Adaptive Total-Variation and Nonconvex Low-Rank Model for Image Denoising

Pub Date : 2023-07-27 DOI:10.1142/s0219467825500160
Li Fang, Wang Xianghai
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Abstract

In recent years, image denoising methods based on total variational regularization have attracted extensive attention. However, the traditional total variational regularization method is an approximate solution based on convex method, and does not consider the particularity of the region with rich details. In this paper, the adaptive total-variation and nonconvex low-rank model for image denoising is proposed, which is a hybrid regularization model. First, the image is decomposed into sparse terms and low rank terms, and then the total variational regularization is used to denoise. At the same time, an adaptive coefficient based on gradient is constructed to adaptively judge the flat area and detail texture area, slow down the denoising intensity of detail area, and then play the role of preserving detail information. Finally, by constructing a nonconvex function, the optimal solution of the function is obtained by using the alternating minimization method. This method not only effectively removes the image noise, but also retains the detailed information of the image. The experimental results show the effectiveness of the proposed model, and SNR and SSIM of the denoised image are improved.
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自适应全变分和非凸低秩图像去噪模型
近年来,基于全变分正则化的图像去噪方法引起了人们的广泛关注。然而,传统的全变分正则化方法是基于凸方法的近似解,没有考虑细节丰富区域的特殊性。本文提出了一种用于图像去噪的自适应全变分非凸低秩模型,这是一种混合正则化模型。首先,将图像分解为稀疏项和低秩项,然后使用全变分正则化进行去噪。同时,构造了一个基于梯度的自适应系数,自适应地判断平面区域和细节纹理区域,减缓细节区域的去噪强度,进而起到保存细节信息的作用。最后,通过构造一个非凸函数,利用交替最小化方法得到该函数的最优解。该方法不仅有效地去除了图像噪声,而且保留了图像的详细信息。实验结果表明了该模型的有效性,并且提高了去噪图像的信噪比和SSIM。
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