Multi-channel Nuclear Norm Minus Frobenius Norm Minimization for Color Image Denoising

Yiwen Shan, D. Hu, Zhi Wang, Tao Jia
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引用次数: 5

Abstract

Color image denoising is frequently encountered in various image processing and computer vision tasks. One traditional strategy is to convert the RGB image to a less correlated color space and denoise each channel of the new space separately. However, such a strategy can not fully exploit the correlated information between channels and is inadequate to obtain satisfactory results. To address this issue, this paper proposes a new multi-channel optimization model for color image denoising under the nuclear norm minus Frobenius norm minimization framework. Specifically, based on the block-matching, the color image is decomposed into overlapping RGB patches. For each patch, we stack its similar neighbors to form the corresponding patch matrix. The proposed model is performed on the patch matrix to recover its noise-free version. During the recovery process, a) a weight matrix is introduced to fully utilize the noise difference between channels; b) the singular values are shrunk adaptively without additionally assigning weights. With them, the proposed model can achieve promising results while keeping simplicity. To solve the proposed model, an accurate and effective algorithm is built based on the alternating direction method of multipliers framework. The solution of each updating step can be analytically expressed in closed-from. Rigorous theoretical analysis proves the solution sequences generated by the proposed algorithm converge to their respective stationary points. Experimental results on both synthetic and real noise datasets demonstrate the proposed model outperforms state-of-the-art models.
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彩色图像去噪的多通道核范数- Frobenius范数最小化方法
彩色图像去噪是各种图像处理和计算机视觉任务中经常遇到的问题。一种传统的策略是将RGB图像转换为相关性较低的颜色空间,并对新空间的每个通道分别去噪。然而,这种策略不能充分利用渠道间的相关信息,不足以获得满意的效果。针对这一问题,本文提出了一种核范数减去Frobenius范数最小化框架下彩色图像去噪的多通道优化模型。具体而言,基于分块匹配,将彩色图像分解为重叠的RGB小块。对于每个patch,我们将其相似的邻居叠加形成相应的patch矩阵。在补丁矩阵上执行该模型以恢复其无噪声版本。在恢复过程中,a)引入权值矩阵,充分利用信道间的噪声差;B)奇异值自适应收缩,无需额外分配权重。有了它们,所提出的模型可以在保持简单性的同时获得令人满意的结果。为了求解该模型,基于乘法器框架的交替方向法建立了一种准确有效的算法。每个更新步骤的解可以用闭式解析表示。严格的理论分析证明了该算法生成的解序列收敛于各自的平稳点。在合成和真实噪声数据集上的实验结果表明,所提出的模型优于目前最先进的模型。
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