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首页> 外文期刊>International journal of remote sensing >A fast, weighted CRF algorithm based on a two-step superpixel generation for SAR image segmentation
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A fast, weighted CRF algorithm based on a two-step superpixel generation for SAR image segmentation

机译:基于SAR图像分割的两步超像素生成的快速加权CRF算法

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摘要

Among the Markov random field methods, conditional random fields (CRF) model has shown good results in Synthetic Aperture Radar (SAR) image segmentation. CRF not only directly models the posterior distribution of label field conditioned on images but also allows the interactions between observations. In this paper, we propose a Fast, Weighted CRF (FWCRF) algorithm based on a two-step superpixel generation method. In our method, heterogeneity of intensity in SAR images due to speckle noise and backscattering is considered. The first step is a preprocessing task for suppressing speckle noise which is done by the L-0 smoothing algorithm. It is followed by Sobel edge detector to highlight heterogeneous regions and edges. Then SAR image is partitioned into homogeneous and heterogeneous regions by using fast robust fuzzy c-means clustering (FRFCM). Simultaneously, the simple linear iterative clustering (SLIC) algorithm is applied to split the image into superpixels. Next, the superpixels belonging to the same class are merged by using the Density-Based Spatial Clustering of Applications with Noise (DBSCAN) method. Finally, the SAR image is labelled using the FWCRF algorithm which consists of weighted pairwise potential based on adaptive features and applying FRFCM as an initial segmentation method. The proposed algorithm is evaluated in comparison with other conditional random field schemes. The results of our proposed method demonstrate accuracy improvement in segmentation.
机译:在马尔可夫随机场方法中,条件随机字段(CRF)模型在合成孔径雷达(SAR)图像分割中显示出良好的结果。 CRF不仅直接模拟了图像上调节的标签字段的后部分布,还允许观察结果之间的相互作用。在本文中,我们提出了一种基于两步超像素生成方法的快速加权CRF(FWCRF)算法。在我们的方法中,考虑了由于斑点噪声和反向散射而导致的SAR图像中的强度的异质性。第一步是用于抑制由L-0平滑算法完成的散斑噪声的预处​​理任务。其次是Sobel边缘检测器,以突出异质区域和边缘。然后通过使用快速鲁棒的模糊C-MELICELING(FRFCM)将SAR图像分配到均匀和异构区域中。同时,应用简单的线性迭代聚类(SLIC)算法将图像分成超像素。接下来,通过使用具有噪声(DBSCAN)方法的应用程序的基于密度的空间聚类来合并属于同一类的SuperPixels。最后,使用FWCRF算法标记SAR图像,该FWCRF算法基于自适应特征和将FRFCM应用于初始分割方法的加权成对算法。与其他条件随机场方案相比,评估所提出的算法。我们提出的方法的结果表明了分段的准确性改善。

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