Dept. of Electr. Eng., Pennsylvania State Univ., University Park, PA.
IEEE Trans Med Imaging. 1993;12(3):439-50. doi: 10.1109/42.241871.
Many three-dimensional (3-D) medical images have lower resolution in the z direction than in the x or y directions. Before extracting and displaying objects in such images, an interpolated 3-D gray-scale image is usually generated via a technique such as linear interpolation to fill in the missing slices. Unfortunately, when objects are extracted and displayed from the interpolated image, they often exhibit a blocky and generally unsatisfactory appearance, a problem that is particularly acute for thin treelike structures such as the coronary arteries. Two methods for shape-based interpolation that offer an improvement to linear interpolation are presented. In shape-based interpolation, the object of interest is first segmented (extracted) from the initial 3-D image to produce a low-z-resolution binary-valued image, and the segmented image is interpolated to produce a high-resolution binary-valued 3-D image. The first method incorporates geometrical constraints and takes as input a segmented version of the original 3-D image. The second method builds on the first in that it also uses the original gray-scale image as a second input. Tests with 3-D images of the coronary arterial tree demonstrate the efficacy of the methods.
许多三维(3-D)医学图像在 z 方向上的分辨率低于 x 或 y 方向。在提取和显示此类图像中的对象之前,通常通过线性插值等技术生成插值的 3-D 灰度图像来填充丢失的切片。不幸的是,当从插值图像中提取和显示对象时,它们通常会呈现出块状且通常令人不满意的外观,对于诸如冠状动脉之类的薄树状结构,这个问题尤为严重。本文提出了两种基于形状的插值方法,它们可以改善线性插值。在基于形状的插值中,首先从初始 3-D 图像中分割(提取)感兴趣的对象,以生成低 z 分辨率的二进制值图像,然后对分割图像进行插值以生成高分辨率的二进制值 3-D 图像。第一种方法结合了几何约束,并以原始 3-D 图像的分割版本作为输入。第二种方法建立在第一种方法的基础上,它还将原始灰度图像作为第二个输入。对冠状动脉树的 3-D 图像进行的测试证明了这些方法的有效性。