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Content-Noise Complementary Learning for Medical Image Denoising
168
Zitationen
16
Autoren
2021
Jahr
Abstract
Medical imaging denoising faces great challenges, yet is in great demand. With its distinctive characteristics, medical imaging denoising in the image domain requires innovative deep learning strategies. In this study, we propose a simple yet effective strategy, the content-noise complementary learning (CNCL) strategy, in which two deep learning predictors are used to learn the respective content and noise of the image dataset complementarily. A medical image denoising pipeline based on the CNCL strategy is presented, and is implemented as a generative adversarial network, where various representative networks (including U-Net, DnCNN, and SRDenseNet) are investigated as the predictors. The performance of these implemented models has been validated on medical imaging datasets including CT, MR, and PET. The results show that this strategy outperforms state-of-the-art denoising algorithms in terms of visual quality and quantitative metrics, and the strategy demonstrates a robust generalization capability. These findings validate that this simple yet effective strategy demonstrates promising potential for medical image denoising tasks, which could exert a clinical impact in the future. Code is available at: https://github.com/gengmufeng/CNCL-denoising.
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Autoren
Institutionen
- Peking University(CN)
- Shenzhen Bay Laboratory(CN)
- National Center of Biomedical Analysis(CN)
- National Medical Products Administration(CN)
- Peking University Cancer Hospital(CN)
- Hebei University(CN)
- Fudan University(CN)
- Shanghai Institute for Science of Science(CN)
- Shanghai Center for Brain Science and Brain-Inspired Technology(CN)