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首页> 外文期刊>Inverse problems and imaging >AUGMENTED LAGRANGIAN METHOD FOR AN EULER'S ELASTICA BASED SEGMENTATION MODEL THAT PROMOTES CONVEX CONTOURS
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AUGMENTED LAGRANGIAN METHOD FOR AN EULER'S ELASTICA BASED SEGMENTATION MODEL THAT PROMOTES CONVEX CONTOURS

机译:增强拉格朗日方法的欧拉Elastica基于基于的分割模型,促进凸轮廓

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In this paper, we propose an image segmentation model where an L~1 variant of the Euler's elastica energy is used as boundary regularization. An interesting feature of this model lies in its preference for convex segmentation contours. However, due to the high order and non-differentiability of Euler's elastica energy, it is nontrivial to minimize the associated functional. As in recent work on the ordinary L~2 -Euler's elastica model in imaging, we propose using an augmented Lagrangian method to tackle the minimization problem. Specifically, we design a novel augmented Lagrangian functional that deals with the mean curvature term differently than in previous works. The new treatment reduces the number of Lagrange multipliers employed, and more importantly, it helps represent the curvature more effectively and faithfully. Numerical experiments validate the efficiency of the proposed augmented Lagrangian method and also demonstrate new features of this particular segmentation model, such as shape driven and data driven properties.
机译:在本文中,我们提出了一种图像分割模型,其中欧拉Elastica能量的L〜1变体用作边界正则化。该模型的一个有趣特征在于它偏好对凸分割轮廓的偏好。然而,由于欧拉Elastica能量的高阶和不差异性,最小化相关功能是不动的。正如在普通L〜2-2-Euuler的成像模型的工作中,我们建议使用一个增强拉格朗日方法来解决最小化问题。具体而言,我们设计了一种新的增强拉格朗日功能,这些功能涉及与以前的作品不同的平均曲率术语。新处理减少了所用的拉格朗日乘法器的数量,更重要的是,它有助于更​​有效地忠实地代表曲率。数值实验验证了提出的增强拉格朗日方法的效率,并证明了这种特定分割模型的新特征,例如形状驱动和数据驱动的属性。

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