Abstract

We describe a method for removing noise from digital images, based on a statistical model of the coefficients of an overcomplete multiscale oriented basis. Neighborhoods of coefficients at adjacent positions and scales are modeled as the product of two independent random variables: a Gaussian vector and a hidden positive scalar multiplier. The latter modulates the local variance of the coefficients in the neighborhood, and is thus able to account for the empirically observed correlation between the coefficient amplitudes. Under this model, the Bayesian least squares estimate of each coefficient reduces to a weighted average of the local linear estimates over all possible values of the hidden multiplier variable. We demonstrate through simulations with images contaminated by additive white Gaussian noise that the performance of this method substantially surpasses that of previously published methods, both visually and in terms of mean squared error.

Keywords

MathematicsPattern recognition (psychology)WaveletGaussianGaussian noiseScalar (mathematics)Mean squared errorAdditive white Gaussian noiseBayesian probabilityWhite noiseArtificial intelligenceStatisticsAlgorithmComputer science

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2004 17126 citations

Publication Info

Year
2003
Type
article
Volume
12
Issue
11
Pages
1338-1351
Citations
2236
Access
Closed

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Javier Portilla, Vasily Strela, Martin J. Wainwright et al. (2003). Image denoising using scale mixtures of gaussians in the wavelet domain. IEEE Transactions on Image Processing , 12 (11) , 1338-1351. https://doi.org/10.1109/tip.2003.818640

Identifiers

DOI
10.1109/tip.2003.818640