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图像中广义高斯噪声形状参数的近似估计
引用本文:陈文,方向忠.图像中广义高斯噪声形状参数的近似估计[J].计算机工程,2011,37(22):204-206.
作者姓名:陈文  方向忠
作者单位:上海交通大学图像通信与信息处理研究所上海市数字媒体处理与传输重点实验室,上海,200240
摘    要:针对图像中广义高斯噪声的形状参数p通常为未知的问题,提出一种用于计算p的近似矩估计算法。从原图像中提取噪声样本,采用分段函数对p的比率函数进行数值拟合,从而得到p的近似表达式。实验结果表明,当噪声样本值准确时,p的估计值能精确到小数点后2位,尤其适用于均匀噪声的情况,估计误差比传统算法小0.3;当噪声样本值不准确时,估计精度与门限K的选择有关。

关 键 词:广义高斯噪声  形状参数  矩估计  数值拟合
收稿时间:2011-04-19

Approximate Shape Parameter Estimation of Generalized Gaussian Noise in Image
CHEN Wen,FANG Xiang-zhong.Approximate Shape Parameter Estimation of Generalized Gaussian Noise in Image[J].Computer Engineering,2011,37(22):204-206.
Authors:CHEN Wen  FANG Xiang-zhong
Affiliation:(Shanghai Key Laboratory of Digital Media Processing and Transmissions,Institute of Image Communication and Information Processing,Shanghai Jiaotong University,Shanghai 200240,China)
Abstract:Aiming at estimating the unknown shape parameter p of generalized Gaussian noise in image,this paper proposes a novel approximated moment estimation algorithm of p.It extracts noise samples from the original image,and fits the Ratio Function(RF) of p by using piecewise function,yielding an approximated expression of p.Experimental results demonstrate that,when the noise samples are precise,the estimates are accurate to the second decimal place,especially in the case of noise with uniform distribution,the estimation error is 0.3 smaller than that of the traditional algorithm.As for the imprecise noise samples,the estimation precision is dependent on the threshold parameter K.
Keywords:generalized Gaussian noise  shape parameter  moments estimation  numerical fitting
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