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Study of urban spatial patterns from SPOT panchromatic imagery using textural analysis

机译:基于纹理分析的SPOT全色影像城市空间格局研究

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摘要

The long-time historical evolution and recent rapid development of Beijing, China, present before us a unique urban structure. A 10-metre spatial resolution SPOT panchromatic image of Beijing has been studied to capture the spatial patterns of the city. Supervised image classifications were performed using statistical and structural texture features produced from the image. Textural features, including eight texture features from the Grey-Level Cooccurrence Matrix (GLCM) method; a computationally efficient texture feature, the Number of Different Grey-levels (NDG); and a structural texture feature, Edge Density (ED), were evaluated. It was found that generally single texture features performed poorly. Classification accuracy increased with increasing number of texture features until three or four texture features were combined. The more texture features in the combination, the smaller difference between different combinations. The results also show that a lower number of texture features were needed for more homogeneous areas. NDG and ED combined with GLCM texture features produced similar results as the same number of GLCM texture features. Two classification schemes were adopted, stratified classification and non-stratified classification. The best stratified classification result was better than the best non-stratified classification result.
机译:中国北京的长期历史演变和最近的快速发展向我们展示了独特的城市结构。研究了北京的10米空间分辨率SPOT全色图像以捕获城市的空间格局。使用从图像产生的统计和结构纹理特征进行监督的图像分类。纹理特征,包括来自灰度级共生矩阵(GLCM)方法的八个纹理特征;计算有效的纹理特征,不同灰度级数(NDG);并评估了结构纹理特征边缘密度(ED)。发现通常单个纹理特征表现差。分类精度随着纹理特征数量的增加而增加,直到将三个或四个纹理特征组合在一起为止。组合中的纹理特征越多,不同组合之间的差异就越小。结果还表明,对于更均匀的区域,需要较少数量的纹理特征。 NDG和ED与GLCM纹理特征相结合产生的结果与相同数量的GLCM纹理特征相似。采用两种分类方案:分层分类和非分层分类。最佳分层分类结果优于最佳非分层分类结果。

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