Scale Mixtures of Gaussians and the Statistics of Natural Images
Wainwright, Martin J., Simoncelli, Eero P.
–Neural Information Processing Systems
The statistics of photographic images, when represented using multiscale (wavelet) bases, exhibit two striking types of non Gaussian behavior. First, the marginal densities of the coefficients have extended heavy tails. Second, the joint densities exhibit variance dependenciesnot captured by second-order models. We examine propertiesof the class of Gaussian scale mixtures, and show that these densities can accurately characterize both the marginal and joint distributions of natural image wavelet coefficients. This class of model suggests a Markov structure, in which wavelet coefficients arelinked by hidden scaling variables corresponding to local image structure.
Neural Information Processing Systems
Dec-31-2000
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