According to both domain expert knowledge and empirical evidence, wavelet coefficients of real signals tend to exhibit clustering patterns, in that they contain connected regions of coefficients of similar magnitude (large or small). A wavelet de-noising approach that takes into account such a feature of the signal may in practice outperform other, more vanilla methods, both in terms of the estimation error and visual appearance of the estimates. Motivated by this observation, we present a Bayesian approach to wavelet de-noising, where dependencies between neighbouring wavelet coefficients are a priori modelled via a Markov chain-based prior, that we term the caravan prior. Posterior computations in our method are performed via the Gibbs sa...
International audienceThis study proposes and justifies a Bayesian approach to modeling wavelet coef...
Inverse problems are examples of regression with more unknowns than the amount of information in the...
In wavelet shrinkage and thresholding, most of the standard techniques do not consider information t...
According to both domain expert knowledge and empirical evidence, wavelet coefficients of real signa...
The code implements the wavelet de-noising method with caravan prior from Gugushvili et al. (2018). ...
The implementation of a Bayesian approach to wavelet regression that corresponds to the human visual...
International audienceA nonparametric Bayesian estimator in the wavelet domain is presented. In this...
Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression....
25 pagesInternational audienceIn this paper we compare wavelet Bayesian rules taking into account th...
There has been great interest in recent years in the development of wavelet methods for estimating a...
In this paper we propose a block shrinkage method in the wavelet domain for estimating an unknown fu...
We use saddlepoint approximation to derive credible intervals for Bayesian wavelet regression estima...
Wavelet threshold algorithms replace small magnitude wavelet coefficients with zero and keep or shri...
We discuss a Bayesian formalism which gives rise to a type of wavelet threshold estimation in nonpar...
We consider an empirical Bayes approach to standard nonparametric regression estimation using a nonl...
International audienceThis study proposes and justifies a Bayesian approach to modeling wavelet coef...
Inverse problems are examples of regression with more unknowns than the amount of information in the...
In wavelet shrinkage and thresholding, most of the standard techniques do not consider information t...
According to both domain expert knowledge and empirical evidence, wavelet coefficients of real signa...
The code implements the wavelet de-noising method with caravan prior from Gugushvili et al. (2018). ...
The implementation of a Bayesian approach to wavelet regression that corresponds to the human visual...
International audienceA nonparametric Bayesian estimator in the wavelet domain is presented. In this...
Wavelet shrinkage estimation is an increasingly popular method for signal denoising and compression....
25 pagesInternational audienceIn this paper we compare wavelet Bayesian rules taking into account th...
There has been great interest in recent years in the development of wavelet methods for estimating a...
In this paper we propose a block shrinkage method in the wavelet domain for estimating an unknown fu...
We use saddlepoint approximation to derive credible intervals for Bayesian wavelet regression estima...
Wavelet threshold algorithms replace small magnitude wavelet coefficients with zero and keep or shri...
We discuss a Bayesian formalism which gives rise to a type of wavelet threshold estimation in nonpar...
We consider an empirical Bayes approach to standard nonparametric regression estimation using a nonl...
International audienceThis study proposes and justifies a Bayesian approach to modeling wavelet coef...
Inverse problems are examples of regression with more unknowns than the amount of information in the...
In wavelet shrinkage and thresholding, most of the standard techniques do not consider information t...