Bonnassie A, Peyrin F, Attali D
CREATIS, CNRS Res. Unit, Villeurbanne, France.
IEEE Trans Syst Man Cybern B Cybern. 2003;33(4):700-5. doi: 10.1109/TSMCB.2003.814298.
In this paper, we propose a new approach based on three-dimensional (3-D) medial axis transformation for describing geometrical shapes in three-dimensional images. For 3-D-images, the medial axis, which is composed of both curves and medial surfaces, provides a simplified and reversible representation of structures. The purpose of this new method is to classify each voxel of the three-dimensional images in four classes: boundary, branching, regular and arc points. The classification is first performed on the voxels of the medial axis. It relies on the topological properties of a local region of interest around each voxel. The size of this region of interest is chosen as a function of the local thickness of the structure. Then, the reversibility of the medial axis is used to deduce a labeling of the whole object. The proposed method is evaluated on simulated images. Finally, we present an application of the method to the identification of bone structures from 3-D very high-resolution tomographic images.
在本文中,我们提出了一种基于三维(3-D)中轴变换的新方法,用于描述三维图像中的几何形状。对于三维图像,由曲线和中面组成的中轴提供了一种结构的简化且可逆的表示。这种新方法的目的是将三维图像的每个体素分类为四类:边界点、分支点、规则点和弧点。分类首先在中轴的体素上进行。它依赖于每个体素周围局部感兴趣区域的拓扑属性。该感兴趣区域的大小根据结构的局部厚度来选择。然后,利用中轴的可逆性来推导整个物体的标记。所提出的方法在模拟图像上进行了评估。最后,我们展示了该方法在从三维超高分辨率断层图像中识别骨骼结构方面的应用。