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Deformable Image Registration Based on Similarity-Steered CNN Regression

机译:基于相似性 - 转向的CNN回归的可变形图像配准

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Existing deformable registration methods require exhaustively iterative optimization, along with careful parameter tuning, to estimate the deformation field between images. Although some learning-based methods have been proposed for initiating deformation estimation, they are often template-specific and not flexible in practical use. In this paper, we propose a convolutional neural network (CNN) based regression model to directly learn the complex mapping from the input image pair (i.e., a pair of template and subject) to their corresponding deformation field. Specifically, our CNN architecture is designed in a patch-based manner to learn the complex mapping from the input patch pairs to their respective deformation field. First, the equalized active-points guided sampling strategy is introduced to facilitate accurate CNN model learning upon a limited image dataset. Then, the similarity-steered CNN architecture is designed, where we propose to add the auxiliary contextual cue, i.e., the similarity between input patches, to more directly guide the learning process. Experiments on different brain image datasets demonstrate promising registration performance based on our CNN model. Furthermore, it is found that the trained CNN model from one dataset can be successfully transferred to another dataset, although brain appearances across datasets are quite variable.
机译:现有的可变形注册方法需要令人遗憾地迭代优化,以及仔细参数调谐,以估计图像之间的变形场。虽然已经提出了一些基于学习的方法来启动变形估计,但它们通常在实际使用中通常具有模板和不灵活。在本文中,我们提出了一种基于卷积神经网络(CNN)的回归模型,直接从输入图像对(即,一对模板和主题)到它们对应的变形字段中的复杂映射。具体地,我们的CNN架构以基于补丁的方式设计,以从输入贴片对到它们各自的变形字段中的复杂映射。首先,引入了均衡的有源点引导采样策略,以便于在有限的图像数据集时准确的CNN模型学习。然后,设计了相似度转向的CNN架构,在那里我们建议添加辅助上下文提示,即输入补丁之间的相似性,更直接指导学习过程。基于我们的CNN模型,不同脑图像数据集的实验证明了有前途的登记性能。此外,发现来自一个数据集的训练的CNN模型可以成功转移到另一个数据集,但数据集的大脑出现非常可变。

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