中间变形图像配准通过窗口交叉相关。

Iman Aganj, Bruce Fischl
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引用次数: 0

摘要

在采用可变形图像配准的总体和纵向成像研究中,通过将可变形配准与仿射配准的结果初始化,可以获得更准确的结果,其中全局不对准已经大大减少。然而,这种仿射配准仅限于线性变换,不能解释大的非线性解剖变化,例如术前和术后图像之间或不同主体解剖结构之间的变化。在这项工作中,我们引入了一种新的中间可变形图像配准(IDIR)技术,该技术通过加窗互相关恢复大变形,并提供了一种基于快速傅里叶变换的有效实现。我们在2D x射线和3D磁共振图像上评估了我们的方法,证明了它在几次迭代内对齐大量非线性解剖变化的能力。
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Intermediate Deformable Image Registration via Windowed Cross-Correlation.

In population and longitudinal imaging studies that employ deformable image registration, more accurate results can be achieved by initializing deformable registration with the results of affine registration where global misalignments have been considerably reduced. Such affine registration, however, is limited to linear transformations and it cannot account for large nonlinear anatomical variations, such as those between pre- and post-operative images or across different subject anatomies. In this work, we introduce a new intermediate deformable image registration (IDIR) technique that recovers large deformations via windowed cross-correlation, and provide an efficient implementation based on the fast Fourier transform. We evaluate our method on 2D X-ray and 3D magnetic resonance images, demonstrating its ability to align substantial nonlinear anatomical variations within a few iterations.

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