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Local joint entropy based non-rigid multimodality image registration

机译:基于局部联合熵的非刚性多模态图像配准

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摘要

Variational-based image registration is an important research topic in the field of pattern recognition. Classical models for this task usually use mutual information to measure the similarity of the images to be aligned. Although these models can generate good registration results for rigid deformation, they do not perform well for non-rigid registration because of the complexity of local deformation. In this paper, we propose a novel model to solve the problem of non-rigid registration of multimodality images. In the model, the local joint entropy is introduced to measure the similarity of the images to be aligned, and the weighted Horn-type regularizer is used to protect the displacement field to be estimated from over-smoothing. The proposed model has the advantage of aligning local edges of noise-free images better than the model based on mutual information and total variation, and the free-form deformation model. Furthermore, the proposed weighted regularizer is more robust than the classical total variation regularizer and the Horn-type regularizer in the alignment of noisy images. By using the alternative minimization method, we design a fast iteration algorithm to solve our model. Numerical results show the promising performance of our registration method.
机译:基于变分的图像配准是模式识别领域的重要研究课题。用于此任务的经典模型通常使用互信息来测量要对齐的图像的相似性。尽管这些模型可以为刚性变形生成良好的配准结果,但由于局部变形的复杂性,它们在非刚性配准中效果不佳。在本文中,我们提出了一种新颖的模型来解决多模态图像的非刚性配准问题。在该模型中,引入局部联合熵来测量要对准的图像的相似度,并且使用加权的Horn型正则化器来保护要估计的位移场免受过度平滑的影响。与基于互信息和总变化的模型以及自由变形模型相比,所提出的模型具有使无噪声图像的局部边缘对齐更好的优点。此外,在噪声图像的对准中,所提出的加权正则器比经典的总变化正则器和霍恩型正则器更健壮。通过使用替代的最小化方法,我们设计了一种快速迭代算法来求解模型。数值结果表明我们的配准方法具有良好的性能。

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