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Efficient image segmentation algorithm using SLIC superpixels and boundary-focused region merging

机译:使用SLIC超像素和边界聚焦区域合并的高效图像分割算法

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An effective graph-based image segmentation using superpixel-based graph representation is introduced. The techniques of SLIC superpixels, 5-D spectral clustering, and boundary-focused region merging are adopted in the proposed algorithm. With SLIC superpixels, the original image segmentation problem is transformed into the superpixel labeling problem. It makes the proposed algorithm more efficient than pixel-based segmentation algorithms and other superpixel-based segmentation methods. With the proposed methods of 5-D spectral clustering and boundary-focused region merging, the position information is used for clustering and the threshold for region merging can be adaptive. These techniques make the segmentation result more consistent with human perception. The simulations on Berkeley segmentation database show that our proposed method outperforms state-of-the-art methods.
机译:介绍了使用基于超像素的图形表示的基于图形的有效图像分割。该算法采用了SLIC超像素,5-D光谱聚类和边界聚焦区域合并技术。使用SLIC超像素,原始图像分割问题将转化为超像素标记问题。它使该算法比基于像素的分割算法和其他基于超像素的分割方法更加有效。利用所提出的5-D谱聚类和边界聚焦区域合并的方法,位置信息被用于聚类并且区域合并的阈值可以是自适应的。这些技术使分割结果更符合人类的感知。在Berkeley细分数据库上的仿真表明,我们提出的方法优于最新方法。

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