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Spatial knowledge based complicated urban area classification from high-resolution remote sensing image

机译:基于空间知识的高分辨率遥感图像的复杂城市分类

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Combining spectral and spatial information can improve land use classification of high-resolution data. However, the use of spatial information always focus on objects' spatial pattern, whereas not pay enough attention to spatial relationship, which is more convenient and effective in remote sensing classification. This letter proposes a spectral-spatial information method, which aims to exploit objects' spatial relationships in high resolution imagery, and then integrate it with spectral information in remote sensing classification. We experiment on urban mapping based on spectral-spatial information using Quickbird imagery, and compare its result with supervised classification methods like maximum likelihood classification, and support vector machine (SVM) classification. The results show that the proposed method yield better performance than the others in both precision and rationality.
机译:组合光谱和空间信息可以改善高分辨率数据的土地利用分类。 然而,使用空间信息始终关注物体的空间模式,而不是足够重视空间关系,这在遥感分类中更方便和有效。 这封信提出了一种光谱空间信息方法,该方法旨在利用高分辨率图像中的物体的空间关系,然后将其与遥感分类中的光谱信息集成。 我们基于使用Quickbird图像的光谱空间信息进行城市映射,并将其结果与监督分类方法相比,如最大似然分类,支持向量机(SVM)分类。 结果表明,该方法在精度和合理性方面比其他方法产生更好的性能。

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