Székely G, Kelemen A, Brechbühler C, Gerig G
Communication Technology Laboratory, ETH-Zentrum, Zurich, Switzerland.
Med Image Anal. 1996 Mar;1(1):19-34. doi: 10.1016/s1361-8415(01)80003-7.
This paper describes a new model-based segmentation technique combining desirable properties of physical models (snakes), shape representation by Fourier parametrization, and modelling of natural shape variability. Flexible parametric shape models are represented by a parameter vector describing the mean contour and by a set of eigenmodes of the parameters characterizing the shape variation. Usually the segmentation process is divided into an initial placement of the mean model and an elastic deformation restricted to the model variability. This, however leads to a separation of biological variation due to a global similarity transform from small-scale shape changes originating from elastic deformations of the normalized model contours only. The performance can be considerably improved by building shape models normalized with respect to a small set of stable landmarks (AC-PC in our application) and by explaining the remaining variability among a series of images with the model flexibility. This way the image interpretation is solved by a new coarse-to-fine segmentation procedure based on the set of deformation eigenmodes, making a separate initialization step unnecessary. Although straightforward, the extension to 3-D is severely impeded by difficulties arising during the generation of a proper surface parametrization for arbitrary objects with spherical topology. We apply a newly developed surface parametrization which achieves a uniform mapping between object surface and parameter space. The 3-D procedure is demonstrated by segmenting deep structures of the human brain from MR volume data.
本文描述了一种基于模型的新分割技术,该技术结合了物理模型(蛇形模型)的理想特性、通过傅里叶参数化进行形状表示以及对自然形状变异性的建模。灵活的参数化形状模型由描述平均轮廓的参数向量和一组表征形状变化的参数特征模态表示。通常,分割过程分为平均模型的初始放置和限于模型变异性的弹性变形。然而,这导致了由于全局相似变换引起的生物变异与仅源于归一化模型轮廓弹性变形的小尺度形状变化的分离。通过构建相对于一小组稳定地标(在我们的应用中为前连合-后连合)归一化的形状模型,并利用模型灵活性解释一系列图像之间的剩余变异性,可以显著提高性能。通过基于变形特征模态集的新的粗到细分割过程解决图像解释问题,无需单独的初始化步骤。尽管很直接,但向三维的扩展受到为具有球形拓扑的任意物体生成适当表面参数化过程中出现的困难的严重阻碍。我们应用了一种新开发的表面参数化方法,该方法在物体表面和参数空间之间实现了均匀映射。通过从磁共振体积数据中分割人脑深部结构来演示三维过程。