We introduce an adaptive
continuous-domain modeling approach to texture and natural images. The continuous-domain
image is assumed to be a smooth function, and we embed it in a parameterized
Sobolev space. We point out a link between Sobolev spaces and stochastic
auto-regressive models, and exploit it for optimally choosing Sobolev
parameters from available pixel values. To this aim, we use exact continuousto-
discrete mapping of the auto-regressive model that is based on symmetric
exponential splines. The mapping is computationally efficient, and we exploit
it for maximizing an approximated Gaussian likelihood function.We account for
non-Gaussian Lévytype processes by deriving a more robust estimator that is
based on the sample auto-correlation sequence. Both estimators use multiple
initialization values for overcoming the local minima structure of the fitting
criteria. Experimental image resizing results indicate that the auto-correlation
criterion can cope better with non-Gaussian processes and model mismatch. Our
work demonstrates the importance of the auto-correlation function in adaptive
image interpolation and image modeling tasks, and we believe it is instrumental
in other image processing tasks as well.
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