School of Automation, Guangdong University of Technology, Guangzhou, China.
Department of Computer Science, Southern Illinois University-Carbondale, Carbondale, IL, United States of America.
PLoS One. 2018 Dec 12;13(12):e0208503. doi: 10.1371/journal.pone.0208503. eCollection 2018.
We proposed a new efficient image denoising scheme, which mainly leads to four important contributions whose approaches are different from existing ones. The first is to show the equivalence between the group-based sparse representation and the Schatten-p norm minimization problem, so that the sparsity of the coefficients for each group can be measured by estimating the underlying singular values. The second is that we construct the proximal operator for sparse optimization in ℓp space with p ∈ (0, 1] by using fixed-point iteration and obtained a new solution of Schatten-p norm minimization problem, which is more rigorous and accurate than current available results. The third is that we analyze the suitable setting of power p for each noise level σ = 20, 30, 50, 60, 75, 100, respectively. We find that the optimal value of p is inversely proportional to the noise level except for high level of noise, where the best values of p are 1 and 0.95, when the noise levels are respectively 75 and 100. Last we measure the structural similarity between two image patches and extends previous deterministic annealing-based solution to sparsity optimization problem through incorporating the idea of dictionary learning. Experimental results demonstrate that for every given noise level, the proposed Spatially Adaptive Fixed Point Iteration (SAFPI) algorithm attains the best denoising performance on the value of Peak Signal-to-Noise Ratio (PSNR) and structure similarity (SSIM), being able to retain the image structure information, which outperforms many state-of-the-art denoising methods such as Block-matching and 3D filtering (BM3D), Weighted Nuclear Norm Minimization (WNNM) and Weighted Schatten p-Norm Minimization (WSNM).
我们提出了一种新的高效图像去噪方案,主要有四个重要贡献,其方法与现有方法不同。第一个是证明基于组的稀疏表示与 Schatten-p 范数最小化问题之间的等价性,从而可以通过估计潜在奇异值来衡量每个组的系数的稀疏性。第二个是通过使用定点迭代在 ℓp 空间中构建稀疏优化的逼近算子,得到了 Schatten-p 范数最小化问题的新解,比现有结果更严格、更准确。第三个是分析了幂 p 对于每个噪声水平 σ = 20、30、50、60、75、100 的合适设置。我们发现,除了高噪声水平外,p 的最优值与噪声水平成反比,在高噪声水平下,p 的最佳值为 1 和 0.95,当噪声水平分别为 75 和 100 时。最后,我们测量了两个图像块之间的结构相似性,并通过结合字典学习的思想将之前基于确定性退火的解决方案扩展到稀疏优化问题。实验结果表明,对于每个给定的噪声水平,所提出的空间自适应定点迭代(SAFPI)算法在峰值信噪比(PSNR)和结构相似性(SSIM)的值上达到了最佳的去噪性能,能够保留图像结构信息,优于许多最先进的去噪方法,如块匹配和 3D 滤波(BM3D)、加权核范数最小化(WNNM)和加权 Schatten p 范数最小化(WSNM)。