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非高斯双变量模型contourlet图像去噪
引用本文:邓承志,曹汉强,汪胜前.非高斯双变量模型contourlet图像去噪[J].红外与激光工程,2006,35(2):234-237.
作者姓名:邓承志  曹汉强  汪胜前
作者单位:1. 华中科技大学,电子与信息工程系,湖北,武汉,430074
2. 江西科技师范学院,应用物理系,江西,南昌,330013
摘    要:Contourlet变换是继小波变换之后的又一新变换.由于contourlet变换的多尺度和多方向特性,能有效地捕获到自然图像中的轮廓,并对其进行稀疏表示.详细分析了图像contourlet系数的统计特性,并利用非高斯双变量分布对系数层间相关性进行建模.最后,将此分布应用于图像去噪,就PSNR、NMSE和视觉质量这三方面的评价指标与contourlet HMT和小波阈值法进行了比较.实验结果表明:算法能获得较好的结果,尤其是对于含有丰富纹理的图像.

关 键 词:Contourlet变换  图像去噪  小波阈值  图像模型
文章编号:1007-2276(2006)02-0234-04
收稿时间:2005-07-23
修稿时间:2005-10-18

Contourlet based image denoising using non-Gaussian bivariate model
DENG Cheng-zhi,CAO Han-qiang,WANG Sheng-qian.Contourlet based image denoising using non-Gaussian bivariate model[J].Infrared and Laser Engineering,2006,35(2):234-237.
Authors:DENG Cheng-zhi  CAO Han-qiang  WANG Sheng-qian
Abstract:The contourlet transform is a new extension of the wavelet transform in two dimension.Because of its multiscale and directional properties, the contourlet transform can effectively capture the smooth contours that are the dominant features in natural images with only a small number of coefficients. The statistics of the contourlet coefficients of natural images in detail and model contourlet coefficients using non-Gaussian bivariate distribution that captures their interscale dependencies are studied. In the end,this model was tested for the image denoising. It was also compared with contourlet HMT and wavelet thresholding using PSNR, NMSE and visual quality. The results show that great performance improvements over other methods, especially for the images that have abundant texture.
Keywords:Contourlet transform  Image denoising  Wavelet thresholding  Image model
本文献已被 CNKI 维普 万方数据 等数据库收录!
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