加权总变差图像去噪快速算法

Fan Liao, Shuai Shao
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引用次数: 3

摘要

全变分(TV)模型是图像去噪中一种经典而有效的模型,但加权全变分(WTV)模型一直没有引起人们的广泛关注。本文提出了一种新的约束WTV图像去噪模型。针对新的约束WTV模型,提出了一种快速去噪的对偶方法。为了实现这一任务,我们将众所周知的梯度投影(GP)和快速梯度投影(FGP)方法结合在图像去噪问题的对偶方法上。实验结果表明,该方法优于目前已知的GP和fgp方法,可以同时适用于各向同性和各向异性的WTV函数。
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An Image Denoising Fast Algorithm for Weighted Total Variation
The total variation (TV) model is a classical and effective model in image denoising, but the weighted total variation (WTV) model has not attracted much attention. In this paper, we propose a new constrained WTV model for image denoising. A fast denoising dual method for the new constrained WTV model is also proposed. To achieve this task, we combines the well known gradient projection (GP) and the fast gradient projection (FGP) methods on the dual approach for the image denoising problem. Experimental results show that the proposed method outperforms currently known GP andFGP methods, and canbe applicable to both the isotropic and anisotropic WTV functions.
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