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Completely convex formulation of the Chan-Vese image segmentation model

机译:Chan-Vese图像分割模型的完全凸公式

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The active contours without edges model of Chan and Vese (IEEE Transactions on Image Processing 10(2):266-277, 2001) is a popular method for computing the segmentation of an image into two phases, based on the piecewise constant Mumford-Shah model. The minimization problem is non-convex even when the optimal region constants are known a priori. In (SIAM Journal of Applied Mathematics 66(5):1632-1648, 2006), Chan, Esedolu, and Nikolova provided a method to compute global minimizers by showing that solutions could be obtained from a convex relaxation. In this paper, we propose a convex relaxation approach to solve the case in which both the segmentation and the optimal constants are unknown for two phases and multiple phases. In other words, we propose a convex relaxation of the popular K-means algorithm. Our approach is based on the vector-valued relaxation technique developed by Goldstein et al. (UCLA CAM Report 09-77, 2009) and Brown et al. (UCLA CAM Report 10-43, 2010). The idea is to consider the optimal constants as functions subject to a constraint on their gradient. Although the proposed relaxation technique is not guaranteed to find exact global minimizers of the original problem, our experiments show that our method computes tight approximations of the optimal solutions. Particularly, we provide numerical examples in which our method finds better solutions than the method proposed by Chan et al. (SIAM Journal of Applied Mathematics 66(5):1632-1648, 2006), whose quality of solutions depends on the choice of the initial condition.
机译:Chan和Vese的无轮廓主动轮廓模型(IEEE Transactions on Image Processing 10(2):266-277,2001)是一种流行的方法,用于基于分段常数Mumford-Shah将图像分割为两个阶段模型。即使最佳区域常数是先验已知的,最小化问题也不是凸的。在(SIAM应用数学学报66(5):1632-1648,2006)中,Chan,Esedolu和Nikolova通过显示可以从凸松弛获得解的方法,提供了一种计算全局极小值的方法。在本文中,我们提出了一种凸松弛方法来解决两相和多相分割和最优常数都未知的情况。换句话说,我们提出了流行的K-means算法的凸松弛。我们的方法基于Goldstein等人开发的矢量值松弛技术。 (UCLA CAM Report 09-77,2009)和Brown等。 (UCLA CAM报告10-43,2010)。想法是将最佳常数视为受其梯度约束的函数。尽管不能保证所提出的松弛技术能够找到原始问题的精确全局最小化子,但我们的实验表明,我们的方法可以计算出最优解的近似值。特别是,我们提供了数值示例,其中我们的方法比Chan等人提出的方法找到更好的解决方案。 (SIAM Journal of Applied Mathematics 66(5):1632-1648,2006),其解的质量取决于初始条件的选择。

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