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Using bivariate Gaussian distribution for image denoising in the 2-D complex wavelet domain

机译:在二维复数小波域中使用双变量高斯分布进行图像去噪

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Within this framework we describe a novel technique for removing noise from digital noisy images, based on the modeling of wavelet coefficient with bivariate normal distribution and statistical calculation. A method for image denoising is presented in this paper to maximize a posterior density function (MAP) estimator using a bivariate normal random variable. We use our denoising algorithm in 2-D complex wavelet domain comparing with soft and hard thresholding method of stationary wavelet analysis tool (2-D SWT). Despite the simplicity of our method in its implementation, our denoising results achieves better performance than the other mentioned methods both visually and in terms of peak signal-to-noise ratio (PSNR).
机译:在此框架内,我们描述了一种基于双变量正态分布的小波系数建模和统计计算的数字噪声图像消除噪声的新技术。本文提出了一种图像去噪方法,以使用二元正态随机变量最大化后验密度函数(MAP)估计量。与固定小波分析工具(2-D SWT)的软阈值和硬阈值方法相比,我们在二维复数小波域中使用了降噪算法。尽管我们的方法实现起来很简单,但在视觉上以及在峰值信噪比(PSNR)方面,我们的去噪结果均比其他提到的方法获得更好的性能。

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