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Conference Papers Year : 2009

Basis Identification from Random Sparse Samples

Karin Schnass
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Abstract

This article treats the problem of learning a dictionary providing sparse representations for a given signal class, via ℓ1-minimisation. The problem is to identify a dictionary [\Phi] from a set of training samples Y knowing that [Y = \PhiX] for some coefficient matrix X. Using a characterisation of coefficient matrices X that allow to recover any basis as a local minimum of an ℓ1-minimisation problem, it is shown that certain types of sparse random coefficient matrices will ensure local identifiability of the basis with high probability. The typically sufficient number of training samples grows up to a logarithmic factor linearly with the signal dimension.
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Dates and versions

inria-00369562 , version 1 (24-03-2009)

Identifiers

  • HAL Id : inria-00369562 , version 1

Cite

Rémi Gribonval, Karin Schnass. Basis Identification from Random Sparse Samples. SPARS'09 - Signal Processing with Adaptive Sparse Structured Representations, Inria Rennes - Bretagne Atlantique, Apr 2009, Saint Malo, France. ⟨inria-00369562⟩
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