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Quaternion-based weighted nuclear norm minimization for color image denoising

机译:基于四元数的加权核范数最小化彩色图像去噪

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The quaternion method plays an important role in color image processing, because it represents the color image as a whole rather than as a separate color space component, thus naturally handling the coupling among color channels. The weighted nuclear norm minimization (WNNM) scheme assigns different weights to different singular values, leading to more reasonable image representation method. In this paper, we propose a novel quaternion weighted nuclear norm minimization (QWNNM) model and algorithm under the low rank sparse framework. The proposed model represents the color image as a low rank quaternion matrix, where quaternion singular value decomposition can be calculated by its equivalent complex matrix. We solve the QWNNM by adaptively assigning different singular values with different weights. Color image denoising is implemented by QWNNM based on non-local similarity priors. In this new color space, the inherent color structure can be well preserved during image reconstruction. For high noise levels, we apply a Gaussian low pass filter (LPF) to the noisy image as a preprocessing before QWNNM, which reduces the iteration numbers and improves the denoised results. The experimental results clearly show that the proposed method outperforms K-SVD, QKSVD and WNNM in terms of both quantitative criteria and visual perceptual. (C) 2019 Elsevier B.V. All rights reserved.
机译:四元数方法在彩色图像处理中起着重要作用,因为它代表了彩色图像的整体而不是单独的色彩空间分量,从而自然地处理了色彩通道之间的耦合。加权核规范最小化(WNNM)方案将不同的权重分配给不同的奇异值,从而导致更合理的图像表示方法。在本文中,我们提出了一种新的在低秩稀疏框架下的四元数加权核规范最小化(QWNNM)模型和算法。提出的模型将彩色图像表示为低秩四元数矩阵,其中四元数奇异值分解可以通过其等效复数矩阵进行计算。我们通过自适应地分配具有不同权重的不同奇异值来解决QWNNM。彩色图像去噪由QWNNM基于非局部相似性先验来实现。在这种新的色彩空间中,可以在图像重建期间很好地保留固有的色彩结构。对于高噪声水平,我们对高噪声图像应用高斯低通滤波器(LPF)作为QWNNM之前的预处理,从而减少了迭代次数并改善了去噪效果。实验结果清楚地表明,在定量标准和视觉感知方面,该方法均优于K-SVD,QKSVD和WNNM。 (C)2019 Elsevier B.V.保留所有权利。

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