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Main Authors: Ding, Weiping, Geng, Sheng, Wang, Haipeng, Huang, Jiashuang, Zhou, Tianyi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.02075
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_version_ 1866917741095550976
author Ding, Weiping
Geng, Sheng
Wang, Haipeng
Huang, Jiashuang
Zhou, Tianyi
author_facet Ding, Weiping
Geng, Sheng
Wang, Haipeng
Huang, Jiashuang
Zhou, Tianyi
contents In recent years, the denoising diffusion model has achieved remarkable success in image segmentation modeling. With its powerful nonlinear modeling capabilities and superior generalization performance, denoising diffusion models have gradually been applied to medical image segmentation tasks, bringing new perspectives and methods to this field. However, existing methods overlook the uncertainty of segmentation boundaries and the fuzziness of regions, resulting in the instability and inaccuracy of the segmentation results. To solve this problem, a denoising diffusion fusion network based on fuzzy learning for 3D medical image segmentation (FDiff-Fusion) is proposed in this paper. By integrating the denoising diffusion model into the classical U-Net network, this model can effectively extract rich semantic information from input medical images, thus providing excellent pixel-level representation for medical image segmentation. ... Finally, to validate the effectiveness of FDiff-Fusion, we compare it with existing advanced segmentation networks on the BRATS 2020 brain tumor dataset and the BTCV abdominal multi-organ dataset. The results show that FDiff-Fusion significantly improves the Dice scores and HD95 distance on these two datasets, demonstrating its superiority in medical image segmentation tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2408_02075
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle FDiff-Fusion:Denoising diffusion fusion network based on fuzzy learning for 3D medical image segmentation
Ding, Weiping
Geng, Sheng
Wang, Haipeng
Huang, Jiashuang
Zhou, Tianyi
Computer Vision and Pattern Recognition
In recent years, the denoising diffusion model has achieved remarkable success in image segmentation modeling. With its powerful nonlinear modeling capabilities and superior generalization performance, denoising diffusion models have gradually been applied to medical image segmentation tasks, bringing new perspectives and methods to this field. However, existing methods overlook the uncertainty of segmentation boundaries and the fuzziness of regions, resulting in the instability and inaccuracy of the segmentation results. To solve this problem, a denoising diffusion fusion network based on fuzzy learning for 3D medical image segmentation (FDiff-Fusion) is proposed in this paper. By integrating the denoising diffusion model into the classical U-Net network, this model can effectively extract rich semantic information from input medical images, thus providing excellent pixel-level representation for medical image segmentation. ... Finally, to validate the effectiveness of FDiff-Fusion, we compare it with existing advanced segmentation networks on the BRATS 2020 brain tumor dataset and the BTCV abdominal multi-organ dataset. The results show that FDiff-Fusion significantly improves the Dice scores and HD95 distance on these two datasets, demonstrating its superiority in medical image segmentation tasks.
title FDiff-Fusion:Denoising diffusion fusion network based on fuzzy learning for 3D medical image segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.02075