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A Universal Variational Framework for Sparsity-Based Image Inpainting

机译:基于稀疏性的图像修复通用变体框架

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摘要

In this paper, we extend an existing universal variational framework for image inpainting with new numerical algorithms. Given certain regularization operator (Phi ) and denoting (u) the latent image, the basic model is to minimize the (ell _{p},(p=0,1)) norm of (Phi u) preserving the pixel values outside the inpainting region. Utilizing the operator splitting technique, the original problem can be approximated by a new problem with extra variable. With the alternating minimization method, the new problem can be decomposed as two subproblems with exact solutions. There are many choices for (Phi ) in our approach such as gradient operator, wavelet transform, framelet transform, or other tight frames. Moreover, with slight modification, we can decouple our framework into two relatively independent parts: 1) denoising and 2) linear combination. Therefore, we can take any denoising method, including BM3D filter in the denoising step. The numerical experiments on various image inpainting tasks, such as scratch and text removal, randomly missing pixel filling, and block completion, clearly demonstrate the super performance of the proposed methods. Furthermore, the theoretical convergence of the proposed algorithms is proved.
机译:在本文中,我们使用新的数值算法扩展了现有的图像修补通用变体框架。给定某些正则化运算符 (Phi) 并表示 (u) 潜像,基本模型是最小化 (ell _ {p},( p = 0,1))的 (Phi u) 范数公式>保留修复区域外部的像素值。利用运算符拆分技术,原始问题可以由带有额外变量的新问题来近似。使用交替最小化方法,可以将新问题分解为具有精确解的两个子问题。在我们的方法中, (Phi) 有很多选择,例如梯度算子,小波变换,框架变换或其他紧框架。此外,只需稍作修改,我们就可以将框架分解为两个相对独立的部分:1)去噪和2)线性组合。因此,我们可以采用任何降噪方法,包括在降噪步骤中使用BM3D滤波器。通过对各种图像修复任务(例如从头开始和去除文本,随机丢失像素填充和块完成)的数值实验清楚地证明了所提出方法的超级性能。此外,证明了所提算法的理论收敛性。

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