IEEE Trans Image Process. 2013 Dec;22(12):5214-25. doi: 10.1109/TIP.2013.2282900.
Dictionary learning based sparse modeling has been increasingly recognized as providing high performance in the restoration of noisy images. Although a number of dictionary learning algorithms have been developed, most of them attack this learning problem in its primal form, with little effort being devoted to exploring the advantage of solving this problem in a dual space. In this paper, a novel Fenchel duality based dictionary learning (FD-DL) algorithm has been proposed for the restoration of noise-corrupted images. With the restricted attention to the additive white Gaussian noise, the sparse image representation is formulated as an 2-1 minimization problem, whose dual formulation is constructed using a generalization of Fenchel’s duality theorem and solved under the augmented Lagrangian framework. The proposed algorithm has been compared with four state-of-the-art algorithms, including the local pixel grouping-principal component analysis, method of optimal directions, K-singular value decomposition, and beta process factor analysis, on grayscale natural images. Our results demonstrate that the FD-DL algorithm can effectively improve the image quality and its noisy image restoration ability is comparable or even superior to the abilities of the other four widely-used algorithms.
基于字典学习的稀疏建模已经被越来越多地认为在噪声图像的恢复中提供了高性能。尽管已经开发了许多字典学习算法,但它们中的大多数都以原始形式攻击这个学习问题,很少有精力去探索在对偶空间中解决这个问题的优势。在本文中,我们提出了一种基于 Fenchel 对偶的字典学习(FD-DL)算法,用于恢复噪声污染的图像。在仅考虑加性白高斯噪声的情况下,稀疏图像表示被表述为一个 2-1 最小化问题,其对偶形式使用 Fenchel 对偶定理的推广来构建,并在增广拉格朗日框架下求解。我们将所提出的算法与四种最先进的算法进行了比较,包括局部像素分组主成分分析、最优方向法、K-奇异值分解和β过程因子分析,实验对象是灰度自然图像。我们的结果表明,FD-DL 算法可以有效地提高图像质量,其噪声图像恢复能力与其他四种广泛使用的算法相当甚至更好。