view util/SMALL_learn.m @ 224:fd0b5d36f6ad danieleb

Updated the contents of this branch with the contents of the default branch.
author luisf <luis.figueira@eecs.qmul.ac.uk>
date Thu, 12 Apr 2012 13:52:28 +0100
parents 7426503fc4d1 a986ee86651e
children
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function DL = SMALL_learn(Problem,DL)
%% SMALL Dictionary Learning
%
%   Function gets as input Problem and Dictionary Learning (DL) structures
%   In Problem structure field b with the training set needs to be defined
%   In DL fields with name of the toolbox and solver, and parameters file
%   for particular dictionary learning technique needs to be present.
%
%   Outputs are Learned dictionary and time spent as a part of DL structure

%
%   Centre for Digital Music, Queen Mary, University of London.
%   This file copyright 2009 Ivan Damnjanovic.
%
%   This program is free software; you can redistribute it and/or
%   modify it under the terms of the GNU General Public License as
%   published by the Free Software Foundation; either version 2 of the
%   License, or (at your option) any later version.  See the file
%   COPYING included with this distribution for more information.
%%

SMALLboxInit

if (DL.profile)
    fprintf('\nStarting Dictionary Learning %s... \n', DL.name);
end

start=cputime;
tStart=tic;

% toolboxes configuration file
run(fullfile(SMALL_path, 'config/SMALL_learn_config.m'));

%%
%   Dictionary Learning time
tElapsed=toc(tStart);
DL.time = cputime - start;
if (DL.profile)
    fprintf('\n%s finished task in %2f seconds (cpu time). \n', DL.name, DL.time);
    fprintf('\n%s finished task in %2f seconds (tic-toc time). \n', DL.name, tElapsed);
end
DL.time=tElapsed;
%   If dictionary is given as a sparse matrix change it to full

DL.D = full(D);

end