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Image denoising algorithms based on fractional sinc(alpha) with the covariance of fractional Gaussian fields

机译:基于分数sinc(alpha)与分数高斯场的协方差的图像去噪算法

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Image denoising has been considered as an essential image processing problem that is difficult to address. In this study, two image denoising algorithms based on fractional calculus operators are proposed. The first algorithm uses the convolution of covariance of fractional Gaussian fields with the fractional sinc(alpha) (FS) (sinc function of order alpha). The second algorithm uses the convolution of covariance of fractional Gaussian fields with the fractional differential Heaviside function, which is the limit of FS. In the proposed algorithms, the given noisy image is processed in a blockwise manner. Each processed pixel is convolved with the mask windows on four directions. The final filtered image based on either FS or fractional differential Heaviside function (FDHS) can be obtained by determining the average magnitude of the four convolution test results for each filter mask windows. The outcomes are evaluated using visual perception and peak signal to noise ratio. Experiments prove the effectiveness of the proposed algorithms in removing Gaussian and Speckle noise. The proposed FS and FDHS achieved average PSNR of 28.88, 28.26 dB, respectively, for Gaussian noise. The improvements outperform those achieved with the use of Gaussian and Wiener filters.
机译:图像去噪被认为是难以解决的基本图像处理问题。在这项研究中,提出了两种基于分数微积分算子的图像去噪算法。第一种算法使用分数高斯场的协方差与分数sinc(alpha)(FS)(α阶辛克函数)的卷积。第二种算法使用分数高斯场的协方差与分数差分Heaviside函数的卷积,这是FS的极限。在提出的算法中,以块方式处理给定的噪声图像。每个处理的像素在四个方向上与蒙版窗口卷积。通过确定每个滤波器蒙版窗口的四个卷积测试结果的平均幅度,可以获得基于FS或分数微分Heaviside函数(FDHS)的最终滤波图像。使用视觉感知和峰值信噪比评估结果。实验证明了该算法在去除高斯和斑点噪声方面的有效性。对于高斯噪声,建议的FS和FDHS分别达到28.88、28.26 dB的平均PSNR。这些改进优于使用高斯和维纳滤波器实现的改进。

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