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Unsupervised Three-Dimensional Image Registration Using a Cycle Convolutional Neural Network

机译:使用循环卷积神经网络的无监督三维图像配准

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In this paper, an unsupervised cycle image registration convolutional neural network named CIRNet is developed for 3D medical image registration. Different from most deep learning based registration methods that require known spatial transforms, our proposed method is trained in an unsupervised way and predicts the dense displacement vector field. The CIRNet is composed by two image registration modules which have the same architecture and share the parameters. A cycle identical loss is designed in the CIRNet to provide additional constraints to ensure the accuracy of the predicted dense displacement vector field. The method is evaluated by the registration in 4D (3D+t) cardiac CT and MRI images respectively. Quantitative evaluation results demonstrate that our method performs better than the other two existing image registration algorithms. Especially, compared to the traditional image registration methods, our proposed network can finish 3D image registration in less than one second.
机译:在本文中,开发了一种名为CIRNet的无监督循环图像配准卷积神经网络,用于3D医学图像配准。与大多数需要已知空间变换的基于深度学习的注册方法不同,我们提出的方法以无监督的方式进行训练,并预测密集位移矢量场。 CIRNet由两个具有相同架构并共享参数的图像配准模块组成。在CIRNet中设计了一个周期相同的损耗,以提供其他约束条件,以确保预测的密集位移矢量场的准确性。通过分别在4D(3D + t)心脏CT和MRI图像中进行配准来评估该方法。定量评估结果表明,我们的方法比其他两种现有的图像配准算法性能更好。特别是,与传统的图像配准方法相比,我们提出的网络可以在不到一秒钟的时间内完成3D图像配准。

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