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具有自适应窗口的双变量模型图像去噪方法
引用本文:董雪燕,郑永果.具有自适应窗口的双变量模型图像去噪方法[J].计算机应用与软件,2012,29(6):135-136,161.
作者姓名:董雪燕  郑永果
作者单位:山东科技大学信息科学与工程学院 山东青岛266510
基金项目:山东省教育厅计划项目(011541808)
摘    要:针对小波域去噪方法BiShrink-local(双变量萎缩局部方差估计)会造成图像的细节信息丢失的问题,给出一种具有自适应窗口的双变量模型图像去噪方法.该方法一方面继承原方法的优点,另一方面又利用区域生长原理,通过判断图像的小波系数值是否属于同质,从而更好地区分噪声和细节信息.通过实验表明,该方法能对含有高斯噪声的图像进行较好地去噪,同时在保持细节方面优于原来的方法.

关 键 词:图像去噪  双树复小波变换  双变量模型  自适应窗口

BIVARIATE MODEL IMAGE DENOISING WITH ADAPTIVE WINDOWS
Dong Xueyan , Zheng Yongguo.BIVARIATE MODEL IMAGE DENOISING WITH ADAPTIVE WINDOWS[J].Computer Applications and Software,2012,29(6):135-136,161.
Authors:Dong Xueyan  Zheng Yongguo
Affiliation:Dong Xueyan Zheng Yongguo(College of Information Science and Engineering,Shandong University of Science and Technology,Qingdao 266510,Shandong,China)
Abstract:Bivariate shrinkage with local invariance estimation——a wavelet-based denoising method will cause image detail information lost.To solve this issue,we propose a bivariate model image denoising method with adaptive windows.The proposed method utilises the principle of region growing at one hand,and inherits the advantages of BiShrink-local on the other hand,by judging whether the wavelet coefficients of image are of same properties,it can preferably differentiate the noisy signal and detailed information.Experimental results show that the method can denoise better against the image with Gaussian noisy,at the same time,it outperforms the BiShrink-local in retaining the details.
Keywords:Image denoising DT-CWT Bishrink model Adaptive windows
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