WGAN-Based Image Denoising Algorithm

Author:

Zou XiuFang1,Zhu Dingju2,Huang Jun3,Lu Wei1,Yao Xinchu1,Lian Zhaotong4

Affiliation:

1. South China Normal University, China

2. South China Normal University, China*

3. The First Affiliated Hospital of Jinan University, China

4. University of Macau, China

Abstract

Traditional image denoising algorithms are generally based on spatial domains or transform domains to denoise and smooth the image. The denoised images are not exhaustive, and the depth-of-learning algorithm has better denoising effect and performs well while retaining the original image texture details such as edge characters. In order to enhance denoising capability of images by the restoration of texture details and noise reduction, this article proposes a network model based on the Wasserstein GAN. In the generator, small convolution size is used to extract image features with noise. The extracted image features are denoised, fused and reconstructed into denoised images. A new residual network is proposed to improve the noise removal effect. In the confrontation training, different loss functions are proposed in this paper.

Publisher

IGI Global

Subject

Information Systems and Management,Management Science and Operations Research,Strategy and Management,Computer Science Applications,Business and International Management

Reference32 articles.

1. Ba, J. L., Kiros, J. R., & Hinton, G. E. (2016). Layer normalization. arXiv preprint arXiv:1607.06450.

2. Burger, H. C., Schuler, C. J., & Harmeling, S. (2012a). Image denoising with multi-layer perceptrons, part 1: comparison with existing algorithms and with bounds. arXiv preprint arXiv:1211.1544.

3. Burger, H. C., Schuler, C. J., & Harmeling, S. (2012b). Image denoising with multi-layer perceptrons, part 2: training trade-offs and analysis of their mechanisms. arXiv preprint arXiv:1211.1552.

4. Image denoising: Can plain neural networks compete with BM3D?

5. Prediction of chronic kidney disease stages by renal ultrasound imaging

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