IEEE Trans Image Process. 2013 Dec;22(12):4689-98. doi: 10.1109/TIP.2013.2277813. Epub 2013 Aug 8.
Exploiting the sparsity within representation models for images is critical for image denoising. The best currently available denoising methods take advantage of the sparsity from image self-similarity, pre-learned, and fixed representations. Most of these methods, however, still have difficulties in tackling high noise levels or noise models other than Gaussian. In this paper, the multiresolution structure and sparsity of wavelets are employed by nonlocal dictionary learning in each decomposition level of the wavelets. Experimental results show that our proposed method outperforms two state-of-the-art image denoising algorithms on higher noise levels. Furthermore, our approach is more adaptive to the less extensively researched uniform noise.
利用图像表示模型中的稀疏性对于图像去噪至关重要。目前最好的去噪方法利用了图像自相似性、预先学习和固定表示的稀疏性。然而,这些方法中的大多数在处理高噪声水平或非高斯噪声模型时仍然存在困难。在本文中,小波的多分辨率结构和稀疏性通过非局部字典学习在小波的每个分解级别中得到利用。实验结果表明,我们提出的方法在更高的噪声水平下优于两种最先进的图像去噪算法。此外,我们的方法对研究较少的均匀噪声更具适应性。