Abstract

In the past few years, convolutional neural networks (CNNs) have achieved milestones in medical image analysis. Especially, the deep neural networks based on U-shaped architecture and skip-connections have been widely applied in a variety of medical image tasks. However, although CNN has achieved excellent performance, it cannot learn global and long-range semantic information interaction well due to the locality of the convolution operation. In this paper, we propose Swin-Unet, which is an Unet-like pure Transformer for medical image segmentation. The tokenized image patches are fed into the Transformer-based U-shaped Encoder-Decoder architecture with skip-connections for local-global semantic feature learning. Specifically, we use hierarchical Swin Transformer with shifted windows as the encoder to extract context features. And a symmetric Swin Transformer-based decoder with patch expanding layer is designed to perform the up-sampling operation to restore the spatial resolution of the feature maps. Under the direct down-sampling and up-sampling of the inputs and outputs by 4x, experiments on multi-organ and cardiac segmentation tasks demonstrate that the pure Transformer-based U-shaped Encoder-Decoder network outperforms those methods with full-convolution or the combination of transformer and convolution. The codes and trained models will be publicly available at https://github.com/HuCaoFighting/Swin-Unet.

Keywords

Computer scienceEncoderTransformerConvolutional neural networkArtificial intelligenceSegmentationDeep learningImage segmentationPattern recognition (psychology)Computer visionVoltage

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Publication Info

Year
2023
Type
book-chapter
Pages
205-218
Citations
2757
Access
Closed

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2757
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Cite This

Hu Cao, Yueyue Wang, Joy Chen et al. (2023). Swin-Unet: Unet-Like Pure Transformer for Medical Image Segmentation. Lecture notes in computer science , 205-218. https://doi.org/10.1007/978-3-031-25066-8_9

Identifiers

DOI
10.1007/978-3-031-25066-8_9
PMID
41357951
PMCID
PMC12678682
arXiv
2105.05537

Data Quality

Data completeness: 79%