Title :
Sparse representations in nested non-linear models
Author :
DreÌmeau, AngeÌlique ; HeÌas, Patrick ; Herzet, CeÌdric
Author_Institution :
ESPCI ParisTech, Paris, France
Abstract :
Following recent contributions in non-linear sparse representations, this work focuses on a particular non-linear model, defined as the nested composition of functions. Recalling that most linear sparse representation algorithms can be straightforwardly extended to non-linear models, we emphasize that their performance highly relies on an efficient computation of the gradient of the objective function. In the particular case of interest, we propose to resort to a well-known technique from the theory of optimal control to evaluate the gradient. This computation is then implemented into the “ℓ1-reweighted” procedure proposed by Candès et al., leading to a non-linear extension of it.
Keywords :
dynamic programming; gradient methods; optimal control; relaxation theory; signal representation; ℓ0-norm relaxation; ℓ1-reweighted procedure; dynamic programming; linear sparse representation algorithms; nested composition of functions; nested nonlinear models; nonlinear sparse representations; objective function gradient; optimal control; Computational modeling; Cost function; Dictionaries; Mathematical model; Standards; Vectors; ℓ0-norm relaxation; Non-linear sparse representation; dynamic programming;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2014 IEEE International Conference on
Conference_Location :
Florence
DOI :
10.1109/ICASSP.2014.6855147