Cartoon image segmentation based on improved SLIC superpixels and adaptive region propagation merging

Huisi Wu, Yilin Wu, Shenglong Zhang, Ping Li, Zhenkun Wen
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引用次数: 20

Abstract

This paper present a novel algorithm for cartoon image segmentation based on the simple linear iterative clustering (SLIC) superpixels and adaptive region propagation merging. To break the limitation of the original SLIC algorithm in confirming to image boundaries, this paper proposed to improve the quality of the superpixels generation based on the connectivity constraint. To achieve efficient segmentation from the superpixels, this paper employed an adaptive region propagation merging algorithm to obtain independent segmented object. Compared with the pixel-based segmentation algorithms and other superpixel-based segmentation methods, the method proposed in this paper is more effective and more efficient by determining the propagation center adaptively. Experiments on abundant cartoon images showed that our algorithm outperforms classical segmentation algorithms with the boundary-based and region-based criteria. Furthermore, the final cartoon image segmentation results are also well consistent with the human visual perception.
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基于改进SLIC超像素和自适应区域传播合并的卡通图像分割
提出了一种基于简单线性迭代聚类(SLIC)超像素和自适应区域传播合并的卡通图像分割新算法。为了突破原有SLIC算法在确定图像边界方面的局限性,本文提出了基于连通性约束的超像素生成质量改进方法。为了实现对超像素的高效分割,本文采用自适应区域传播合并算法获得独立的分割目标。与基于像素的分割算法和其他基于超像素的分割方法相比,本文提出的方法通过自适应确定传播中心来提高分割效果和效率。在大量卡通图像上的实验表明,该算法优于基于边界和基于区域的经典分割算法。此外,最终的卡通图像分割结果也与人类的视觉感知非常吻合。
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