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The geographical weighted K-NN classifiers in land cover classification from remote sensing image: A case study of a subregion of Xi'an, China

机译:遥感图像土地覆盖分类中的地理加权K-NN分类器 - 以西安,中国次区域为例

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The classification of land cover is one of the most important objectives of remote sensing. Class-conditional probability plot has been presented to documentation classification. In this paper, we try to incorporate two geostatistical models (Exponential model and Gaussian model) into a supervised k-nearest neighbor (k-NN) classifier to improve the accuracy of land cover classification. A subregion of Xi'an city (multispectral quickbird satellite image, 2.4m spatial resolution) is taken as an example to illustrate the validation of these land cover classification methods. The geographical weighting k-NN classifiers have been demonstrated that the accuracy of classification of land cover is very high, which is up to 91.58 percent. In addition, this classifier has eliminated the salt-and-pepper effect of the remote sensing image to some degree.
机译:土地覆盖的分类是遥感最重要的目标之一。 类条件概率绘图已呈现给文档分类。 在本文中,我们尝试将两个地质统计模型(指数模型和高斯模型)纳入监督的K-最近邻(K-NN)分类器,以提高土地覆盖分类的准确性。 西安市(多光谱Quickbird卫星图像,2.4M空间分辨率)的次区域是示例,以说明这些土地覆盖分类方法的验证。 已经证明了地理加权K-NN分类器的陆地覆盖分类的准确性非常高,这高达91.58%。 此外,该分类器已经消除了遥感图像的盐和胡椒效应在某种程度上。

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