多标签自动GrabCut图像分割

D. Khattab, H. M. Ebied, A. S. Hussein, M. Tolba
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引用次数: 7

摘要

针对图像分割问题,提出了一种多标签自动GrabCut技术。GrabCut被认为是二标签分割技术的一种,因为它是基于著名的s/t图切最小化图像分割技术。本文将自动二标签GrabCut扩展为一种多标签技术,可以在没有用户干预的情况下将给定图像分割成其自然片段。由于多标签分割是np困难问题,该算法将分割问题转化为多个迭代分段二标签GrabCut分割。这意味着每次迭代从考虑的图像中分离一个片段。这样,该算法保持了GrabCut的强大优势,得到了分割问题的最优解。使用文献中不同的精度指标对分割结果进行评估。评估是用自然图像伯克利基准数据集的人类地面真值分割进行的。虽然人类分割在语义上更有意义,但实验表明,所提出的多标签GrabCut分割结果与人类个体的分割结果相匹配,精度可接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-label automatic GrabCut for image segmentation
This paper presents a multi-label automatic GrabCut technique for the problem of image segmentation. GrabCut is considered as one of the binary-label segmentation techniques because it is based on the famous s/t graph cut minimization technique for image segmentation. This paper extends the automatic binary-label GrabCut to a multi-label technique that can segment a given image into its natural segments without user intervention. Since multi-label segmentation is an NP-hard problem, the proposed algorithm converts the segmentation problem into multiple iterative piecewise binary label GrabCut segmentations. This implies separating one segment from the image, under consideration, per iteration. In this way, the proposed algorithm maintains the powerful advantage of the GrabCut to get the optimal solution for the segmentation problem. Evaluation of the segmentation results was carried out using different accuracy metrics from the literature. The evaluations were conducted with human ground truth segmentations from Berkeley benchmark dataset of natural images. Although human segmentations are semantically more meaningful, experiments showed that the proposed multi-label GrabCut provided matching segmentation results to that of individual humans with acceptable accuracy.
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