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A l~1-Unified Variational Framework for Image Restoration

机译:一种1〜1统一的图像复原变异框架

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摘要

Among image restoration literature, there are mainly two kinds of approach. One is based on a process over image wavelet coefficients, as wavelet shrinkage for denoising. The other one is based on a process over image gradient. In order to get an edge-preserving reg-ularization, one usually assume that the image belongs to the space of functions of Bounded Variation (BV). An energy is minimized, composed of an observation term and the Total Variation (TV) of the image. Recent contributions try to mix both types of method. In this spirit, the goal of this paper is to define a unified-framework including together wavelet methods and energy minimization as TV. In fact, for denoising purpose, it is already shown that wavelet soft-thresholding is equivalent to choose the regularization term as the norm of the Besov space B_1~(11). In the present work, this equivalence result is extended to the case of decon-volution problem. We propose a general functional to minimize, which includes the TV minimization, wavelet coefficients regularization, mixed (TV+wavelet) regularization or more general terms. Moreover we give a projection-based algorithm to compute the solution. The convergence of the algorithm is also stated. We show that the decomposition of an image over a dictionary of elementary shapes (atoms) is also included in the proposed framework. So we give a new algorithm to solve this difficult problem, known as Basis Pursuit. We also show numerical results of image deconvolution using TV, wavelets, or TV+wavelets regularization terms.
机译:在图像恢复文献中,主要有两种方法。一种是基于对图像小波系数的处理,作为用于去噪的小波收缩。另一个基于对图像梯度的处理。为了获得保留边缘的规则化,通常假设图像属于有界变化(BV)函数的空间。能量被最小化,由观察项和图像的总变化(TV)组成。最近的贡献试图将两种方法混合使用。本着这种精神,本文的目标是定义一个统一的框架,将小波方法和能量最小化结合在一起作为电视。实际上,出于降噪的目的,已经表明小波软阈值等效于选择正则化项作为Besov空间B_1〜(11)的范数。在当前的工作中,该等价结果扩展到反卷积问题的情况。我们提出了一个最小化的通用函数,包括TV最小化,小波系数正则化,混合(TV +小波)正则化或更一般的术语。此外,我们给出了基于投影的算法来计算解决方案。还说明了算法的收敛性。我们表明,在基本形状(原子)字典上的图像分解也包含在建议的框架中。因此,我们提出了一种新的算法来解决这一难题,称为基础追求。我们还显示了使用TV,小波或TV +小波正则化项进行图像反卷积的数值结果。

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