Abstract
Although image denoising as a basic task of image restoration has been widely studied in the past decades, there are not many studies on mixed noise denoising. In this paper, we propose two structured dictionary learning models to recover images corrupted by mixed Gaussian and impulse noise. These two models can be merged as \ell _{p} -norm fidelity plus \ell _{q} -norm regularization. The fidelity term is used to fit image patches and the regularization term is employed for sparse coding. Particularly, we utilize proximal (and proximal linearized) alternating minimization methods as the main solvers to deal with these two models. We remove the Gaussian noise under the assumption that the uncorrupted image can be approximated with a linear representation under an appropriate orthogonal basis. We use different ways to remove impulse noise for these two models. The experimental results are reported to compare the existing methods and demonstrate the performance of the proposed denoising model is better than the other existing methods in terms of some quality assessment metrics.
Original language | English |
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Pages (from-to) | 6680-6693 |
Number of pages | 14 |
Journal | IEEE Transactions on Image Processing |
Volume | 29 |
DOIs | |
Publication status | Published - 13 May 2020 |
Scopus Subject Areas
- Software
- Computer Graphics and Computer-Aided Design
User-Defined Keywords
- Gaussian noise
- Image denoising
- image enhancement
- image restoration
- impulse noise
- noise