Protter Matan, Elad Michael
Department of Computer Science, The Technion-Israel Institute of Technology, Haifa, Israel.
IEEE Trans Image Process. 2009 Jan;18(1):27-35. doi: 10.1109/TIP.2008.2008065.
In this paper, we consider denoising of image sequences that are corrupted by zero-mean additive white Gaussian noise. Relative to single image denoising techniques, denoising of sequences aims to also utilize the temporal dimension. This assists in getting both faster algorithms and better output quality. This paper focuses on utilizing sparse and redundant representations for image sequence denoising, extending the work reported in. In the single image setting, the K-SVD algorithm is used to train a sparsifying dictionary for the corrupted image. This paper generalizes the above algorithm by offering several extensions: i) the atoms used are 3-D; ii) the dictionary is propagated from one frame to the next, reducing the number of required iterations; and iii) averaging is done on patches in both spatial and temporal neighboring locations. These modifications lead to substantial benefits in complexity and denoising performance, compared to simply running the single image algorithm sequentially. The algorithm's performance is experimentally compared to several state-of-the-art algorithms, demonstrating comparable or favorable results.
在本文中,我们考虑对被零均值加性高斯白噪声破坏的图像序列进行去噪。相对于单图像去噪技术,序列去噪旨在利用时间维度。这有助于获得更快的算法和更好的输出质量。本文重点利用稀疏和冗余表示进行图像序列去噪,扩展了先前报道的工作。在单图像设置中,K-SVD算法用于为受损图像训练一个稀疏化字典。本文通过提供几种扩展来推广上述算法:i)使用的原子是三维的;ii)字典从一帧传播到下一帧,减少所需的迭代次数;iii)在空间和时间相邻位置的块上进行平均。与简单地顺序运行单图像算法相比,这些修改在复杂度和去噪性能方面带来了显著的好处。通过实验将该算法的性能与几种最新算法进行了比较,结果表明该算法具有可比或更好的效果。