The finite-rate-of-innovation (FRI) framework which corresponds a signal/image to a structured low-rank matrix is emerging as an alternative to the traditional sparse regularization. This is because such an off-the-grid approach is able to alleviate the basis mismatch between the true support in the continuous domain and the discrete grid. In this paper, we propose a two-stage off-the-grid regularization model for the image restoration. Given that the discontinuities/edges of the image lie in the zero level set of a band-limited periodic function, we can derive that the Fourier samples of the gradient of the image satisfy an annihilation relation, resulting in a low-rank two-fold Hankel matrix. In addition, since the singular value decomposition of a low-rank Hankel matrix corresponds to an adaptive tight frame system which can represent the image with sparse canonical coefficients, our approach consists of the following two stages. The first stage learns the tight wavelet frame system from a given measurement, and the second stage restores the image via the analysis approach based sparse regularization. The numerical results are presented to demonstrate that the proposed approach is compared favorably against several popular discrete regularization approaches and structured low-rank matrix approaches.
翻译:相对于结构化低级矩阵的信号/图像的有限创新率(FRI)框架正在出现,以替代传统的稀释性规范化,因为这种离网法能够缓解连续域和离散网格中真实支持之间的基本不匹配。在本文中,我们为图像恢复提出了一个两阶段离网调整模式。鉴于图像的不连续性/边缘在于带宽定期功能的零级数据集,我们可以得出图像梯度的Fourier样本满足了灭绝关系,导致汉克尔双倍低端矩阵。此外,由于低级汉克尔矩阵的单值分解与适应性紧凑框架系统相对应,这个系统可以代表稀薄的卡通系数的图像,我们的方法包括以下两个阶段。第一阶段从特定测量中学习了紧的波框架系统,而第二阶段则通过基于低频度规范化的分析方法恢复了图像。提出了数字结果,以表明拟议的矩阵方法结构化是优劣的,与若干离散的离心型组合方法相对。