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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Non-rigid image registration of brain magnetic resonance images using graph-cuts
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Non-rigid image registration of brain magnetic resonance images using graph-cuts

机译:使用图割的大脑磁共振图像的非刚性图像配准

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摘要

We present a graph-cuts based method for non-rigid medical image registration on brain magnetic resonance images. In this paper, the non-rigid medical image registration problem is reformulated as a discrete labeling problem. Based on a voxel-to-voxel intensity similarity measure, each voxel in the source image is assigned a displacement label, which represents a displacement vector indicating which position in the floating image it is spatially corresponding to. In the proposed method, a smoothness constraint based on the first derivative is used to penalize sharp changes in the adjacent displacement labels across voxels. The image registration problem is therefore modeled by two energy terms based on intensity similarity and smoothness of the displacement field. These energy terms are submodular and can be optimized by using the graph-cuts method via αexpansions, which is a powerful combinatorial optimization tool and capable of yielding either a global minimum or a local minimum in a strong sense. Using the realistic brain phantoms obtained from the Simulated Brain Database, we compare the registration results of the proposed method with two state-of-the-art medical image registration approaches: free-form deformation based method and demons method. In addition, the registration results are also compared with that of the linear programming based image registration method. It is found that the proposed method is more robust against different challenging non-rigid registration cases with consistently higher registration accuracy than those three methods, and gives realistic recovered deformation fields.
机译:我们提出了一种基于图割的脑磁共振图像上非刚性医学图像配准的方法。在本文中,非刚性医学图像配准问题被重新表述为离散标签问题。基于体素到体素的强度相似性度量,为源图像中的每个体素分配一个位移标签,该位移标签代表一个位移矢量,该位移矢量指示该浮动图像在空间上对应于哪个位置。在提出的方法中,基于一阶导数的平滑度约束用于惩罚跨体素的相邻位移标签中的急剧变化。因此,基于强度相似度和位移场的平滑度,通过两个能量项对图像配准问题进行建模。这些能量项是亚模的,可以通过α-扩展使用图割方法进行优化,这是一个功能强大的组合优化工具,能够产生强烈意义上的全局最小值或局部最小值。使用从“模拟脑部数据库”中获得的逼真的脑部幻影,我们将所提出的方法的配准结果与两种最新的医学图像配准方法进行了比较:基于自由变形的方法和恶魔方法。另外,还将配准结果与基于线性编程的图像配准方法的配准结果进行比较。发现所提出的方法比三种方法对不同挑战性非刚性配准情况具有更高的配准精度,并且具有始终如一的更高的配准精度,并且能够给出实际的恢复变形场。

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