Author:
Zhu Mingwei,Zhao Min,Yao Min,Guo Ruipeng
Abstract
AbstractPositron imaging technology has shown good practical value in industrial non-destructive testing, but the noise and artifacts generated during the imaging process of flow field images will directly affect the accuracy of industrial fault diagnosis. Therefore, how to obtain high-quality reconstructed images of the positron flow field is a challenging problem. In the existing image denoising methods, the denoising performance of positron images of industrial flow fields in special fields still needs to be strengthened. Considering the characteristics of few sample data and strong regularity of positron flow field image,in this work, we propose a new method for image denoising of positron flow field, which is based on a generative adversarial network with zero-shot learning. This method realizes image denoising under the condition of small sample data, and constrains image generation by constructing the extraction model of image internal features. The experimental results show that the proposed method can reduce the noise while retaining the key information of the image. It has also achieved good performance in the practical application of industrial flow field positron imaging.
Funder
The Natural Science Foundation of China
The Aeronautical Science Foundation of China
The Fundamental Research Funds for the Central Universities
Publisher
Springer Science and Business Media LLC
Reference32 articles.
1. Shepp, L. A. & Vardi, Y. Maximum likelihood reconstruction for emission tomography. IEEE Trans. Med. Imaging 1(2), 113–122 (1982).
2. De Man, B. & Basu, S. Distance-driven projection and backprojection in three dimensions. Phys. Medi. Biol. 49(11), 2463 (2004).
3. Elbakri, I. A. & Fessler, J. A. Statistical image reconstruction for polyenergetic X-ray computed tomography. IEEE Trans. Med. Imaging 21(2), 89–99 (2002).
4. Liu, Y., Ma, J., Fan, Y. & Liang, Z. Adaptive-weighted total variation minimization for sparse data toward low-dose X-ray computed tomography image reconstruction. Phys. Med. Biol. 57(23), 7923 (2012).
5. Wang, J., Lu, H., Li, T. & Liang, Z. Sinogram noise reduction for low-dose ct by statistics-based nonlinear filters. In. Soc. Opt. Photonics 5747, 2058–2066 (2005).
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