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ID 118693
Author
Zhou, Yuxiang Tokushima University
Lu, Huimin Kyushu Institute of Technology
Nakagawa, Satoshi The University of Tokyo
Keywords
U-Net
Dual attention
Attention gate
Depthwise separable convolution
Medical image segmentation
Content Type
Journal Article
Description
Automatic medical image segmentation method is highly needed to help experts in lesion segmentation. The deep learning technology emerging has profoundly driven the development of medical image segmentation. While U-Net and attention mechanisms are widely utilized in this field, the application of attention, albeit successful in natural scene image segmentation, tends to inflate the number of model parameters and neglects the potential for feature fusion between different convolutional layers. In response to these challenges, we present the Multi-Attention and Depthwise Separable Convolution U-Net (MDSU-Net), designed to enhance feature extraction. The multi-attention aspect of our framework integrates dual attention and attention gates, adeptly capturing rich contextual details and seamlessly fusing features across diverse convolutional layers. Additionally, our encoder integrates a depthwise separable convolution layer, streamlining the model’s complexity without sacrificing its efficacy, ensuring versatility across various segmentation tasks. The results demonstrate that our method outperforms state-of-the-art across three diverse medical image datasets.
Journal Title
Neurocomputing
ISSN
09252312
18728286
NCID
AA10827402
AA11540468
Publisher
Elsevier
Volume
564
Start Page
126970
Published Date
2023-10-29
Remark
論文本文は2025-10-29以降公開予定
Rights
© 2023. This manuscript version is made available under the CC-BY-NC-ND 4.0 license https://creativecommons.org/licenses/by-nc-nd/4.0/
EDB ID
DOI (Published Version)
URL ( Publisher's Version )
language
eng
TextVersion
その他
departments
Science and Technology
University Hospital