Metric Learning for Image Registration.

Marc Niethammer, Roland Kwitt, François-Xavier Vialard
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引用次数: 0

Abstract

Image registration is a key technique in medical image analysis to estimate deformations between image pairs. A good deformation model is important for high-quality estimates. However, most existing approaches use ad-hoc deformation models chosen for mathematical convenience rather than to capture observed data variation. Recent deep learning approaches learn deformation models directly from data. However, they provide limited control over the spatial regularity of transformations. Instead of learning the entire registration approach, we learn a spatially-adaptive regularizer within a registration model. This allows controlling the desired level of regularity and preserving structural properties of a registration model. For example, diffeomorphic transformations can be attained. Our approach is a radical departure from existing deep learning approaches to image registration by embedding a deep learning model in an optimization-based registration algorithm to parameterize and data-adapt the registration model itself. Source code is publicly-available at https://github.com/uncbiag/registration.

Abstract Image

Abstract Image

Abstract Image

图像注册的度量学习
图像配准是医学图像分析中估算图像对之间变形的一项关键技术。一个好的形变模型对于高质量的估计非常重要。然而,大多数现有方法使用的是为了数学方便而临时选择的变形模型,而不是捕捉观察到的数据变化。最近的深度学习方法直接从数据中学习形变模型。然而,这些方法对变换的空间规则性控制有限。我们不学习整个配准方法,而是在配准模型中学习空间适应性正则化器。这样既能控制所需的规则性水平,又能保留注册模型的结构属性。例如,可以实现差分变换。通过在基于优化的配准算法中嵌入深度学习模型,对配准模型本身进行参数化和数据适配,我们的方法与现有的图像配准深度学习方法截然不同。源代码可通过 https://github.com/uncbiag/registration 公开获取。
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CiteScore
43.50
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