Han Jaeduk, Song Ki Sun, Kim Jonghyun, Kang Moon Gi
IEEE Trans Image Process. 2018 Jul;27(7):3556-3570. doi: 10.1109/TIP.2018.2825112. Epub 2018 Apr 9.
Image deconvolution is an ill-posed problem that usually requires prior knowledge for regularizing the feasible solutions. In literature, iterative methods estimate an intrinsic image, minimizing a cost function regularized by specific prior information. However, it is difficult to directly minimize the constrained cost function, if a nondifferentiable regularization (e.g., the sparsity constraint) is employed. In this paper, we propose a nonderivative image deconvolution algorithm that solves the under-constrained problem (i.e., a non-blind image deconvolution) by successively solving the permuted subproblems. The subproblems, arranged in permuted sequences, directly minimize the nondifferentiable cost functions. Various Lp-regularized (0 < p ≤ 1, p = 2) objective functions are utilized to demonstrate the pixel-wise optimization, in which the projection operator generates simplified, low-dimensional subproblems for estimating each pixel. The subproblems, after projection, are dealt with in the corresponding hyperplanes containing the adjacent pixels of each image coordinate. Furthermore, successively solving the subproblems can accelerate the deconvolution process with a linear speed-up, by parallelizing the subproblem sequences. The image deconvolution results with various regularization functionals are presented and the linear speed-up is also demonstrated with a parallelized version of the proposed algorithm. Experimental results demonstrate that the proposed method outperforms the conventional methods in terms of the improved-signal-to-noise ratio and structural similarity index measure.
图像去卷积是一个不适定问题,通常需要先验知识来正则化可行解。在文献中,迭代方法通过最小化由特定先验信息正则化的代价函数来估计固有图像。然而,如果采用不可微正则化(例如稀疏性约束),则难以直接最小化受约束的代价函数。在本文中,我们提出了一种非导数图像去卷积算法,该算法通过依次求解排列后的子问题来解决欠约束问题(即非盲图像去卷积)。排列成序列的子问题直接最小化不可微代价函数。利用各种Lp正则化(0 < p ≤ 1,p = 2)目标函数来展示逐像素优化,其中投影算子生成简化的低维子问题以估计每个像素。投影后的子问题在包含每个图像坐标相邻像素的相应超平面中处理。此外,通过并行化子问题序列,依次求解子问题可以以线性加速比加速去卷积过程。给出了具有各种正则化泛函的图像去卷积结果,并通过所提算法的并行版本展示了线性加速比。实验结果表明,所提方法在提高信噪比和结构相似性指数度量方面优于传统方法。