Vol. 17, No. 9, September 30, 2023
10.3837/tiis.2023.09.009,
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Abstract
Medical image segmentation techniques based on convolution neural networks indulge in
feature extraction triggering redundancy of parameters and unsatisfactory target localization,
which outcomes in less accurate segmentation results to assist doctors in diagnosis. In this
paper, we propose a multi-level semantic-rich encoding-decoding network, which consists of
a Pooling-Conv-Former (PCFormer) module and a Cbam-Dilated-Transformer (CDT)
module. In the PCFormer module, it is used to tackle the issue of parameter explosion in the
conservative transformer and to compensate for the feature loss in the down-sampling
process. In the CDT module, the Cbam attention module is adopted to highlight the feature
regions by blending the intersection of attention mechanisms implicitly, and the Dilated
convolution-Concat (DCC) module is designed as a parallel concatenation of multiple atrous
convolution blocks to display the expanded perceptual field explicitly. In addition, MultiHead Attention-DwConv-Transformer (MDTransformer) module is utilized to evidently
distinguish the target region from the background region. Extensive experiments on medical
image segmentation from Glas, SIIM-ACR, ISIC and LGG demonstrated that our proposed
network outperforms existing advanced methods in terms of both objective evaluation and
subjective visual performance.
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Cite this article
[IEEE Style]
D. Gai, H. Luo, J. He, P. Su, Z. Huang, S. Zhang, Z. Tu, "MLSE-Net: Multi-level Semantic Enriched Network for Medical Image Segmentation," KSII Transactions on Internet and Information Systems, vol. 17, no. 9, pp. 2458-2482, 2023. DOI: 10.3837/tiis.2023.09.009.
[ACM Style]
Di Gai, Heng Luo, Jing He, Pengxiang Su, Zheng Huang, Song Zhang, and Zhijun Tu. 2023. MLSE-Net: Multi-level Semantic Enriched Network for Medical Image Segmentation. KSII Transactions on Internet and Information Systems, 17, 9, (2023), 2458-2482. DOI: 10.3837/tiis.2023.09.009.
[BibTeX Style]
@article{tiis:55998, title="MLSE-Net: Multi-level Semantic Enriched Network for Medical Image Segmentation", author="Di Gai and Heng Luo and Jing He and Pengxiang Su and Zheng Huang and Song Zhang and Zhijun Tu and ", journal="KSII Transactions on Internet and Information Systems", DOI={10.3837/tiis.2023.09.009}, volume={17}, number={9}, year="2023", month={September}, pages={2458-2482}}