Deep-learning-based ring artifact correction for tomographic reconstruction

Author:

Fu TianyuORCID,Wang YanORCID,Zhang KaiORCID,Zhang Jin,Wang Shanfeng,Huang Wanxia,Wang YalingORCID,Yao Chunxia,Zhou Chenpeng,Yuan QingxiORCID

Abstract

X-ray tomography has been widely used in various research fields thanks to its capability of observing 3D structures with high resolution non-destructively. However, due to the nonlinearity and inconsistency of detector pixels, ring artifacts usually appear in tomographic reconstruction, which may compromise image quality and cause nonuniform bias. This study proposes a new ring artifact correction method based on the residual neural network (ResNet) for X-ray tomography. The artifact correction network uses complementary information of each wavelet coefficient and a residual mechanism of the residual block to obtain high-precision artifacts through low operation costs. In addition, a regularization term is used to accurately extract stripe artifacts in sinograms, so that the network can better preserve image details while accurately separating artifacts. When applied to simulation and experimental data, the proposed method shows a good suppression of ring artifacts. To solve the problem of insufficient training data, ResNet is trained through the transfer learning strategy, which brings advantages of robustness, versatility and low computing cost.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

Publisher

International Union of Crystallography (IUCr)

Subject

Instrumentation,Nuclear and High Energy Physics,Radiation

Reference41 articles.

1. Agustsson, E. & Timofte, R. (2017). 30th IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR 2017), 22-25 July 2017, Honolulu, HI, USA, pp. 1122-1131.

2. Sparse-View CT Reconstruction Based on a Hybrid Domain Model with Multi-Level Wavelet Transform

3. Balduzzi, D., Frean, M., Leary, L., Lewis, J. P., Ma, K. W. D. & McWilliams, B. (2017). 34th International Conference on Machine Learning (ICML 2017), 6-11 August 2017, Sydney, Australia, pp. 536-549.

4. Compensation of ring artefacts in synchrotron tomographic images

5. Chen, H. G., He, X. H., Qing, L. B., Xiong, S. H., Nguyen, T. Q. & IEEE (2018). 31st IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR 2018), 18-23 June 2018, Salt Lake City, UT, USA, pp. 824-833.

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