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Convex hull matching and hierarchical decomposition for multimodality medical image registration

机译:凸包匹配和层次分解用于多模态医学图像配准

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摘要

This study proposes a novel hierarchical pyramid strategy for 3D registration of multimodality medical images. The surfaces of the source and target volume data are first extracted, and the surface point clouds are then aligned roughly using convex hull matching. The convex hull matching registration procedure could align images with large-scale transformations. The original images are divided into blocks and the corresponding blocks in the two images are registered by affine and non-rigid registration procedures. The sub-blocks are iteratively smoothed by the Gaussian kernel with different sizes during the registration procedure. The registration result of the large kernel is taken as the input of the small kernel registration. The fine registration of the two volume data sets is achieved by iteratively increasing the number of blocks, in which increase in similarity measure is taken as a criterion for acceptation of each iteration level. Results demonstrate the effectiveness and robustness of the proposed method in registering the multiple modalities of medical images.
机译:这项研究为多模态医学图像的3D注册提出了一种新颖的分层金字塔策略。首先提取源和目标体积数据的表面,然后使用凸包匹配将表面点云粗略对齐。凸包匹配配准过程可以使图像进行大规模变换。原始图像分为多个块,两个图像中的相应块通过仿射和非刚性配准过程配准。在注册过程中,子块由具有不同大小的高斯内核迭代平滑。大内核的注册结果作为小内核注册的输入。通过迭代增加块数来实现两个体数据集的精细配准,其中将相似性度量的提高作为接受每个迭代级别的标准。结果证明了该方法在配准医学图像多种方式中的有效性和鲁棒性。

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