Abstract

Deformable medical image registration refers to finding a certain transformation so that the corresponding points of two medical images can be aligned in space. This has important clinical applications. In this article, we propose an unsupervised end-to-end medical image registration method. In this method, the fixed image and the moving image are concatenated in series and input into the convolution neural network to obtain the feature images of different scales. In order to improve the ability of neural network to capture global and local information, we fuse feature maps of different scales. The spatial transformation network uses the deformation field to deform the moving image, so as to realize the registration of the two pairs. We validate our method in the ABIDE data set and compare it with some classic state-of-the-art methods. The experimental results show that our method improves the registration accuracy of image pairs.

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