首页> 外文会议>2012 IEEE Workshop on Mathematical Methods in Biomedical Image Analysis >Registration of unseen images based on the generative manifold modeling of variations of appearance and anatomical shape in brain population
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Registration of unseen images based on the generative manifold modeling of variations of appearance and anatomical shape in brain population

机译:基于生成的歧管模型对大脑人群的外观和解剖形状变化进行生成的未见图像配准

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In this paper we propose a method to register a pair of images unseen to the original dataset based on a generative manifold model. The basic premise of this approach is to design an image distance metric using a weighted sum of similarity and smoothness terms derived from a diffeomorphic registration of pairwise images. A refined image distance matrix based on this metric can be adopted as an input for nonlinear dimensionality reduction of the dataset, and the learned manifold can be approximated to simultaneously reflect the variations of appearance and anatomical shape. The generative manifold model that combines the image distance measurement and the manifold learning technique is used to estimate the geodesic path via the unseen pair for composition of the final deformation field. The experimental result of a set of real 3D mouse brain volumes demonstrates that the estimated manifold coordinates appropriately reflect the trend in the original dataset and that the registration of unseen images using the shortest path inferred from the generative manifold model improves the result against the direct registration.
机译:在本文中,我们提出了一种基于生成流形模型来注册原始数据集中看不见的图像对的方法。该方法的基本前提是使用从成对图像的微分配准导出的相似度和平滑度项的加权和来设计图像距离度量。可以采用基于该度量的精炼图像距离矩阵作为数据集非线性降维的输入,并且可以近似学习的流形以同时反映外观和解剖形状的变化。将图像距离测量和流形学习技术相结合的生成流形模型用于通过看不见的线对估计测地路径,以构成最终形变场。一组真实3D小鼠大脑体积的实验结果表明,估计的流形坐标适当地反映了原始数据集中的趋势,并且使用从生成的流形模型推断出的最短路径对看不见的图像进行配准会改善针对直接配准的结果。

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