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Contextual Unsupervised Classification of Remotely Sensed Imagery with Mixels

机译:与混合的遥感图像的上下文无监督分类

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We propose a contextual unsupervised classification method of geostatistical data based on combination of Ward clustering method and Markov random fields (MRF). Image is clustered into classes by using not only spectrum of pixels but also spatial information. For the classification of remote sensing data of low spatial resolution, the treatment of mixed pixel is importance. From the knowledge that the most of mixed pixels locate in boundaries of land-covers, we first detect edge pixels and remove them from the image. We here introduce a new measure of spatial adjacency of the classes. Spatial adjacency is used to MRF-based update of the classes. Clustering of edge pixels are processed as final step. It is shown that the proposed method gives higher accuracy than conventional clustering method does.
机译:我们提出了一种基于沃德聚类方法和马尔可夫随机字段(MRF)的组合的地质统计数据的上下文无监督分类方法。通过不仅使用像素的频谱,而且是空间信息的频谱,图像被聚集到类中。对于低空间分辨率的遥感数据的分类,混合像素的处理是重要性的。从知识中,大多数混合像素定位在陆地覆盖物的边界中,我们首先检测边缘像素并从图像中删除它们。我们在这里介绍了课程的空间邻接的新措施。空间邻接用于基于MRF的类别的更新。边缘像素的聚类被处理为最终步骤。结果表明,该方法比传统聚类方法提供更高的精度。

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