基于水平集的医学图像序列分割新方法

Xujia Qin, Suqiong Zhang
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引用次数: 5

摘要

图像分割是医学图像处理中的关键问题之一。基于曲线演化理论和偏微分方程理论的水平集方法在医学图像分割中得到了广泛的应用。水平集方法可以有效地处理拓扑变化。本文分别在测地线活动轮廓(GAC)模型和C_V模型中加入惩罚能量,完全消除了重新初始化的过程。然后,在C_V模型中加入一项边界信息,将区域信息和梯度信息结合在一起,实现更好的分割。本文所实现的医学图像序列分割是后续医学图像三维重建的必要准备。所得结果显示出良好的分割性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New medical image sequences segmentation based on level set method
Image segmentation is one of the key problems in medical image processing. The level set method based on curves evolving theory and partial differential equation theory is widely applied in the segmentation of medical image. The level set method can handle topology changes effectively. In this paper, a penalized energy is added into the geodesic active contour (GAC) model and the C_V model respectively to eliminate the re-initialization procedure completely. Then, a term of boundary information is added into the C_V model to incorporate regional and gradient information together for better segmentation. The segmentation for medical image sequence which is implemented in this paper is the necessary preparation for 3D reconstruction later on. The obtained results have shown desirable segmentation performance.
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