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Cross-Modal Attention-Guided Convolutional Network for Multi-modal Cardiac Segmentation

机译:跨模态注意力引导卷积网络用于多模态心脏分割

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To leverage the correlated information between modalities to benefit the cross-modal segmentation, we propose a novel cross-modal attention-guided convolutional network for multi-modal cardiac segmentation. In particular, we first employed the cycle-consistency generative adversarial networks to complete the bidirectional image generation (i.e., MR to CT, CT to MR) to help reduce the modal-level inconsistency. Then, with the generated and original MR and CT images, a novel convolutional network is proposed where (1) two encoders learn individual features separately and (2) a common decoder learns shareable features between modalities for a final consistent segmentation. Also, we propose a cross-modal attention module between the encoders and decoder in order to leverage the correlated information between modalities. Our model can be trained in an end-to-end manner. With extensive evaluation on the unpaired CT and MR cardiac images, our method outperforms the baselines in terms of the segmentation performance.
机译:为了利用模态之间的相关信息以有利于交叉模态分割,我们提出了一种用于多模态心脏分割的新型交叉模态注意力引导卷积网络。特别是,我们首先采用周期一致性生成对抗网络来完成双向图像生成(即MR到CT,CT到MR),以帮助减少模态级别的不一致。然后,利用生成的原始MR和CT图像,提出了一种新颖的卷积网络,其中(1)两个编码器分别学习单个特征,(2)通用解码器学习模态之间的可共享特征,以进行最终的一致分割。另外,我们提出了一种在编码器和解码器之间的跨模态注意模块,以利用模态之间的相关信息。我们的模型可以以端到端的方式进行训练。通过对未配对的CT和MR心脏图像进行广泛评估,我们的方法在分割性能方面优于基线。

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