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1 function DL = SMALL_learn(Problem,DL)
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2 %% SMALL Dictionary Learning
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3 %
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4 % Function gets as input Problem and Dictionary Learning (DL) structures
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5 % In Problem structure field b with the training set needs to be defined
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6 % In DL fields with name of the toolbox and solver, and parameters file
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7 % for particular dictionary learning technique needs to be present.
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8 %
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9 % Outputs are Learned dictionary and time spent as a part of DL structure
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10
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11 %
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12 % Centre for Digital Music, Queen Mary, University of London.
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13 % This file copyright 2009 Ivan Damnjanovic.
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14 %
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15 % This program is free software; you can redistribute it and/or
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16 % modify it under the terms of the GNU General Public License as
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17 % published by the Free Software Foundation; either version 2 of the
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18 % License, or (at your option) any later version. See the file
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19 % COPYING included with this distribution for more information.
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20 %%
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21 if (DL.profile)
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22 fprintf('\nStarting Dictionary Learning %s... \n', DL.name);
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23 end
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24 start=cputime;
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25 tStart=tic;
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26 if strcmpi(DL.toolbox,'KSVD')
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27 param=DL.param;
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28 param.data=Problem.b;
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29
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30 D = eval([DL.name,'(param)']);%, ''t'', 5);']);
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31 elseif strcmpi(DL.toolbox,'KSVDS')
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32 param=DL.param;
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33 param.data=Problem.b;
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34
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35 D = eval([DL.name,'(param, ''t'', 5);']);
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36 elseif strcmpi(DL.toolbox,'SPAMS')
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37
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38 X = Problem.b;
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39 param=DL.param;
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40
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41 D = eval([DL.name,'(X, param);']);
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42 % As some versions of SPAMS does not produce unit norm column
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43 % dictionaries, we need to make sure that columns are normalised to
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44 % unit lenght.
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45
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46 for i = 1: size(D,2)
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47 D(:,i)=D(:,i)/norm(D(:,i));
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48 end
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49 elseif strcmpi(DL.toolbox,'SMALL')
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50
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51 X = Problem.b;
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52 param=DL.param;
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53
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54 D = eval([DL.name,'(X, param);']);
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55 % we need to make sure that columns are normalised to
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56 % unit lenght.
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57
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58 for i = 1: size(D,2)
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59 D(:,i)=D(:,i)/norm(D(:,i));
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60 end
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61
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62 elseif strcmpi(DL.toolbox,'TwoStepDL')
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63
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64 DL=SMALL_two_step_DL(Problem, DL);
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65
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66 % we need to make sure that columns are normalised to
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67 % unit lenght.
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68
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69 for i = 1: size(DL.D,2)
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70 DL.D(:,i)=DL.D(:,i)/norm(DL.D(:,i));
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71 end
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72 D = DL.D;
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73
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74 elseif strcmpi(DL.toolbox,'MMbox')
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75
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76 DL = wrapper_mm_DL(Problem, DL);
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77
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78 % we need to make sure that columns are normalised to
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79 % unit lenght.
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80
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81 for i = 1: size(DL.D,2)
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82 DL.D(:,i)=DL.D(:,i)/norm(DL.D(:,i));
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83 end
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84 D = DL.D;
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85
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86 elseif strcmpi(DL.toolbox,'dl_ramirez')
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87 DL = dl_ramirez(Problem,DL);
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88 D = normcol(DL.D);
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89
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90 % To introduce new dictionary learning technique put the files in
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91 % your Matlab path. Next, unique name <TolboxID> for your toolbox needs
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92 % to be defined and also prefferd API for toolbox functions <Preffered_API>
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93 %
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94 % elseif strcmpi(DL.toolbox,'<ToolboxID>')
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95 % % This is an example of API that can be used:
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96 % % - get training set from Problem part of structure
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97 % % - assign parameters defined in the main program
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98 %
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99 % X = Problem.b;
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100 % param=DL.param;
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101 %
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102 % % - Evaluate the function (DL.name - defined in the main) with
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103 % % parameters given above
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104 %
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105 % D = eval([DL.name,'(<Preffered_API>);']);
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106
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107 else
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108 printf('\nToolbox has not been registered. Please change SMALL_learn file.\n');
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109 return
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110 end
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111
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112 %%
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113 % Dictionary Learning time
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114 tElapsed=toc(tStart);
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115 DL.time = cputime - start;
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116 if (DL.profile)
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117 fprintf('\n%s finished task in %2f seconds (cpu time). \n', DL.name, DL.time);
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118 fprintf('\n%s finished task in %2f seconds (tic-toc time). \n', DL.name, tElapsed);
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119 end
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120 DL.time=tElapsed;
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121 % If dictionary is given as a sparse matrix change it to full
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122
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123 DL.D = full(D);
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124
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125 end
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126
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