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An Open Level Set Framework for Image Segmentation and Restoration using the Mumford and Shah Model

机译:使用Mumford和Shah模型进行图像分割和恢复的开放水平集框架

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In two dimensions, the Mumford and Shah functional for image segmentation and regularization~(15) has min-imizers (u, K), where u is a piecewise-smooth approximation of the image data /, and K represents the set of discontinuities of u (a union of curves). Theoretically, the edge set K could include both closed and open curves. The current level set and piecewise-smooth Mumford-Shah based segmentation algorithms4'23'24 can only detect objects with closed edges, which are boundaries of open sets. We propose an efficient Mumford-Shah and level set based algorithm for segmenting images with edges which are made up of open curves or crack-tips. By adapting Smereka's open level set formulation21 to variational problems, we are able to extend the current piecewise-smooth and level-set based image segmentation methods, such as4'23'24 to the case of open curve segmentation. The algorithm retains many of the advantages of using level sets, such as well-defined boundaries and ability to change topology. We solve the resulting Euler-Lagrange equations by Sobolev H~1 gradient descent, avoiding instability and the need for additional regularization of the level set functions, while also accelerating convergence to the reconstructed image. Finally, we present the numerical implementation and experimental results on various noisy images.
机译:在二维中,用于图像分割和正则化的Mumford和Shah函数〜(15)具有最小逼近器(u,K),其中u是图像数据的分段平滑近似,而K表示不连续的集合u(曲线的并集)。从理论上讲,边缘集K可以包括闭合曲线和开放曲线。当前的水平集和基于分段平滑的Mumford-Shah的分割算法4'23'24只能检测具有闭合边缘的对象,这些边缘是开放集的边界。我们提出了一种基于Mumford-Shah和水平集的高效算法,该算法可对包含由开放曲线或裂纹尖端组成的边缘的图像进行分割。通过使Smereka的开放水平集公式21适应变化问题,我们能够将基于分段平滑和水平集的图像分割方法(例如4'23'24)扩展到开放曲线分割的情况。该算法保留了使用级别集的许多优点,例如定义明确的边界和更改拓扑的能力。我们通过Sobolev H〜1梯度下降法解决了所得的Euler-Lagrange方程,避免了不稳定性和对水平集函数进行其他正则化的需要,同时还加快了对重建图像的收敛。最后,我们给出了在各种噪声图像上的数值实现和实验结果。

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