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Sparse2Inverse: Self-supervised inversion of sparse-view CT data (2402.16921v1)

Published 26 Feb 2024 in eess.IV

Abstract: Sparse-view computed tomography (CT) enables fast and low-dose CT imaging, an essential feature for patient-save medical imaging and rapid non-destructive testing. In sparse-view CT, only a few projection views are acquired, causing standard reconstructions to suffer from severe artifacts and noise. To address these issues, we propose a self-supervised image reconstruction strategy. Specifically, in contrast to the established Noise2Inverse, our proposed training strategy uses a loss function in the projection domain, thereby bypassing the otherwise prescribed nullspace component. We demonstrate the effectiveness of the proposed method in reducing stripe-artifacts and noise, even from highly sparse data.

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References (19)
  1. Solving inverse problems using data-driven models. Acta Numerica, 28:1–174, 2019.
  2. Noise2self: Blind denoising by self-supervision. In International Conference on Machine Learning, pages 524–533. PMLR, 2019.
  3. Nlinv-net: Self-supervised end-2-end learning for reconstructing undersampled radial cardiac real-time data. In ISMRM annual meeting, 2022.
  4. Equivariant imaging: Learning beyond the range space. In Proceedings of the IEEE/CVF International Conference on Computer Vision, pages 4379–4388, 2021.
  5. A cone-beam x-ray computed tomography data collection designed for machine learning. Scientific data, 6(1):215, 2019.
  6. Tomosipo: Fast, flexible, and convenient 3D tomography for complex scanning geometries in Python. Optics Express, Oct 2021.
  7. Noise2inverse: Self-supervised deep convolutional denoising for tomography. IEEE Transactions on Computational Imaging, 6:1320–1335, 2020.
  8. Noise2noise: Learning image restoration without clean data. arXiv preprint arXiv:1803.04189, 2018.
  9. Nett: Solving inverse problems with deep neural networks. Inverse Problems, 36(6):065005, 2020.
  10. Clean self-supervised mri reconstruction from noisy, sub-sampled training data with robust ssdu. Authorea Preprints, 2023.
  11. A theoretical framework for self-supervised mr image reconstruction using sub-sampling via variable density noisier2noise. IEEE transactions on computational imaging, 2023.
  12. The little engine that could: Regularization by denoising (red). SIAM Journal on Imaging Sciences, 10(4):1804–1844, 2017.
  13. U-net: Convolutional networks for biomedical image segmentation. In Medical Image Computing and Computer-Assisted Intervention–MICCAI 2015: 18th International Conference, Munich, Germany, October 5-9, 2015, Proceedings, Part III 18, pages 234–241. Springer, 2015.
  14. Variational methods in imaging, volume 167. Springer, 2009.
  15. Deep null space learning for inverse problems: convergence analysis and rates. Inverse Problems, 35(2):025008, 2019.
  16. Self-supervised training for low-dose ct reconstruction. In 2021 IEEE 18th International Symposium on Biomedical Imaging (ISBI), pages 69–72. IEEE, 2021.
  17. Self-supervised learning of physics-guided reconstruction neural networks without fully sampled reference data. Magnetic resonance in medicine, 84(6):3172–3191, 2020.
  18. Noise2context: Context-assisted learning 3d thin-layer for low-dose ct. Medical Physics, 48(10):5794–5803, 2021.
  19. Low-dose ct reconstruction by self-supervised learning in the projection domain. arXiv preprint arXiv:2203.06824, 2022.

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