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The Chan-Vese Model With Elastica and Landmark Constraints for Image Segmentation

机译:Chan-VESE模型与Elastica和图像分割的地标约束

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摘要

In order to completely separate objects with large sections of occluded boundaries in an image, we devise a new variational level set model for image segmentation combining the Chan-Vese model with elastica and landmark constraints. For computational efficiency, we design its Augmented Lagrangian Method (ALM) or Alternating Direction Method of Multiplier (ADMM) method by introducing some auxiliary variables, Lagrange multipliers, and penalty parameters. In each loop of alternating iterative optimization, the sub-problems of minimization can be easily solved via the Gauss-Seidel iterative method and generalized soft thresholding formulas with projection, respectively. Numerical experiments show that the proposed model can not only recover larger broken boundaries but can also improve segmentation efficiency, as well as decrease the dependence of segmentation on parameter tuning and initialization.
机译:为了将具有在图像中的大块遮挡边界的大部分完全分离对象,我们为图像分割的新变分级集合模型与Elastica和地标约束结合起来。为了计算效率,我们通过引入一些辅助变量,拉格朗日乘法器和惩罚参数来设计其增强拉格朗日方法(ALM)或乘法器(ADMM)方法的交替方向方法。在每个迭代优化的每环中,可以通过高斯-Seidel迭代方法和具有投影的广义软阈值公式容易地解决最小化的子问题。数值实验表明,所提出的模型不仅可以恢复更大的破碎边界,而且可以提高分割效率,并降低分割对参数调谐和初始化的依赖性。

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