On the incorporation of shape priors into geometric active contours

Yunmei Chen, S. Thiruvenkadam, H. Tagare, F. Huang, D. C. Wilson, E. Geiser
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引用次数: 166

Abstract

A novel model for boundary determination that incorporates prior shape information into geometric active contours is presented. The basic idea of this model is to minimize the energy functional depending on the information of the image gradient and the shape of interest, so that the boundary of the object can be captured either by higher magnitude of the image gradient or by the prior knowledge of its shape. The level set form of the proposed model is also provided. We present our experimental results on some synthetic images, functional MR brain images, and ultrasound images for which the existing active contour methods are not applicable. The existence of the solution to the proposed minimization problem is also discussed.
几何活动轮廓中形状先验的结合
提出了一种将先验形状信息纳入几何活动轮廓的边界确定模型。该模型的基本思想是根据图像梯度和感兴趣的形状信息最小化能量函数,从而通过更高的图像梯度值或对其形状的先验知识来捕获目标的边界。给出了该模型的水平集形式。我们给出了一些合成图像、功能性脑磁共振图像和超声图像的实验结果,这些图像不适用现有的活动轮廓方法。最后讨论了所提出的最小化问题解的存在性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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