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Point similarity measures for non-rigid registration of multi-modal data

机译:非刚性注册多模态数据的点相似性度量

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摘要

High-dimensional non-rigid registration of multi-modal data requires similarity measures with two important properties: multi-modality and locality. Unfortunately all commonly used multi-modal similarity measures are inherently global and cannot operate on small image regions. In this paper, we propose a new class of multi-modal similarity measures, which are constructed from information of the whole images but can be applied pointwise. Due to their capability of measuring correspondence for individual image points we call them point similarity measures. Point similarity measures can be derived from global measures and enable detailed relative comparison of local image correspondence. We present a set of multi-modal point similarity measures based on joint intensity distribution and test them as an integral part of non-rigid multi-modal registration system. The comparison results show that segmentation-based measure, which models the joint distribution as a sum of intensity classes, performs best. When intensity classes do not exist or cannot be accurately modeled, each intensity pair can be treated as a separate class, which results in a more general measure, suitable for various non-rigid registration tasks.
机译:多模态数据的高维非刚性配准需要具有两个重要属性的相似性度量:多模态和局部性。不幸的是,所有常用的多模式相似性度量本质上都是全局的,无法在较小的图像区域上运行。在本文中,我们提出了一类新的多模式相似性度量,该度量是从整个图像的信息构建的,但是可以逐点应用。由于它们能够测量单个图像点的对应性,因此我们将它们称为点相似性度量。点相似性度量可以从全局度量中得出,并且可以对局部图像对应进行详细的相对比较。我们提出了一套基于联合强度分布的多模态点相似性度量,并将其作为非刚性多模态配准系统的组成部分进行测试。比较结果表明,基于分割的度量将关节分布建模为强度等级之和,效果最好。当强度等级不存在或无法准确建模时,可以将每个强度对视为一个单独的等级,这会产生更通用的度量,适用于各种非刚性注册任务。

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