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 signal-to-noise ratio relative to...
In this paper, we propose a fast image denoising method based on discrete Markov random fields and t...
We present a generic Bayesian framework for signal esti-mation that incorporates into the cost funct...
This paper introduces a novel stochastic approach to image denoising using an adaptive Monte Carlo s...
We develop a Bayesian model of digitized archival films and use this for denoising, or more specific...
We develop a Bayesian model of digitized archival films and use this for denoising, or more specific...
Abstract—Image sequence restoration has been steadily gaining in importance with the increasing prev...
Rather than concentrating on modeling the image prior probability whose structure is defined locally...
Prior models of image or scene structure are useful for dealing with "noise" and ambiguity that occu...
In recent years, several efforts have been done for producing Magnetic Resonance Image scanner with ...
Abstract—We introduce a machine learning approach to de-mosaicing, the reconstruction of color image...
This paper presents a new wavelet-based image denoising method, which extends a recently emerged "ge...
A novel denoising approach for Magnetic Resonance Images is presented within this manuscript. The me...
This thesis describes our work towards a unified framework for automatic restoration of dirt and blo...
technical reportThis paper presents a novel method for denoising MR images that relies on an optimal...
Abstract: Relations between deterministic (e.g. variational or PDE based methods) and Bayesian infer...
In this paper, we propose a fast image denoising method based on discrete Markov random fields and t...
We present a generic Bayesian framework for signal esti-mation that incorporates into the cost funct...
This paper introduces a novel stochastic approach to image denoising using an adaptive Monte Carlo s...
We develop a Bayesian model of digitized archival films and use this for denoising, or more specific...
We develop a Bayesian model of digitized archival films and use this for denoising, or more specific...
Abstract—Image sequence restoration has been steadily gaining in importance with the increasing prev...
Rather than concentrating on modeling the image prior probability whose structure is defined locally...
Prior models of image or scene structure are useful for dealing with "noise" and ambiguity that occu...
In recent years, several efforts have been done for producing Magnetic Resonance Image scanner with ...
Abstract—We introduce a machine learning approach to de-mosaicing, the reconstruction of color image...
This paper presents a new wavelet-based image denoising method, which extends a recently emerged "ge...
A novel denoising approach for Magnetic Resonance Images is presented within this manuscript. The me...
This thesis describes our work towards a unified framework for automatic restoration of dirt and blo...
technical reportThis paper presents a novel method for denoising MR images that relies on an optimal...
Abstract: Relations between deterministic (e.g. variational or PDE based methods) and Bayesian infer...
In this paper, we propose a fast image denoising method based on discrete Markov random fields and t...
We present a generic Bayesian framework for signal esti-mation that incorporates into the cost funct...
This paper introduces a novel stochastic approach to image denoising using an adaptive Monte Carlo s...