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Iterated Graph Cuts for Image Segmentation

机译:迭代图切割用于图像分割

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Graph cuts based interactive segmentation has become very popular over the last decade. In standard graph cuts, the extraction of foreground object in a complex background often leads to many segmentation errors and the parameter A in the energy function is hard to select. In this paper, we propose an iterated graph cuts algorithm, which starts from the sub-graph that comprises the user labeled foreground/background regions and works iteratively to label the surrounding un-segmented regions. In each iteration, only the local neighboring regions to the labeled regions are involved in the optimization so that much interference from the far unknown regions can be significantly reduced. To improve the segmentation efficiency and robustness, we use the mean shift method to partition the image into homogenous regions, and then implement the proposed iterated graph cuts algorithm by taking each region, instead of each pixel, as the graph node for segmentation. Extensive experiments on benchmark datasets demonstrated that our method gives much better segmentation results than the standard graph cuts and the GrabCut methods in both qualitative and quantitative evaluation. Another important advantage is that it is insensitive to the parameter A in optimization.
机译:在过去的十年中,基于图割的交互式细分变得非常流行。在标准图形切割中,复杂背景中前景对象的提取通常会导致许多分割错误,并且难以选择能量函数中的参数A。在本文中,我们提出了一种迭代图割算法,该算法从包含用户标记的前景/背景区域的子图开始,并迭代地标记周围的未分割区域。在每次迭代中,优化中仅涉及标记区域的本地相邻区域,因此可以大大减少来自遥远区域的大量干扰。为了提高分割效率和鲁棒性,我们采用均值平移法将图像划分为均匀的区域,然后通过将每个区域而不是每个像素作为分割的图节点来实现所提出的迭代图割算法。在基准数据集上进行的大量实验表明,在定性和定量评估方面,我们的方法均比标准图形切割和GrabCut方法提供了更好的分割结果。另一个重要的优点是在优化过程中它对参数A不敏感。

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