International audienceOvercomplete representations are attracting interest in image processing theory, particularly due to their potential to generate sparse representations of data based on their morphological diversity. We here consider a scenario of image denoising using an overcomplete dictionary of sparse linear transforms. Rather than using the basic approach where the denoised image is obtained by simple averaging of denoised estimates provided by each sparse transform, we here develop an elegant bayesian framework to optimally combine the individual estimates. Our derivation of the optimally combined denoiser relies on a scale mixture of gaussian (SMG) prior on the coefficients in each representation transform. Exploiting this prior...
Sparse representations of images have revoked remarkable in-terest recently. The assumption that nat...
With the explosion in the number of digital images taken every day, people are demanding more accura...
International audienceThis book presents the state of the art in sparse and multiscale image and sig...
International audienceOvercomplete representations are attracting interest in image processing theor...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
Sparse coding is a challenging and promising theme in image denoising. Its main goal is to learn a s...
Image denoising is an interesting inverse problem. By denoising we mean finding a clean image, given...
Over the last decade, a number of algorithms have shown promising results in removing additive white...
International audienceSparse modeling involves constructing a succinct representation of initial dat...
Abstract In image processing, sparse coding has been known to be relevant to both variational and Ba...
To remove more complex or unknown noise, we propose a new dictionary learning model by assuming nois...
Recent work in signal processing in general and image processing in particular deals with sparse rep...
International audienceThe problem of removing white zero-mean Gaussian noise from an image is an int...
We propose a new statistical model for image restoration in which neighbourhoods of wavelet subbands...
Sparse representations of images have revoked remarkable in-terest recently. The assumption that nat...
With the explosion in the number of digital images taken every day, people are demanding more accura...
International audienceThis book presents the state of the art in sparse and multiscale image and sig...
International audienceOvercomplete representations are attracting interest in image processing theor...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
Sparse coding is a challenging and promising theme in image denoising. Its main goal is to learn a s...
Image denoising is an interesting inverse problem. By denoising we mean finding a clean image, given...
Over the last decade, a number of algorithms have shown promising results in removing additive white...
International audienceSparse modeling involves constructing a succinct representation of initial dat...
Abstract In image processing, sparse coding has been known to be relevant to both variational and Ba...
To remove more complex or unknown noise, we propose a new dictionary learning model by assuming nois...
Recent work in signal processing in general and image processing in particular deals with sparse rep...
International audienceThe problem of removing white zero-mean Gaussian noise from an image is an int...
We propose a new statistical model for image restoration in which neighbourhoods of wavelet subbands...
Sparse representations of images have revoked remarkable in-terest recently. The assumption that nat...
With the explosion in the number of digital images taken every day, people are demanding more accura...
International audienceThis book presents the state of the art in sparse and multiscale image and sig...