4.7 Article

Image Modeling and Denoising With Orientation-Adapted Gaussian Scale Mixtures

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 17, Issue 11, Pages 2089-2101

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2008.2004796

Keywords

Gaussian Scale Mixtures; image denoising; image processing; statistical image modeling; wavelet transforms

Funding

  1. Howard Hughes Medical Institute Funding Source: Medline

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We develop a statistical model to describe the spatially varying behavior of local neighborhoods of coefficients in a multiscale image representation. Neighborhoods are modeled as samples of a multivariate Gaussian density that are modulated and rotated according to the values of two hidden random variables, thus allowing the model to adapt to the local amplitude and orientation of the signal. A third hidden variable selects between this oriented process and a nonoriented scale mixture of Gaussians process, thus providing adaptability to the local orientedness of the signal. Based on this model, we develop an optimal Bayesian least squares estimator for denoising images and show through simulations that the resulting method exhibits significant improvement over previously published results obtained with Gaussian scale mixtures.

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