Wavelet thresholding for some classes of non-Gaussian noise

被引:50
作者
Antoniadis, A
Leporini, D
Pesquet, JC
机构
[1] Univ Grenoble 1, LMC, Lab IMAG, F-38041 Grenoble 09, France
[2] Univ Marne la Vallee, F-77454 Marne La Vallee, France
关键词
wavelets; denoising; regularization; MAP; non-Gaussian noises; exponential power distributions; Cauchy distribution;
D O I
10.1111/1467-9574.00211
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Wavelet shrinkage and thresholding methods constitute a powerful way to carry out signal denoising, especially when the underlying signal has a sparse wavelet representation. They are computationally fast, and automatically adapt to the smoothness of the signal to be estimated. Nearly minimax properties for simple threshold estimators over a large class of function spaces and for a wide range of loss functions were established in a series of papers by Donoho and Johnstone. The notion behind these wavelet methods is that the unknown function is well approximated by a function with a relatively small proportion of nonzero wavelet coefficients. In this paper, we propose a framework in which this notion of sparseness can be naturally expressed by a Bayesian model for the wavelet coefficients of the underlying signal. Our Bayesian formulation is grounded on the empirical observation that the wavelet coefficients can be summarized adequately by exponential power prior distributions and allows us to establish close connections between wavelet thresholding techniques and Maximum A Posteriori estimation for two classes of noise distributions including heavy-tailed noises. We prove that a great variety of thresholding rules are derived from these MAP criteria. Simulation examples are presented to substantiate the proposed approach.
引用
收藏
页码:434 / 453
页数:20
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