Level set methods and image segmentation

Hongchuan Yu, Dejun Wang, Zesheng Tang
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引用次数: 18

Abstract

We discuss some questions for applying level set methods to image segmentation. During image segmentation, it has been found that the level sets function could be changed into a non-distance function with the initial level set function defined as a distance function. This causes some applications to fail, such as coupled surfaces propagation. In addition, the solution existence and uniqueness of the evolving equation in the level set method has not been discussed in detail. We firstly prove that the signed distance function could be presented to the level set function during the evolution of the level set function through the methods presented in (Sethian, 1999; Gomes and Faugeras, 2000). Furthermore, the solution existence and uniqueness of the level set function evolution equations are analyzed in detail under the distance function restriction. It has been proved that the solutions exist, but are not unique. Finally, this conclusion can be validated in the results of implementation on image segmentation.
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水平集方法和图像分割
讨论了水平集方法在图像分割中的应用问题。在图像分割过程中,我们发现水平集函数可以转化为非距离函数,初始水平集函数定义为距离函数。这将导致某些应用程序失败,例如耦合表面传播。此外,对水平集方法中演化方程解的存在唯一性问题也没有进行详细的讨论。我们首先通过(Sethian, 1999)提出的方法证明了在水平集函数的演化过程中,有符号距离函数可以呈现给水平集函数;Gomes和Faugeras, 2000)。进一步,详细分析了在距离函数约束下水平集函数演化方程解的存在唯一性。已经证明,解是存在的,但不是唯一的。最后,在图像分割的实现结果中验证了这一结论。
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