Compressed sensing with preconditioning for sparse recovery with subsampled matrices of Slepian prolate functions
Academic Article
Publication Date:
2013
abstract:
Efficient recovery of smooth functions which are s-sparse with respect
to the basis of so-called prolate spheroidal wave functions from a small number of
random sampling points is considered. The main ingredient in the design of both the
algorithms we propose here consists in establishing a uniform L? bound on the measurement
ensembles which constitute the columns of the sensingmatrix. Such a bound
provides us with the restricted isometry property for this rectangular random matrix,
which leads to either the exact recovery property or the "best s-term approximation"
of the original signal by means of the 1 minimization program. The first algorithm
considers only a restricted number of columns for which the L? holds as a consequence
of the fact that eigenvalues of the Bergman's restriction operator are close to
1 whereas the second one allows for a wider system of PSWF by taking advantage
of a preconditioning technique. Numerical examples are spread throughout the text to
illustrate the results.
Iris type:
01.01 Articolo in rivista
List of contributors:
Gosse, Laurent
Published in: