Bounding-Box Based Segmentation with Single Min-cut Using Distant Pixel Similarity

V. Pham, Keita Takahashi, T. Naemura
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引用次数: 6

Abstract

This paper addresses the problem of interactive image segmentation with a user-supplied object bounding box. The underlying problem is the classification of pixels into foreground and background, where only background information is provided with sample pixels. Many approaches treat appearance models as an unknown variable and optimize the segmentation and appearance alternatively, in an expectation maximization manner. In this paper, we describe a novel approach to this problem: the objective function is expressed purely in terms of the unknown segmentation and can be optimized using only one minimum cut calculation. We aim to optimize the trade-off of making the foreground layer as large as possible while keeping the similarity between the foreground and background layers as small as possible. This similarity is formulated using the similarities of distant pixel pairs. We evaluated our algorithm on the GrabCut dataset and demonstrated that high-quality segmentations were attained at a fast calculation speed.
基于边界盒的单最小分割方法
本文解决了使用用户提供的对象边界框进行交互式图像分割的问题。潜在的问题是将像素分类为前景和背景,其中只有背景信息提供了样本像素。许多方法将外观模型作为一个未知变量,并以期望最大化的方式交替优化分割和外观。在本文中,我们描述了一种新的方法来解决这个问题:目标函数纯粹用未知分割来表示,并且只需要一次最小切割计算就可以优化。我们的目标是优化权衡,使前景层尽可能大,同时保持前景层和背景层之间的相似性尽可能小。这种相似性是使用远像素对的相似性来表示的。我们在GrabCut数据集上评估了我们的算法,并证明了在快速的计算速度下获得了高质量的分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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