DocumentCode :
1037767
Title :
The Gaussian Transform of Distributions: Definition, Computation and Application
Author :
Alecu, Teodor Iulian ; Voloshynovskiy, Sviatoslav ; Pun, Thierry
Author_Institution :
Comput. Vision & Multimedia Lab., Univ. of Geneva
Volume :
54
Issue :
8
fYear :
2006
Firstpage :
2976
Lastpage :
2985
Abstract :
This paper introduces the general-purpose Gaussian transform of distributions, which aims at representing a generic symmetric distribution as an infinite mixture of Gaussian distributions. We start by the mathematical formulation of the problem and continue with the investigation of the conditions of existence of such a transform. Our analysis leads to the derivation of analytical and numerical tools for the computation of the Gaussian transform, mainly based on the Laplace and Fourier transforms, as well as of the afferent properties set (e.g., the transform of sums of independent variables). The Gaussian transform of distributions is then analytically derived for the Gaussian and Laplacian distributions, and obtained numerically for the generalized Gaussian and the generalized Cauchy distribution families. In order to illustrate the usage of the proposed transform we further show how an infinite mixture of Gaussians model can be used to estimate/denoise non-Gaussian data with linear estimators based on the Wiener filter. The decomposition of the data into Gaussian components is straightforwardly computed with the Gaussian transform, previously derived. The estimation is then based on a two-step procedure: the first step consists of variance estimation, and the second step consists of data estimation through Wiener filtering. To this purpose, we propose new generic variance estimators based on the infinite mixture of Gaussians prior. It is shown that the proposed estimators compare favorably in terms of distortion with the shrinkage denoising technique and that the distortion lower bound under this framework is lower than the classical minimum mean-square error bound
Keywords :
Fourier transforms; Gaussian distribution; Laplace transforms; Wiener filters; least mean squares methods; signal denoising; Fourier transform; Laplace transform; Wiener filtering; distortion lower bound; general-purpose Gaussian distribution transform; generalized Cauchy distribution; generic symmetric distribution; independent variable sum transform; linear estimators; mathematical formulation; minimum mean-square error bound; nonGaussian data denoising; nonGaussian data estimation; shrinkage denoising technique; variance estimation; Codes; Computer applications; Distributed computing; Fourier transforms; Gaussian distribution; Laplace equations; Noise reduction; Signal processing; Wiener filter; Yield estimation; Denoising; Gaussian mixture; Gaussian transform of distributions; generalized Gaussian; shrinkage;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2006.877657
Filename :
1658253
Link To Document :
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