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A Likelihood-Based SLIC Superpixel Algorithm for SAR Images Using Generalized Gamma Distribution

机译:基于广义伽玛分布的基于似然度的SAR图像SLIC超像素算法

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The simple linear iterative clustering (SLIC) method is a recently proposed popular superpixel algorithm. However, this method may generate bad superpixels for synthetic aperture radar (SAR) images due to effects of speckle and the large dynamic range of pixel intensity. In this paper, an improved SLIC algorithm for SAR images is proposed. This algorithm exploits the likelihood information of SAR image pixel clusters. Specifically, a local clustering scheme combining intensity similarity with spatial proximity is proposed. Additionally, for post-processing, a local edge-evolving scheme that combines spatial context and likelihood information is introduced as an alternative to the connected components algorithm. To estimate the likelihood information of SAR image clusters, we incorporated a generalized gamma distribution (GГD). Finally, the superiority of the proposed algorithm was validated using both simulated and real-world SAR images.
机译:简单线性迭代聚类(SLIC)方法是最近提出的一种流行的超像素算法。但是,由于散斑和像素强度的大动态范围的影响,此方法可能会为合成孔径雷达(SAR)图像生成不良的超像素。提出了一种改进的SAR图像SLIC算法。该算法利用了SAR图像像素簇的似然信息。具体而言,提出了一种将强度相似度与空间邻近度相结合的局部聚类方案。另外,对于后处理,引入了结合空间上下文和似然信息的局部边缘演化方案,作为连接组件算法的替代方案。为了估计SAR图像簇的似然信息,我们引入了广义伽马分布(GГD)。最后,使用模拟和真实SAR图像验证了所提算法的优越性。

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