In the field of multimodal segmentation, the correlation between different modalities can be considered for improving the segmentation results. Considering the correlation between different MR modalities, in this paper, we propose a multi-modality segmentation network guided by a novel tri-attention fusion. Our network includes N model-independent encoding paths with N image sources, a tri-attention fusion block, a dual-attention fusion block, and a decoding path. The model independent encoding paths can capture modality-specific features from the N modalities. Considering that not all the features extracted from the encoders are useful for segmentation, we propose to use dual attention based fusion to re-weight the features along the modality and space paths, which can suppress less informative features and emphasize the useful ones for each modality at different positions. Since there exists a strong correlation between different modalities, based on the dual attention fusion block, we propose a correlation attention module to form the tri-attention fusion block. In the correlation attention module, a correlation description block is first used to learn the correlation between modalities and then a constraint based on the correlation is used to guide the network to learn the latent correlated features which are more relevant for segmentation. Finally, the obtained fused feature representation is projected by the decoder to obtain the segmentation results. Our experiment results tested on BraTS 2018 dataset for brain tumor segmentation demonstrate the effectiveness of our proposed method.
翻译:在多式联运分割领域,可以考虑不同模式之间的相互关系来改进分解结果。考虑到不同MR模式之间的相互关系,我们在本文件中提议建立一个多模式分解网络,以创新的三用聚合为指导。我们的网络包括N图像源的N型独立编码路径,三用聚合块,双用聚合块,双用聚合块,和解码路径。示范独立编码路径可以捕捉N模式的具体模式特征。考虑到从编码器中提取的所有特征并非都对分解有用,我们建议使用基于双重关注的聚合来重新标定模式和空间路径的特征,这可以抑制信息较少的特点,并强调每种模式在不同位置的有用之处。由于不同模式之间有着很强的关联性,我们建议一个相关关注模块来形成三用聚合块。在拟议的注意模块中,首先使用一个相关描述块来了解模式之间的相互关系,然后根据关联性加以限制,我们建议使用基于双重关注的混合点来指导网络在模式和空间路径上重配配比,从而学习双向关系结构结构的预估测结果。最后,通过测试我们的双向导路路路路路路路段,以获得的预测结果。