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Segmentation of SAR images using similarity ratios for generating and clustering superpixels

机译:使用相似比分割SAR图像以生成和聚类超像素

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The superpixels are groups of similar neighbouring pixels which are perceptually meaningful and representationally efficient segments. Among those existing superpixel generating algorithms, simple linear iterative clustering (SLIC) seems to be one of the simplest ones. Its simplicity is due to adaption of a distance measure which is a linear combination of colour and spatial proximity. It is this measure that is modified using a similarity ratio. This modified measure is used to label the pixels within the search areas for generating the superpixels. This generation phase is further augmented with a clustering phase based on the same formulated similarity metric, which clusters the superpixels into larger segments. It has been demonstrated that this modified version performs better in terms of boundary recall and undersegmentation error, and is more robust to the speckle noise than the one in SLIC. Moreover, the clustered segments formed by superpixels generated by this approach has better boundary adherence than those formed by superpixels generated by SLIC.
机译:超像素是相似的相邻像素的组,它们在感知上是有意义的并且在表示上是有效的段。在那些现有的超像素生成算法中,简单的线性迭代聚类(SLIC)似乎是最简单的算法之一。其简单性归因于距离测量的适应,该距离测量是颜色和空间接近度的线性组合。使用相似率修改的是该度量。该修改的度量用于标记搜索区域内的像素以生成超像素。基于相同的公式化相似性度量,该生成阶段进一步增加了聚类阶段,该聚类阶段将超像素聚类为更大的片段。已经证明,该修改版本在边界召回和欠分割误差方面表现更好,并且对斑点噪声的抵抗能力比SLIC中的强。此外,与通过SLIC生成的超像素形成的聚类片段相比,通过这种方法生成的超像素形成的聚类片段具有更好的边界附着性。

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