Multi-modal medical image registration based on non-rigid transformations and feature point extraction by using wavelets

R. Rosas-Romero, J. Rodríguez-Asomoza, V. Alarcón-Aquino, D. Baez-López
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引用次数: 4

Abstract

In order to correctly match two sets of images from different modalities, our method applies a non-rigid transformation to one set to get as close as possible to the other. This requires the estimation of the optimal similarity transformation between the two set of images. Estimation of the non-rigid deformation between the two sets of images is referred to as the deformation estimation between the pair of three-dimensional object extracted from both sets. We present a new methodology for image registration by first extracting objects from the set of images by reconstructing the object surfaces where this extraction supports semi-automatic segmentation of sets of 3-D medical images and then finding the best similarity transformation based on matching of two sets of surface points, but also incorporates the matching of two sets of feature points, and we have shown that deformation estimates based on simultaneous matching of surfaces and features are more accurate than those based on surface matching alone. This is especially true when the deformation involves physically realistic cases, such as those in human organs. Our technique uses free-form deformation models and applies the wavelet transform to extract feature points in the 3-D space. Feature point extraction also provides a means to compute the error in our estimates. We have applied our method to register sequences of MRI images to histology images of the carotid artery.
基于非刚性变换和小波特征点提取的多模态医学图像配准
为了正确匹配来自不同模态的两组图像,我们的方法对一组图像进行非刚性变换,使其尽可能接近另一组图像。这需要估计两组图像之间的最优相似变换。两组图像之间的非刚性变形估计称为从两组图像中提取的对三维物体之间的变形估计。我们提出了一种新的图像配准方法,首先通过重建物体表面来从图像集中提取物体,该方法支持三维医学图像集的半自动分割,然后基于两组表面点的匹配找到最佳相似变换,同时还结合了两组特征点的匹配。我们已经证明,基于表面和特征同时匹配的变形估计比单独基于表面匹配的变形估计更准确。当变形涉及到物理上真实的情况时尤其如此,比如人体器官的变形。我们的技术使用自由变形模型,并应用小波变换在三维空间中提取特征点。特征点提取还提供了一种计算估计误差的方法。我们已经应用我们的方法注册序列的MRI图像的组织学图像的颈动脉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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