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논문 리스트

2023
SwinResNet: Swin Transformer와 ResNet 융합을 통한 Volumetric 의료 영상 분할
한국CDE학회
이재열 외 1명
논문정보
Publisher
한국CDE학회 논문집
Issue Date
2023-09-01
Keywords
-
Citation
-
Source
-
Journal Title
-
Volume
28
Number
3
Start Page
282
End Page
293
DOI
ISSN
25084003
Abstract
Volumetric medical image segmentation is critical in diagnosing diseases and planning subse- quent treatment. The convolutional neural network (CNN)-based U-Net was proposed for con- ducting accurate and robust medical image segmentation since the skip connection of U-Net and deep feature representation significantly improved its performance. However, since CNN-based models mainly focus on local and low-level features, they cannot extract global and high-level features effectively. Meanwhile, the Vision Transformer developed in natural language process- ing is proposed to improve image classification performance by splitting an input image into patches and conducting linear embeddings of the patches, which can extract global features. However, the Vision Transformer has difficulty in handling detailed and low-level features. This study proposes SwinResNet which can effectively conduct volumetric medical image segmenta- tion by fusing the Swin Transformer and CNN models. The combination can take advantage of both models and complement each other. Swin Transformer and ResNet are used as encoders, and the receptive field blocks and aggregation modules are applied to the multi-level features extracted from both encoders. Comprehensive evaluation shows that the proposed approach out- ...

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