CCFNet:用于医学图像分割的协作交叉融合网络

Algorithms Pub Date : 2024-04-21 DOI:10.3390/a17040168
Jialu Chen, Baohua Yuan
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引用次数: 0

摘要

Transformer 架构已在图像分割领域获得广泛认可。然而,它牺牲了局部特征细节,并且需要大量数据进行训练,这给将其集成到计算机辅助医学图像分割中带来了挑战。为应对上述挑战,我们引入了交叉融合协作网络 CCFNet,该网络可持续交互融合 CNN 和 Transformer,以利用上下文依赖关系。特别是,当将 CNN 特征整合到 Transformer 时,局部标记和全局标记之间的相关性会通过协作自注意融合进行自适应融合,以尽量减少这两类特征之间的语义差异。在将 Transformer 特征集成到 CNN 时,它使用空间特征注入器来减少由于提取特征的不对称而造成的特征间的空间信息差距。此外,CCFNet 实现了 Transformer 和 CNN 的并行操作,并在有效聚合不同特征时独立编码分层的全局和局部表征,从而保留了全局表征和局部特征。两个公开医学图像分割数据集的实验结果表明,与目前最先进的方法相比,我们的方法表现出了极具竞争力的性能。
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CCFNet: Collaborative Cross-Fusion Network for Medical Image Segmentation
The Transformer architecture has gained widespread acceptance in image segmentation. However, it sacrifices local feature details and necessitates extensive data for training, posing challenges to its integration into computer-aided medical image segmentation. To address the above challenges, we introduce CCFNet, a collaborative cross-fusion network, which continuously fuses a CNN and Transformer interactively to exploit context dependencies. In particular, when integrating CNN features into Transformer, the correlations between local and global tokens are adaptively fused through collaborative self-attention fusion to minimize the semantic disparity between these two types of features. When integrating Transformer features into the CNN, it uses the spatial feature injector to reduce the spatial information gap between features due to the asymmetry of the extracted features. In addition, CCFNet implements the parallel operation of Transformer and the CNN and independently encodes hierarchical global and local representations when effectively aggregating different features, which can preserve global representations and local features. The experimental findings from two public medical image segmentation datasets reveal that our approach exhibits competitive performance in comparison to current state-of-the-art methods.
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