If a signal is known to have a sparse representation with respect to a frame, it can be estimated from a noise-corrupted observation by finding the best sparse approximation to . Removing noise in this manner depends on the frame efficiently representing the signal while it inefficiently represents the noise. The mean-squared error (MSE) of this denoising scheme and the probability that the estimate has the same sparsity pattern as the original signal are analyzed. First an MSE bound that depends on a new bound on approximating a Gaussian signal as a linear combination of elements of an overcomplete dictionary is given. Further analyses are for dictionaries generated randomly according to a spherically-symmetric distribution and signals ...
To remove more complex or unknown noise, we propose a new dictionary learning model by assuming nois...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
These notes describe an approach for the restoration of degraded signals using sparsity. This approa...
If a signal is known to have a sparse representation with respect to a frame, it can be estimated fr...
Abstract If a signal x is known to have a sparse repre-sentation with respect to a frame, the signa...
International audienceCompressed sensing theory promises to sample sparse signals using a limited nu...
Abstract—We investigate the recovery of signals exhibiting a sparse representation in a general (i.e...
A well-known result states that, without noise, it is better to overestimate the support of a sparse...
International audienceA well-known result [1, Lemma 3.4] states that, without noise, it is better to...
International audienceApproximating a signal or an image with a sparse linear expansion from an over...
Abstract—We investigate the recovery of signals exhibiting a sparse representation in a general (i.e...
A denoising algorithm seeks to remove perturbations or errors from a signal. The last three decades ...
Compressed sensing takes advantage that most of the natural signals can be sparsely represented via ...
A popular approach within the signal processing and machine learning communities consists in mod-ell...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
To remove more complex or unknown noise, we propose a new dictionary learning model by assuming nois...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
These notes describe an approach for the restoration of degraded signals using sparsity. This approa...
If a signal is known to have a sparse representation with respect to a frame, it can be estimated fr...
Abstract If a signal x is known to have a sparse repre-sentation with respect to a frame, the signa...
International audienceCompressed sensing theory promises to sample sparse signals using a limited nu...
Abstract—We investigate the recovery of signals exhibiting a sparse representation in a general (i.e...
A well-known result states that, without noise, it is better to overestimate the support of a sparse...
International audienceA well-known result [1, Lemma 3.4] states that, without noise, it is better to...
International audienceApproximating a signal or an image with a sparse linear expansion from an over...
Abstract—We investigate the recovery of signals exhibiting a sparse representation in a general (i.e...
A denoising algorithm seeks to remove perturbations or errors from a signal. The last three decades ...
Compressed sensing takes advantage that most of the natural signals can be sparsely represented via ...
A popular approach within the signal processing and machine learning communities consists in mod-ell...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
To remove more complex or unknown noise, we propose a new dictionary learning model by assuming nois...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
These notes describe an approach for the restoration of degraded signals using sparsity. This approa...