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Image denoising in contourlet domain based on a normal inverse Gaussian prior

机译:基于正态逆高斯先验的Contourlet域图像降噪

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This paper presents a new image denoising algorithm based on the modeling of contourlet coefficients in each subband with a normal inverse Gaussian (NIG) probability density function (PDF). This PDF is able to model the heavy-tailed nature of contourlet coefficients and the local parameters model the intrascale dependency between the coefficients. Within this framework, we describe a novel method for image denoising based on designing maximum a posteriori (MAP). Furthermore, the cycle spinning algorithm is employed to modify the Gibbs phenomenon around edges caused by the lack of translation invariance of the contourlet transform. Experimental results prove that the new method can remove Gaussian white noise effectively, reserve image edges better and enhance the peak signal-to-noise ratio.
机译:本文提出了一种新的图像去噪算法,该算法基于每个子带的轮廓波系数建模,并具有正态高斯逆概率密度函数(PDF)。该PDF能够对轮廓波系数的重尾性质进行建模,而局部参数则对系数之间的尺度内相关性进行建模。在此框架内,我们描述了一种基于设计最大后验(MAP)的图像去噪新方法。此外,采用循环旋转算法来修正轮廓波变换缺乏平移不变性引起的边缘周围的吉布斯现象。实验结果表明,该方法可以有效地去除高斯白噪声,更好地保留图像边缘,提高峰值信噪比。

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