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全变差噪声消除问题的半光滑牛顿法
引用本文:王满,文有为,陈智斌. 全变差噪声消除问题的半光滑牛顿法[J]. 激光技术, 2017, 41(2): 289-295. DOI: 10.7510/jgjs.issn.1001-3806.2017.02.029
作者姓名:王满  文有为  陈智斌
作者单位:1.昆明理工大学 理学院 数学系, 昆明 650500
基金项目:国家自然科学基金资助项目
摘    要:为了达到全变差噪声消除的图像去噪目的,将去噪问题转换为优化问题。采用了结合广义最小残差法的半光滑牛顿法来解决相关优化问题,求解非对称线性方程组,进行了理论分析和实验验证,取得了将该方法与其它方法应用于1维信号、2维图像去噪实验的大量可行数据。结果表明,结合广义最小残差法的半光滑牛顿法的收敛速度比结合预处理共轭梯度法的半光滑牛顿法和交替方向乘子法更快,而且能够有效地消除噪声。

关 键 词:图像处理   全变差   半光滑牛顿法   广义最小残差法   交替方向乘子法
收稿时间:2016-01-13

Semi-smooth Newton method for total variation noise removal
WANG Man,WEN Youwei,CHEN Zhibin. Semi-smooth Newton method for total variation noise removal[J]. Laser Technology, 2017, 41(2): 289-295. DOI: 10.7510/jgjs.issn.1001-3806.2017.02.029
Authors:WANG Man  WEN Youwei  CHEN Zhibin
Abstract:In order to remove the noise of image based on total variation, the denoising problem was converted to optimization problem.Semi-smooth Newton method incorporated by generalized minimum residual method was used to solve the associated optimization problem and non-symmetric linear equations.After theoretical analysis and experimental verification, a great deal of feasible data of removal noise experiment for 1-D signal and 2-D image were obtained by different methods.The results show that semi-smooth Newton method incorporated by generalized minimum residual method converges faster than that incorporated by preconditioned conjugate gradients method and alternating direction method of multipliers algorithm.The proposed method can remove the noise of image effectively.
Keywords:image processing  total variation  semi-smooth Newton method  generalized minimum residual method  alternating direction method of multipliers algorithm
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