Suppr超能文献

基于正交矩相似度的重叠分组稀疏图像去噪

Image denoising via overlapping group sparsity using orthogonal moments as similarity measure.

机构信息

Department of Electrical and Computer Engineering, Concordia University, Montreal, QC H3G 1M8, Canada.

Department of Electrical and Computer Engineering, Concordia University, Montreal, QC H3G 1M8, Canada.

出版信息

ISA Trans. 2019 Feb;85:293-304. doi: 10.1016/j.isatra.2018.10.030. Epub 2018 Oct 29.

Abstract

Recently, sparse representation has attracted a great deal of interest in many of the image processing applications. However, the idea of self-similarity, which is inherently present in an image, has not been considered in standard sparse representation. Moreover, if the dictionary atoms are not constrained to be correlated, the redundancy present in the dictionary may not improve the performance of sparse coding. This paper addresses these issues by using orthogonal moments to extract the correlations among the atoms and group them together by extracting the characteristics of the noisy image patches. Most of the existing sparsity-based image denoising methods utilize an over-complete dictionary, for example, the K-SVD method that requires solving a minimization problem which is computationally challenging. In order to improve the computational efficiency and the correlation between the sparse coefficients, this paper employs the concept of overlapping group sparsity formulated for both convex and non-convex denoising frameworks. The optimization method used for solving the denoising framework is the well known majorization-minimization method, which has been applied successfully in sparse approximation and statistical estimations. Experimental results demonstrate that the proposed method offers, in general, a performance that is better than that of the existing state-of-the-art methods irrespective of the noise level and the image type.

摘要

近年来,稀疏表示在许多图像处理应用中引起了极大的关注。然而,在标准稀疏表示中,并未考虑到图像中固有的自相似性思想。此外,如果字典原子不受相关性约束,则字典中的冗余可能不会提高稀疏编码的性能。本文通过使用正交矩来提取原子之间的相关性,并通过提取噪声图像块的特征将它们分组,从而解决了这些问题。大多数基于稀疏性的图像去噪方法都利用了过完备字典,例如 K-SVD 方法,它需要求解一个计算上具有挑战性的最小化问题。为了提高计算效率和稀疏系数之间的相关性,本文将重叠分组稀疏性的概念应用于凸和非凸去噪框架中。用于求解去噪框架的优化方法是众所周知的增广最小化方法,该方法已成功应用于稀疏逼近和统计估计中。实验结果表明,无论噪声水平和图像类型如何,所提出的方法通常都提供了比现有最先进方法更好的性能。

相似文献

1
Image denoising via overlapping group sparsity using orthogonal moments as similarity measure.
ISA Trans. 2019 Feb;85:293-304. doi: 10.1016/j.isatra.2018.10.030. Epub 2018 Oct 29.
2
Group-sparse representation with dictionary learning for medical image denoising and fusion.
IEEE Trans Biomed Eng. 2012 Dec;59(12):3450-9. doi: 10.1109/TBME.2012.2217493. Epub 2012 Sep 6.
3
A new development of non-local image denoising using fixed-point iteration for non-convex ℓp sparse optimization.
PLoS One. 2018 Dec 12;13(12):e0208503. doi: 10.1371/journal.pone.0208503. eCollection 2018.
4
Sparsity-promoting orthogonal dictionary updating for image reconstruction from highly undersampled magnetic resonance data.
Phys Med Biol. 2015 Jul 21;60(14):5359-80. doi: 10.1088/0031-9155/60/14/5359. Epub 2015 Jun 25.
5
Content-oriented sparse representation (COSR) for CT denoising with preservation of texture and edge.
Med Phys. 2018 Nov;45(11):4942-4954. doi: 10.1002/mp.13189. Epub 2018 Oct 10.
6
Group-based sparse representation for image restoration.
IEEE Trans Image Process. 2014 Aug;23(8):3336-51. doi: 10.1109/TIP.2014.2323127. Epub 2014 May 12.
7
Nonlocally centralized sparse representation for image restoration.
IEEE Trans Image Process. 2013 Apr;22(4):1620-30. doi: 10.1109/TIP.2012.2235847. Epub 2012 Dec 21.
8
Image Restoration via Reconciliation of Group Sparsity and Low-Rank Models.
IEEE Trans Image Process. 2021;30:5223-5238. doi: 10.1109/TIP.2021.3078329. Epub 2021 May 25.
10
Learning doubly sparse transforms for images.
IEEE Trans Image Process. 2013 Dec;22(12):4598-612. doi: 10.1109/TIP.2013.2274384. Epub 2013 Jul 23.

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验