Mercurial > hg > smallbox
view util/SMALL_learn.m @ 183:0d7a81655ef2 danieleb
removed cumulative coherence calculation
author | Daniele Barchiesi <daniele.barchiesi@eecs.qmul.ac.uk> |
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date | Fri, 27 Jan 2012 13:15:11 +0000 |
parents | 7426503fc4d1 |
children | fd0b5d36f6ad |
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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. %% if (DL.profile) fprintf('\nStarting Dictionary Learning %s... \n', DL.name); end start=cputime; tStart=tic; if strcmpi(DL.toolbox,'KSVD') param=DL.param; param.data=Problem.b; D = eval([DL.name,'(param)']);%, ''t'', 5);']); elseif strcmpi(DL.toolbox,'KSVDS') param=DL.param; param.data=Problem.b; D = eval([DL.name,'(param, ''t'', 5);']); elseif strcmpi(DL.toolbox,'SPAMS') X = Problem.b; param=DL.param; D = eval([DL.name,'(X, param);']); % As some versions of SPAMS does not produce unit norm column % dictionaries, we need to make sure that columns are normalised to % unit lenght. for i = 1: size(D,2) D(:,i)=D(:,i)/norm(D(:,i)); end elseif strcmpi(DL.toolbox,'SMALL') X = Problem.b; param=DL.param; D = eval([DL.name,'(X, param);']); % we need to make sure that columns are normalised to % unit lenght. for i = 1: size(D,2) D(:,i)=D(:,i)/norm(D(:,i)); end elseif strcmpi(DL.toolbox,'TwoStepDL') DL=SMALL_two_step_DL(Problem, DL); % we need to make sure that columns are normalised to % unit lenght. for i = 1: size(DL.D,2) DL.D(:,i)=DL.D(:,i)/norm(DL.D(:,i)); end D = DL.D; elseif strcmpi(DL.toolbox,'MMbox') DL = wrapper_mm_DL(Problem, DL); % we need to make sure that columns are normalised to % unit lenght. for i = 1: size(DL.D,2) DL.D(:,i)=DL.D(:,i)/norm(DL.D(:,i)); end D = DL.D; elseif strcmpi(DL.toolbox,'dl_ramirez') DL = dl_ramirez(Problem,DL); D = normcol(DL.D); % To introduce new dictionary learning technique put the files in % your Matlab path. Next, unique name <TolboxID> for your toolbox needs % to be defined and also prefferd API for toolbox functions <Preffered_API> % % elseif strcmpi(DL.toolbox,'<ToolboxID>') % % This is an example of API that can be used: % % - get training set from Problem part of structure % % - assign parameters defined in the main program % % X = Problem.b; % param=DL.param; % % % - Evaluate the function (DL.name - defined in the main) with % % parameters given above % % D = eval([DL.name,'(<Preffered_API>);']); else printf('\nToolbox has not been registered. Please change SMALL_learn file.\n'); return end %% % 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