Sciweavers

ICIP
2006
IEEE

Denoising Archival Films using a Learned Bayesian Model

15 years 1 months ago
Denoising Archival Films using a Learned Bayesian Model
We develop a Bayesian model of digitized archival films and use this for denoising, or more specifically de-graining, individual frames. In contrast to previous approaches our model uses a learned spatial prior and a unique likelihood term that models the physics that generates the image grain. The spatial prior is represented by a high-order Markov random field based on the recently proposed Field-of-Experts framework. We propose a new model of the image grain in archival films based on an inhomogeneous beta distribution in which the variance is a function of image luminance. We train this noise model for a particular film and perform de-graining using a diffusion method. Quantitative results show improved signalto-noise ratio relative to the standard ad hoc Gaussian noise model.
Teodor Mihai Moldovan, Stefan Roth, Michael J. Bla
Added 22 Oct 2009
Updated 22 Oct 2009
Type Conference
Year 2006
Where ICIP
Authors Teodor Mihai Moldovan, Stefan Roth, Michael J. Black
Comments (0)