FocalTransNet:用于医学图像分割的混合焦点增强变压器网络

IF 13.7
Miao Liao;Ruixin Yang;Yuqian Zhao;Wei Liang;Junsong Yuan
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引用次数: 0

摘要

cnn在医学图像分割中表现出优异的性能。为了克服仅使用局部接受场的限制,以前的工作试图将变压器集成到卷积网络组件中,如编码器、解码器或跳过连接。然而,这些方法只能对某些特定的模式建立远距离依赖关系,在多尺度特征提取中往往忽略了下采样过程中细粒度细节的丢失。为了解决这些问题,我们提出了一种新的混合变压器网络,称为FocalTransNet。具体来说,我们通过在CNN-Transformer双路结构中引入密集交叉连接来构建一个焦点增强(FE) Transformer模块,并将FE Transformer部署在整个编码器中。与现有采用嵌入或叠加策略的混合网络不同,该模型允许在不同尺度上对局部和全局特征进行综合提取和深度融合。此外,我们还提出了对称补丁合并(SPM)下采样模块,该模块通过建立特定的信息补偿机制来保留细粒度细节。我们在四种不同的医学图像分割基准上评估了所提出的方法。所提出的方法优于先前最先进的卷积网络,变压器和混合网络。FocalTransNet的代码可在https://github.com/nemanjajoe/FocalTransNet上公开获取
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FocalTransNet: A Hybrid Focal-Enhanced Transformer Network for Medical Image Segmentation
CNNs have demonstrated superior performance in medical image segmentation. To overcome the limitation of only using local receptive field, previous work has attempted to integrate Transformers into convolutional network components such as encoders, decoders, or skip connections. However, these methods can only establish long-distance dependencies for some specific patterns and usually neglect the loss of fine-grained details during downsampling in multi-scale feature extraction. To address the issues, we present a novel hybrid Transformer network called FocalTransNet. Specifically, we construct a focal-enhanced (FE) Transformer module by introducing dense cross-connections into a CNN-Transformer dual-path structure and deploy the FE Transformer throughout the entire encoder. Different from existing hybrid networks that employ embedding or stacking strategies, the proposed model allows for a comprehensive extraction and deep fusion of both local and global features at different scales. Besides, we propose a symmetric patch merging (SPM) module for downsampling, which can retain the fine-grained details by establishing a specific information compensation mechanism. We evaluated the proposed method on four different medical image segmentation benchmarks. The proposed method outperforms previous state-of-the-art convolutional networks, Transformers, and hybrid networks. The code for FocalTransNet is publicly available at https://github.com/nemanjajoe/FocalTransNet
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