Abstract / truncated to 115 words (read the full abstract)

Over-complete transforms have recently become the focus of a wide wealth of research in signal processing, machine learning, statistics and related fields. Their great modelling flexibility allows to find sparse representations and approximations of data that in turn prove to be very efficient in a wide range of applications. Sparse models express signals as linear combinations of a few basis functions called atoms taken from a so-called dictionary. Finding the optimal dictionary from a set of training signals of a given class is the objective of dictionary learning and the main focus of this thesis. The experimental evidence presented here focuses on the processing of audio signals, and the role of sparse algorithms in audio ... toggle 5 keywords

sparse approximation dictionary learning audio analysis signal processing machine learning

Information

Author
Barchiesi, Daniele
Institution
Queen Mary University of London
Supervisors
Publication Year
2013
Upload Date
April 23, 2013

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