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A numerical exploration of compressed sampling recovery

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Date
2010
Link to item file
http://hal.archives-ouvertes.fr/hal-00402455/en/
Dewey
Algèbre
Sujet
Compressed sensing; Restricted isometry constant; Polytopes; ℓ1 minimization
Journal issue
Linear Algebra and its Applications
Volume
432
Number
7
Publication date
03-2010
Article pages
1663-1679
Publisher
Elsevier
DOI
http://dx.doi.org/10.1016/j.laa.2009.11.022
URI
https://basepub.dauphine.fr/handle/123456789/3547
Collections
  • CEREMADE : Publications
Metadata
Show full item record
Author
Fadili, Jalal
Peyré, Gabriel
Dossal, Charles
Type
Article accepté pour publication ou publié
Abstract (EN)
This paper explores numerically the efficiency of ℓ1 minimization for the recovery of sparse signals from compressed sampling measurements in the noiseless case. This numerical exploration is driven by a new greedy pursuit algorithm that computes sparse vectors that are difficult to recover by ℓ1 minimization. The supports of these pathological vectors are also used to select sub-matrices that are ill-conditioned. This allows us to challenge theoretical identifiability criteria based on polytopes analysis and on restricted isometry conditions. We evaluate numerically the theoretical analysis without resorting to Monte-Carlo sampling, which tends to avoid worst case scenarios.

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