树形图切割用于脑MRI分割

R. Fang, Yu-hsin Joyce Chen, R. Zabih, Tsuhan Chen
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引用次数: 8

摘要

本文采用一种新的图像分割算法——树度量图切算法(TM)来解决脑MRI图像分割问题,并引入一种“树切”方法,将TM算法返回的标记解释为输入脑MRI图像的组织分类。该方法分为三个步骤:1)预处理,生成标签树作为TM算法的输入;2)对TM算法进行扫描,该算法相对于标签树返回全局最优标签;3)后处理,包括运行“树切割”方法,生成从标签到组织类别(GM, WM, CSF)的映射,产生有意义的脑MRI分割。TM算法在一次扫描中生成树指标的全局最优标记,与传统方法(如EMS和em风格的地理切割)不同,传统方法迭代期望最大化算法以找到隐藏模式,并仅生成局部最优标记。当与“树切割”方法一起使用时,TM算法产生的脑MRI分割效果与SPM8使用的统一分割算法一样好,使用的先验要弱得多。与现有方法的比较表明,我们的方法速度更快,整体分割精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tree-metrics graph cuts for brain MRI segmentation with tree cutting
We tackle the problem of brain MRI image segmentation using the tree-metric graph cuts (TM) algorithm, a novel image segmentation algorithm, and introduce a “tree-cutting” method to interpret the labeling returned by the TM algorithm as tissue classification for the input brain MRI image. The approach has three steps: 1) pre-processing, which generates a tree of labels as input to the TM algorithm; 2) a sweep of the TM algorithm, which returns a globally optimal labeling with respect to the tree of labels; 3) post-processing, which involves running the “tree-cutting” method to generate a mapping from labels to tissue classes (GM, WM, CSF), producing a meaningful brain MRI segmentation. The TM algorithm produces a globally optimal labeling on tree metrics in one sweep, unlike conventional methods such as EMS and EM-style geo-cuts, which iterate the expectation maximization algorithm to find hidden patterns and produce only locally optimal labelings. When used with the “tree-cutting” method, the TM algorithm produces brain MRI segmentations that are as good as the Unified Segmentation algorithm used by SPM8, using a much weaker prior. Comparison with the current approaches shows that our method is faster and that our overall segmentation accuracy is better.
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