首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Multi-weighted nuclear norm minimization for real world image denoising
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Multi-weighted nuclear norm minimization for real world image denoising

机译:现实世界形象去噪的多加权核规范最小化

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摘要

The noise in real world images is much more complicated than additive Gaussian white noise that most existing denoising methods are designed for. The performances of the denoising methods aiming at additive Gaussian white noise on real world images are not satisfactory. A major feature of noise in real world images is that the noise levels vary with regions. We propose a denoising model named multi-weighted nuclear norm minimization according to the characteristic of the noise in real images which is the noise levels varying with regions. In our model, the objective function is divided into two parts: the data fidelity term and the regularization term. The regularization term is a weighted nuclear norm. We use two weight matrices on the data fidelity term to balance the data between channels and between regions, respectively. Since the objective function has no analytical solution, we use alternating direction method of multipliers to decompose the objective function into sub-problems with analytical solutions. We prove the effectiveness of the proposed model by experiments.
机译:真实世界图像中的噪音比粘性高斯白噪声更复杂,即大多数现有的去噪方法是针对的。针对现实世界形象的添加剂高斯白噪声的去噪方法的性能并不令人满意。现实世界图像中噪声的主要特征是噪声水平随区域而变化。我们提出了一种根据真实图像中噪声特征命名的多加权核规范最小化的去噪模式,这是与区域变化的噪声水平。在我们的模型中,目标函数分为两部分:数据保真度术语和正则化术语。正则化术语是加权核规范。我们在数据保真术语上使用两个权重矩阵,分别平衡通道之间的数据和区域之间的数据。由于目标函数没有分析解决方案,我们使用乘法器的交替方向方法将目标函数分解为具有分析解决方案的子问题。我们通过实验证明了所提出的模型的有效性。

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