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Improving sampling-based image matting with cooperative coevolution differential evolution algorithm

机译:用协作协同差分演化算法改进基于抽样的图像消光

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摘要

Image matting is a fundamental operator in image editing and has significant influence on video production. This paper explores sampling-based image matting technology, with the aim to improve the accuracy of matting result. The result of sampling-based image matting technology is determined by the selected samples. Every undetermined pixel needs both a foreground and background pixel to estimate whether the undetermined one is in the foreground region of the image. These foreground pixels and background pixels are sampled from known regions, which form sample pairs. High-quality sample pairs can improve the accuracy of matting results. Therefore, how to search for the best sample pairs for all undetermined pixels is a key optimization problem of sampling-based image matting technology, termed "sample optimization problem." In this paper, in order to improve the efficiency of searching for high-quality sample pairs, we propose a cooperative coevolution differential evolution (DE) algorithm in solution to this optimization problem. Strong-correlate pixels are divided into a group to cooperatively search for the best sample pairs. In order to avoid premature convergence of DE algorithm, a scattered strategy is used to keep the diversit) of population. Besides. a simple but effective evaluation function is proposed to distinguish the quality of various candidate solutions. The existing optimization method, original DE algorithm and a popular evolution algorithm are used for comparison. The experimental results demonstrate that the proposed cooperative coevolution DE algorithm can search for higher-quality sample pairs and improve the accuracy of sampling-based image matting.
机译:图像消光是图像编辑的基本操作员,对视频制作产生重大影响。本文探讨了基于采样的图像消光技术,旨在提高消光结果的准确性。基于采样的图像消光技术的结果由所选样品确定。每个未确定的像素都需要前景和背景像素来估计未确定的像素是否在图像的前景区域中。这些前景像素和背景像素被从已知区域采样,形成样品对。高质量的样品对可以提高消光结果的准确性。因此,如何搜索所有未确定像素的最佳样本对是基于采样的图像消光技术的关键优化问题,称为“样本优化问题”。在本文中,为了提高寻找高质量样本对的效率,我们提出了一种在解决该优化问题的解决方案中的协作共同差分演进(DE)算法。强相关的像素被分成一个组,以协同搜索最佳样本对。为了避免De算法的早产,分散的策略用于保持人口的多样化。除了。提出了一种简单但有效的评估功能,以区分各种候选解决方案的质量。现有的优化方法,原始DE算法和流行的演化算法用于比较。实验结果表明,所提出的协作协会DE算法可以搜索更高质量的样品对并提高基于采样的图像消光的准确性。

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