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Image denoising employing a closed form solution of MMSE using multivariate radial-exponential priors with approximate MAP estimate for statistical parameter

机译:图像去噪使用多变量径向指数前沿使用具有近似映射参数的近似地图估计的MMSE闭合形式溶液

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The Performance of various estimators, such as minimum mean square error (MMSE) is strongly dependent on correctness of the proposed model for original data distribution. Therefore, the selection of a proper model for distribution of wavelet coefficients is important in wavelet based image denoising. This paper presents a new image denoising algorithm based on the modeling of wavelet coefficients in each Subband with multivariate radial exponential probability density function (pdf) with approximated MAP estimation for statistical parameter (local variance) using exponential priori. Generally these multivariate extensions do not result in a closed form expression, and the solution requires numerical solutions as in [1]. However, we drive a closed form MMSE shrinkage functions for a Radial-Exponential random vector in Gaussian noise. Experimental results show that our proposed method, MMSE_TriShrink_Radial, outperforms several exiting methods in terms of peak signal-to-noise ratio (PSNR).
机译:各种估计器的性能,例如最小均方误差(MMSE)强烈依赖于原始数据分布模型的正确性。因此,在基于小波的图像去噪中,选择用于分布小波系数的适当模型。本文介绍了一种新的图像去噪算法,其基于具有多变量径向指数概率密度函数(PDF)的每个子带中的小波系数建模,其使用指数先验与统计参数(局部方差)的近似映射估计。通常,这些多变量延伸不会导致闭合形式表达,解决方案需要数字解决方案如[1]中。然而,我们在高斯噪声中驱动封闭的形式收缩功能,用于高斯噪声中的径向指数随机向量。实验结果表明,我们提出的方法MMSE_TRISHRINK_RADIAL,在峰值信噪比(PSNR)方面优于几种退出方法。

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