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High resolution urban image classification combining edge statistical features

机译:结合边缘统计特征的高分辨率城市图像分类

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Classification with very high resolution (VHR) urban images is challenging because of the great variations of spectrums of pixels inside objects. Plenty of structural information can be obtained over edge statistics. A methodology for incorporating image edge statistical information into conventional classification algorithms is described. The technique is built on the statistical information of edges which are generated by edge statistical model. This method has been tested on a selected site of Worldview-II data which covers north-west part of Beijing, China. Nine land-cover types have been classified to evaluate the effectiveness of edge-based features for urban image classification. The overall classification accuracy is 82.7% and 89.3% for pixel-based and object-based method for incorporating edge statistical features, respectively.
机译:由于物体内部像素光谱的巨大差异,因此非常高分辨率(VHR)城市图像的分类具有挑战性。通过边缘统计可以获得大量的结构信息。描述了一种将图像边缘统计信息合并到常规分类算法中的方法。该技术建立在边缘统计模型生成的边缘统计信息的基础上。该方法已经在Worldview-II数据的选定站点上进行了测试,该数据覆盖了中国北京的西北部。已对9种土地覆盖类型进行了分类,以评估基于边缘的特征对城市图像分类的有效性。基于像素和基于对象的边缘统计特征方法的总体分类精度分别为82.7%和89.3%。

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