TransUNet Medical Image Segmentation Model with Multi-attention Fusion
Author:
  • Article
  • | |
  • Metrics
  • |
  • Reference
  • |
  • Related
  • |
  • Cited by
  • | |
  • Comments
    Abstract:

    Accurate identification of tissues, organs, and lesion regions is one of the most important tasks in medical image analysis. Models based on the U-Net structure dominate the existing research on semantic segmentation of medical images. Combining the advantages of CNN and Transformer, TransUNet has superiority in capturing long-range dependencies and extracting local features, but it is still not accurate enough in extracting and recovering the locations of features. To address this problem, a medical image segmentation model MAF-TransUNet with a multi-attention fusion mechanism is proposed. The model first adds a multi-attention fusion module (MAF) before the Transformer layer to enhance the representation of location information. Then it combines the MAF again in the hopping connection so that the location information can be efficiently transmitted to the decoder side. Finally, the deep convolutional attention module (DCA) is used in the decoding stage to retain more spatial information. The experimental results show that MAF-TransUNet improves the Dice coefficients on the Synapse multi-organ segmentation dataset and ACDC automated cardiac diagnostic dataset by 3.54% and 0.88%, respectively, compared with TransUNet.

    Reference
    Related
    Cited by
Get Citation

赵亮,赵雨祺,金海波.多注意力融合的TransUNet医学影像分割模型.计算机系统应用,,():1-13

Copy
Share
Article Metrics
  • Abstract:
  • PDF:
  • HTML:
  • Cited by:
History
  • Received:October 22,2024
  • Revised:November 12,2024
  • Online: March 24,2025
Article QR Code
You are the first991371Visitors
Copyright: Institute of Software, Chinese Academy of Sciences Beijing ICP No. 05046678-3
Address:4# South Fourth Street, Zhongguancun,Haidian, Beijing,Postal Code:100190
Phone:010-62661041 Fax: Email:csa (a) iscas.ac.cn
Technical Support:Beijing Qinyun Technology Development Co., Ltd.

Beijing Public Network Security No. 11040202500063