Publication

Dictionary Identifiability from Few Training Samples

Rémi Gribonval, Karin Schnass
2008
Conference paper
Abstract

This article treats the problem of learning a dictionary providing sparse representations for a given signal class, via ell1ell^1 minimisation, or more precisely the problem of identifying a dictionary dicodico from a set of training samples YY knowing that Y=dicoXY = dico X for some coefficient matrix XX. It provides a characterisation of coefficient matrices XX that allow to recover any orthonormal basis (ONB) as a local minimum of an ell1ell^1 minimisation problem. Based on this characterisation it is shown that certain types of sparse random coefficient matrices will ensure local identifiability of the ONB with high probability.

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