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A contextual maximum likelihood framework for modeling image registration

机译:用于图像配准建模的上下文最大似然框架

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摘要

We introduce a novel probabilistic framework for image registration. This framework considers, in contrast to previous ones, local neighborhood information. We integrate the neighborhood information into the framework by adding layers of latent random variables, characterizing the descriptive information of each image. This extension has multiple advantages. It allows for a unified description of geometric and iconic registration, with the consequential analysis of similarities. It enables to arrange registration techniques in a continuum, limited by pure intensity-and feature-based registration. With this wide spectrum of techniques combined, we can model hybrid registration approaches. The probabilistic coupling allows further to deduce optimal descriptors and to model the adaptation of description layers during the process, as it is done for joint registration/segmentation. Finally, we deduce a new registration algorithm that allows for a dynamic adaptation of the description layers during the registration. Excellent results confirm the advantages of the new registration method, the major contribution of this article lies, however, in the theoretical analysis.
机译:我们介绍了一种新颖的概率图像配准框架。与以前的框架相比,此框架考虑了本地邻居信息。我们通过添加潜在的随机变量层来表征各个图像的描述性信息,从而将邻域信息集成到框架中。此扩展具有多个优点。它允许对几何和图标配准进行统一描述,并进行相似性分析。它使连续排列注册技术成为可能,受纯强度和基于特征的注册限制。结合广泛的技术,我们可以对混合注册方法进行建模。概率耦合允许进一步推导最佳描述符,并在此过程中对描述层的适应进行建模,因为这是针对联合配准/细分完成的。最后,我们推导了一种新的注册算法,该算法允许在注册过程中动态调整描述层。优异的结果证实了这种新注册方法的优势,但是本文的主要贡献在于理论分析。

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