Signal Processing Department, Institute for Infocomm Research, Agency for Science, Technology and Research, 138632 Singapore.
IEEE Trans Image Process. 2012 Nov;21(11):4557-67. doi: 10.1109/TIP.2012.2206043. Epub 2012 Jun 26.
This paper presents an efficient algorithm for solving a balanced regularization problem in the frame-based image restoration. The balanced regularization is usually formulated as a minimization problem, involving an l(2) data-fidelity term, an l(1) regularizer on sparsity of frame coefficients, and a penalty on distance of sparse frame coefficients to the range of the frame operator. In image restoration, the balanced regularization approach bridges the synthesis-based and analysis-based approaches, and balances the fidelity, sparsity, and smoothness of the solution. Our proposed algorithm for solving the balanced optimal problem is based on a variable splitting strategy and the classical alternating direction method. This paper shows that the proposed algorithm is fast and efficient in solving the standard image restoration with balanced regularization. More precisely, a regularized version of the Hessian matrix of the l(2) data-fidelity term is involved, and by exploiting the related fast tight Parseval frame and the special structures of the observation matrices, the regularized Hessian matrix can perform quite efficiently for the frame-based standard image restoration applications, such as circular deconvolution in image deblurring and missing samples in image inpainting. Numerical simulations illustrate the efficiency of our proposed algorithm in the frame-based image restoration with balanced regularization.
本文提出了一种在基于帧的图像恢复中求解平衡正则化问题的有效算法。平衡正则化通常被表述为一个最小化问题,涉及 l(2)数据保真项、基于帧系数稀疏性的 l(1)正则化项以及稀疏帧系数与帧算子范围之间距离的惩罚项。在图像恢复中,平衡正则化方法融合了基于综合和基于分析的方法,平衡了解的保真度、稀疏性和平滑性。我们提出的求解平衡最优问题的算法基于变量分裂策略和经典交替方向法。本文表明,所提出的算法在求解具有平衡正则化的标准图像恢复问题时非常快速和高效。更确切地说,涉及到 l(2)数据保真项的 Hessian 矩阵的正则化版本,并且通过利用相关的快速紧 Parseval 帧和观测矩阵的特殊结构,正则化 Hessian 矩阵可以非常有效地用于基于帧的标准图像恢复应用,例如图像去模糊中的圆形反卷积和图像修复中的缺失样本。数值模拟说明了我们提出的算法在基于帧的平衡正则化图像恢复中的效率。