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Local Bivariate Cauchy Distribution for Video Denoising in 3-D Complex Wavelet Domain

机译:3-D复杂小波域视频去噪的本地双变共变量分布

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In this paper, we present a new video denoising algorithm using bivariate Cauchy probability density function (pdf) with local scaling factor for distribution of wavelet coefficients in each subband. The bivariate pdf takes into account the statistical dependency among wavelet coefficients and the local scaling factor model the empirically observed correlation between the coefficient amplitudes, Using maximum a posteriori (MAP) estimator and minimum mean squared estimator (MMSE), we describe two methods for video denoising which rely on the bivariate Cauchy random variables with high local correlation. Because separate 3-D transforms, such as ordinary 3-D wavelet transforms (DWT), have artifacts that degrade their performance for denoising, we implement our algorithms in 3-D complex wavelet transform (DCWT) domain. In addition, we use our denoising algorithm in 2-D DCWT domain, where the 2-D transform is applied to each frame individually. The simulation results show that our denoising algorithms achieve better performance than several published methods both visually and in terms of peak signal-to-noise ratio (PSNR).
机译:在本文中,我们使用了一种新的视频去噪算法,该视频去噪算法利用具有本地缩放因子的局部缩放因子,用于分布每个子带中的小波系数。双波子PDF考虑了小波系数的统计依赖性和局部缩放因子模型模拟系数幅度之间的经验观察的相关性,使用最大后升(MAP)估计器和最小均方估计器(MMSE),我们描述了两种视频方法依赖于具有高局部相关性的双焦化的Cauchy随机变量的去噪。因为单独的3-D变换(如普通的3-D小波变换(DWT),具有降低其去噪的性能的工件,所以我们在三维复数小波变换(DCWT)域中实现了我们的算法。此外,我们在2-D DCWT域中使用我们的去噪算法,其中2-D变换单独应用于每个帧。仿真结果表明,我们的去噪算法比视觉和峰值信噪比(PSNR)在视觉上和峰值信噪比(PSNR)中的几种发布方法实现了更好的性能。

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