对特定目标地标的研究中,可以通过规模转换实现最合适的图像规模,这提高了特征识别和分类的准确性和效率。在本文中,作者通过在云南省西南部的香格里拉地区作为研究区以及来自Spot5 HRG和GF-1卫星的图像进行了多规模分类的实验。首先,作者通过立方卷积升高了两个图像,并通过变化函数计算了图像上显示的地球上不同对象的最佳比例。然后,作者通过最大的可能性对其进行了多尺度的叠加分类,并评估了分类准确性。结果表明:(1)对于地球上的大多数对象,最佳刻度显示在更大的范围内而不是原始的尺度。具体而言,水具有最佳的最佳规模,即左右25-30米;农田,草原,毛毛布,道路,定居点和林地伴随着20-24米。色调和洪水的最佳规模基本上与原始的尺度相同,即8米和10米。 (2)关于多尺度叠加图像的分类,Spot5 HRG和GF-1卫星的整体精度分别高于原始多光谱图像的12.84%和14.76%,以及kappa系数分别为0.1306和0.1419。因此,在研究区域中应用的多尺度叠加分类可以提高遥感图像的分类精度。

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