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SAR image segmentation using MSER and improved spectral clustering

机译:使用MSER和改进的光谱聚类的SAR图像分割

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摘要

A novel approach is presented for synthetic aperture radar (SAR) image segmentation. By incorporating the advantages of maximally stable extremal regions (MSER) algorithm and spectral clustering (SC) method, the proposed approach provides effective and robust segmentation. First, the input image is transformed from a pixel-based to a region-based model by using the MSER algorithm. The input image after MSER procedure is composed of some disjoint regions. Then the regions are treated as nodes in the image plane, and a graph structure is applied to represent them. Finally, the improved SC is used to perform globally optimal clustering, by which the result of image segmentation can be generated. To avoid some incorrect partitioning when considering each region as one graph node, we assign different numbers of nodes to represent the regions according to area ratios among the regions. In addition, K-harmonic means instead of K-means is applied in the improved SC procedure in order to raise its stability and performance. Experimental results show that the proposed approach is effective on SAR image segmentation and has the advantage of calculating quickly.
机译:提出了一种新颖的合成孔径雷达(SAR)图像分割方法。通过结合最大稳定极值区域(MSER)算法和光谱聚类(SC)方法的优点,该方法提供了有效而鲁棒的分割方法。首先,使用MSER算法将输入图像从基于像素的模型转换为基于区域的模型。 MSER过程之后的输入图像由一些不相交的区域组成。然后将这些区域视为图像平面中的节点,并应用图形结构表示它们。最后,改进的SC用于执行全局最佳聚类,从而可以生成图像分割的结果。为了避免在将每个区域视为一个图形节点时出现一些不正确的分区,我们根据区域之间的面积比分配不同数量的节点来表示区域。此外,在改进的SC程序中使用K调和方法代替K均值,以提高其稳定性和性能。实验结果表明,该方法对SAR图像分割有效,具有计算速度快的优点。

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