Removing Mixture of Gaussian and Impulse Noise by Patch-Based Weighted Means

被引:1
|
作者
Haijuan Hu
Bing Li
Quansheng Liu
机构
[1] Northeastern University at Qinhuangdao,School of Mathematics and Statistics
[2] College of Information Science and Engineering,CNRS UMR 6205, LMBA
[3] Northeastern University,Department of Mathematics
[4] Université de Bretagne-Sud,undefined
[5] Zhongshan Polytechnic,undefined
来源
关键词
Gaussian noise; Impulse noise; Mixed noise; Trilateral filter; Non-local means filter; Convergence theorems; Degree of similarity; Estimation of PSNR ;
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学科分类号
摘要
We first establish a law of large numbers and a convergence theorem in distribution to show the rate of convergence of the non-local means filter for removing Gaussian noise. Based on the convergence theorems, we propose a patch-based weighted means filter for removing an impulse noise and its mixture with a Gaussian noise by combining the essential idea of the trilateral filter and that of the non-local means filter. Experiments show that our filter is competitive compared to recently proposed methods. We also introduce the notion of degree of similarity to measure the impact of the similarity among patches on the non-local means filter for removing a Gaussian noise, as well as on our new filter for removing an impulse noise or a mixed noise. Using again the convergence theorem in distribution, together with the notion of degree of similarity, we obtain an estimation for the PSNR value of the denoised image by the non-local means filter or by the new proposed filter, which is close to the real PSNR value.
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页码:103 / 129
页数:26
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