GrabCut in One Cut

Meng Tang, Lena Gorelick, O. Veksler, Yuri Boykov
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引用次数: 214

Abstract

Among image segmentation algorithms there are two major groups: (a) methods assuming known appearance models and (b) methods estimating appearance models jointly with segmentation. Typically, the first group optimizes appearance log-likelihoods in combination with some spacial regularization. This problem is relatively simple and many methods guarantee globally optimal results. The second group treats model parameters as additional variables transforming simple segmentation energies into high-order NP-hard functionals (Zhu-Yuille, Chan-Vese, Grab Cut, etc). It is known that such methods indirectly minimize the appearance overlap between the segments. We propose a new energy term explicitly measuring L1 distance between the object and background appearance models that can be globally maximized in one graph cut. We show that in many applications our simple term makes NP-hard segmentation functionals unnecessary. Our one cut algorithm effectively replaces approximate iterative optimization techniques based on block coordinate descent.
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GrabCut in One Cut
在图像分割算法中有两大类:(a)假设已知外观模型的方法和(b)结合分割估计外观模型的方法。通常,第一组结合一些空间正则化优化外观对数似然。这个问题相对简单,许多方法都能保证全局最优的结果。第二组将模型参数作为附加变量,将简单分割能量转化为高阶NP-hard泛函数(Zhu-Yuille、Chan-Vese、Grab Cut等)。众所周知,这种方法间接地减少了片段之间的外观重叠。我们提出了一个新的能量项,明确地测量目标和背景外观模型之间的L1距离,可以在一个图切中全局最大化。我们表明,在许多应用中,我们的简单术语使np硬分割功能变得不必要。我们的一切算法有效地取代了基于块坐标下降的近似迭代优化技术。
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