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Weighted Nuclear Norm Minimization Image Denoising Method Based on Noise Variance Estimation

机译:基于噪声方差估计的加权核规范最小化图像去噪方法

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Weighted nuclear norm minimization (WNNM) uses image nonlocal similarity to deal with image denoising; this method not only maintains the detailed texture edge structure but also reduces the impact on distortion of the image after denoising. However, WNNM method assumes that the noise variance of the image is known, where the parameter is set by subjective experience that will result in incompleteness in theory. To handle this issue, it is proposed to pre-estimate noise variance based on discrete wavelet transformation (DWT). The simulation result shows that compared with original WNNM method, pre-estimate noise variance in image denoising has a faster algorithm running speed and a higher image signal-to-noise ratio after denoising.
机译:加权核规范最小化(WNNM)使用图像非识别相似性来处理图像去噪;该方法不仅维持详细的纹理边缘结构,而且还减少了在去噪后对图像失真的影响。然而,WNNM方法假定图像的噪声方差是已知的,其中参数由主观体验设置,这将导致理论上不完整。为了处理这个问题,建议基于离散小波变换(DWT)进行预估计噪声差异。仿真结果表明,与原始WNNM方法相比,图像去噪的预估计噪声方差具有更快的算法运行速度以及去噪后的图像信噪比更高。

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