首页> 外文会议>Wavelets XII pt.2; Proceedings of SPIE-The International Society for Optical Engineering; vol.6701 pt.2 >Modeling Statistical Properties of Wavelets Using a Mixture of Bivariate Cauchy Models and Its Application for Image Denoising in Complex Wavelet Domain
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Modeling Statistical Properties of Wavelets Using a Mixture of Bivariate Cauchy Models and Its Application for Image Denoising in Complex Wavelet Domain

机译:利用二元柯西模型混合模型对小波统计特性建模及其在复杂小波域图像去噪中的应用

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摘要

In this paper, we design a bivariate maximum a posteriori (MAP) estimator that supposes the prior of wavelet coefficients as a mixture of bivariate Cauchy distributions. This model not only is a mixture but is also bivariate. Since mixture models are able to capture the heavy-tailed property of wavelets and bivaraite distributions can model the intrascale dependences of wavelet coefficients, this bivariate mixture probability density function (pdf) can better capture statistical properties of wavelet coefficients. The simulation results show that our proposed technique achieves better performance than other methods employing non mixture pdfs such as bivariate Cauchy pdf and circular symmetric Laplacian pdf visually and in terms of peak signal-to-noise ratio (PSNR). We also compare our algorithm with several recently published denoising methods and see that it is among the best reported in the literature.
机译:在本文中,我们设计了一个二元最大后验(MAP)估计器,该估计器假设小波系数的先验是二元柯西分布的混合。该模型不仅是混合的,而且是双变量的。由于混合模型能够捕获小波的重尾特性,而双钙铁矿分布可以建模小波系数的尺度内相关性,因此该双变量混合概率密度函数(pdf)可以更好地捕获小波系数的统计特性。仿真结果表明,相对于使用非混合pdf的其他方法(例如双变量Cauchy pdf和圆形对称Laplacian pdf),我们提出的技术在视觉上以及在峰值信噪比(PSNR)方面均达到了更好的性能。我们还将算法与最近发布的几种去噪方法进行了比较,发现它是文献中报道得最好的算法之一。

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