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Image classification based on web community structure model

机译:基于网络社区结构模型的图像分类

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This paper describes a network-theoretic approach for clustering pixels in a remot-sensing image and has received relatively satisfactory results. This approach is divided into two stages—the local classification stage and the global clustering stage. During local classification, the original image is partitioned into small blocks which are converted into local network graphs respectively. Then, the method of optimal modularity based on the modularity matrix is exploited to detect communities (classes) in each block. This paper also performs class merging to those classes that we think they are geometrically dispersed. All the classes left after merging are considered as nodes in the global network graph, and the main color is computed for each class. Finally, the community detection method mentioned above is employed again to achieve the final classification results.
机译:本文介绍了一种用于在遥感图像中对像素进行聚类的网络理论方法,并获得了相对令人满意的结果。该方法分为两个阶段-本地分类阶段和全局聚类阶段。在本地分类过程中,原始图像被分为几个小块,分别转换为本地网络图。然后,利用基于模块化矩阵的最优模块化方法来检测每个块中的社区(类)。本文还将类合并到那些我们认为它们在几何上分散的类。合并后剩下的所有类都被视为全局网络图中的节点,并且为每个类计算主色。最后,再次采用上述的社区检测方法来获得最终的分类结果。

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