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A Cartoon-Texture Decomposition Based Multiplicative Noise Removal Method

机译:基于卡通纹理分解的乘法噪声清除方法

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摘要

We propose a new frame for multiplicative noise removal. To improve the multiplicative denoising performance, we add the regularization of texture component in the denoising model, designing a multiscale multiplicative noise removal model. The proposed model is jointly convex and can be easily solved by optimization algorithms. We introduce Douglas-Rachford splitting method to solve the proposed model. In the algorithm, we make full use of some important proximity operators, which have closed expression or can be executed in one time iteration. In particular, the proximity of H-1 norm is deduced, which is just the Fourier domain filtering. In the process of simulation experiments, we first analyze and select the needed parameters and then test the experiments on several images using the designed algorithm and the given parameters. Finally, we compare the denoising performance of the proposed model with the existing models, in which the signal to noise ratio (SNR) and the peak signal to noise ratios (PSNRs) are applied to evaluate the noise suppressing effects. Experimental results demonstrate that the designed algorithms can solve the model perfectly and the recovery images of the proposed model have higher SNRs/PSNRs and better visual quality.
机译:我们提出了一种用于乘法噪声的新帧。为了提高乘法的去噪性能,我们在去噪模型中增加了纹理分量的正则化,设计了多尺寸乘法噪声清除模型。所提出的模型是共同凸的,可以通过优化算法容易地解决。我们介绍了Douglas-Rachford分裂方法来解决所提出的模型。在算法中,我们充分利用了一些具有封闭表达的重要邻近算子,或者可以在一次迭代中执行。特别地,推导了H-1规范的接近,这只是傅里叶域滤波。在仿真实验过程中,我们首先分析并选择所需的参数,然后使用设计的算法和给定参数测试几个图像上的实验。最后,我们将所提出的模型与现有模型进行比较,其中噪声比(SNR)和峰值信号与噪声比(PSNRS)进行噪声比率(PSNR)来评估噪声抑制效果。实验结果表明,设计的算法可以完美地解决模型,并且所提出的模型的恢复图像具有更高的SNR / PSNR和更好的视觉质量。

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