annotate Problems/generateImageDenoiseProblem.m @ 128:8e660fd14774 ivand_dev

Feature 186
author Ivan Damnjanovic lnx <ivan.damnjanovic@eecs.qmul.ac.uk>
date Mon, 13 Jun 2011 14:55:45 +0100
parents 002ec1b2ceff
children f42aa8bcb82f
rev   line source
idamnjanovic@10 1 function data=generateImageDenoiseProblem(im, trainnum, blocksize, dictsize, sigma, gain, maxval, initdict);
ivan@128 2 %% Generate Image Denoising Problem
idamnjanovic@21 3 %
idamnjanovic@10 4 % generateImageDenoiseProblem is a part of the SMALLbox and generates
idamnjanovic@10 5 % a problem that can be used for comparison of Dictionary Learning/Sparse
idamnjanovic@10 6 % Representation techniques in image denoising scenario.
idamnjanovic@10 7 % The function takes as an input:
idamnjanovic@10 8 % - im - image matrix (if not present function promts user for an
idamnjanovic@10 9 % image file) ,
idamnjanovic@10 10 % - trainnum - number of training samples (default - 40000)
idamnjanovic@10 11 % - blocksize - block (patch) vertical/horizontal dimension (default 8),
idamnjanovic@10 12 % - dictsize - dictionary size (default - 256),
idamnjanovic@10 13 % - sigma - noise level (default - 20),
idamnjanovic@10 14 % - noise gain (default - 1.15),
idamnjanovic@10 15 % - maxval - maximum value (default - 255)
idamnjanovic@10 16 % - initdict - initial dictionary (default - 4x overcomlete dct)
idamnjanovic@10 17 %
idamnjanovic@10 18 % The output of the function is stucture with following fields:
idamnjanovic@10 19 % - name - name of the original image (if image is read inside of the
idamnjanovic@10 20 % function)
idamnjanovic@10 21 % - Original - original image matrix,
idamnjanovic@10 22 % - Noisy - image with added noise,
idamnjanovic@10 23 % - b - training patches,
idamnjanovic@10 24 % - m - size of training patches (default 64),
idamnjanovic@10 25 % - n - number of training patches,
idamnjanovic@10 26 % - p - number of dictionary elements to be learned,
idamnjanovic@10 27 % - blocksize - block size (default [8 8]),
idamnjanovic@10 28 % - sigma - noise level,
idamnjanovic@10 29 % - noise gain (default - 1.15),
idamnjanovic@10 30 % - maxval - maximum value (default - 255)
idamnjanovic@10 31 % - initdict - initial dictionary (default - 4x overcomlete dct)
idamnjanovic@10 32 % - signalDim - signal dimension (default - 2)
ivan@125 33
ivan@125 34 %
ivan@125 35 % Centre for Digital Music, Queen Mary, University of London.
ivan@125 36 % This file copyright 2010 Ivan Damnjanovic.
ivan@125 37 %
ivan@125 38 % This program is free software; you can redistribute it and/or
ivan@125 39 % modify it under the terms of the GNU General Public License as
ivan@125 40 % published by the Free Software Foundation; either version 2 of the
ivan@125 41 % License, or (at your option) any later version. See the file
ivan@125 42 % COPYING included with this distribution for more information.
idamnjanovic@10 43 %
idamnjanovic@10 44 % Based on KSVD denoise demo by Ron Rubinstein
idamnjanovic@10 45 % See also KSVDDENOISEDEMO and KSVDDEMO.
idamnjanovic@10 46 % Ron Rubinstein
idamnjanovic@10 47 % Computer Science Department
idamnjanovic@10 48 % Technion, Haifa 32000 Israel
idamnjanovic@10 49 % ronrubin@cs
idamnjanovic@10 50 % August 2009
idamnjanovic@10 51 %%
idamnjanovic@10 52 disp(' ');
idamnjanovic@10 53 disp(' ********** Denoising Problem **********');
idamnjanovic@10 54 disp(' ');
idamnjanovic@10 55 disp(' This function reads an image, adds random Gaussian noise,');
idamnjanovic@10 56 disp(' that can be later denoised by using dictionary learning techniques.');
idamnjanovic@10 57 disp(' ');
idamnjanovic@10 58
idamnjanovic@10 59
idamnjanovic@10 60 %% prompt user for image %%
idamnjanovic@10 61 %ask for file name
idamnjanovic@10 62 FS=filesep;
idamnjanovic@10 63 TMPpath=pwd;
idamnjanovic@10 64 if ~ exist( 'im', 'var' ) || isempty(im)
idamnjanovic@10 65 [pathstr1, name, ext, versn] = fileparts(which('SMALLboxSetup.m'));
idamnjanovic@10 66 cd([pathstr1,FS,'data',FS,'images']);
idamnjanovic@17 67 [filename,pathname] = uigetfile({'*.png;'},'Select an image');
idamnjanovic@10 68 [pathstr, name, ext, versn] = fileparts(filename);
idamnjanovic@10 69 data.name=name;
idamnjanovic@10 70 im = imread(filename);
idamnjanovic@44 71 %im = double(im);
idamnjanovic@10 72 end;
idamnjanovic@44 73 im = double(im);
idamnjanovic@10 74 cd(TMPpath);
idamnjanovic@10 75
idamnjanovic@10 76 %% check input parameters %%
idamnjanovic@10 77
idamnjanovic@10 78 if ~ exist( 'blocksize', 'var' ) || isempty(blocksize),blocksize = 8;end
idamnjanovic@10 79 if ~ exist( 'dictsize', 'var' ) || isempty(dictsize), dictsize = 256;end
idamnjanovic@10 80 if ~ exist( 'trainnum', 'var' ) || isempty(trainnum),trainnum = 40000;end
idamnjanovic@10 81 if ~ exist( 'sigma', 'var' ) || isempty(sigma), sigma = 20; end
idamnjanovic@10 82 if ~ exist( 'gain', 'var' ) || isempty(gain), gain = 1.15; end
idamnjanovic@10 83 if ~ exist( 'maxval', 'var' ) || isempty(maxval), maxval = 255; end
idamnjanovic@10 84 if ~ exist( 'initdict', 'var' ) || isempty(initdict), initdict = 'odct'; end
idamnjanovic@10 85
idamnjanovic@10 86 %% generate noisy image %%
idamnjanovic@10 87
idamnjanovic@10 88 disp(' ');
idamnjanovic@10 89 disp('Generating noisy image...');
idamnjanovic@10 90
idamnjanovic@10 91 n = randn(size(im)) * sigma;
idamnjanovic@10 92 imnoise = im + n;
idamnjanovic@10 93
idamnjanovic@10 94 %% set parameters %%
idamnjanovic@10 95
idamnjanovic@10 96 x = imnoise;
idamnjanovic@10 97 p = ndims(x);
idamnjanovic@44 98 psnr=20*log10(maxval * sqrt(numel(im)) / norm(im(:)-imnoise(:)));
idamnjanovic@10 99 if (p==2 && any(size(x)==1) && length(blocksize)==1)
idamnjanovic@10 100 p = 1;
idamnjanovic@10 101 end
idamnjanovic@10 102
idamnjanovic@10 103 % blocksize %
idamnjanovic@10 104
idamnjanovic@10 105 if (numel(blocksize)==1)
idamnjanovic@10 106 blocksize = ones(1,p)*blocksize;
idamnjanovic@10 107 end
idamnjanovic@10 108
idamnjanovic@10 109 if (strcmpi(initdict,'odct'))
idamnjanovic@10 110 initdict = odctndict(blocksize,dictsize,p);
idamnjanovic@10 111 elseif (strcmpi(initdict,'data'))
idamnjanovic@10 112 clear initdict; % causes initialization using random examples
idamnjanovic@10 113 else
idamnjanovic@10 114 error('Invalid initial dictionary specified.');
idamnjanovic@10 115 end
idamnjanovic@10 116
idamnjanovic@10 117 if exist( 'initdict', 'var' )
idamnjanovic@10 118 initdict = initdict(:,1:dictsize);
idamnjanovic@10 119 end
idamnjanovic@10 120
idamnjanovic@10 121 %%%% create training data %%%
idamnjanovic@10 122
idamnjanovic@10 123 ids = cell(p,1);
idamnjanovic@10 124 if (p==1)
idamnjanovic@10 125 ids{1} = reggrid(length(x)-blocksize+1, trainnum, 'eqdist');
idamnjanovic@10 126 else
idamnjanovic@10 127 [ids{:}] = reggrid(size(x)-blocksize+1, trainnum, 'eqdist');
idamnjanovic@10 128 end
idamnjanovic@10 129 X = sampgrid(x,blocksize,ids{:});
idamnjanovic@10 130
idamnjanovic@10 131 % remove dc in blocks to conserve memory %
idamnjanovic@10 132
idamnjanovic@10 133 bsize = 2000;
idamnjanovic@10 134 for i = 1:bsize:size(X,2)
idamnjanovic@10 135 blockids = i : min(i+bsize-1,size(X,2));
idamnjanovic@10 136 X(:,blockids) = remove_dc(X(:,blockids),'columns');
idamnjanovic@10 137 end
idamnjanovic@10 138
idamnjanovic@44 139 % Noisy image blocks
ivan@111 140 xcol=im2colstep(x,blocksize);
idamnjanovic@44 141 [b1, dc] = remove_dc(xcol,'columns');
idamnjanovic@44 142
idamnjanovic@10 143 %% output structure %%
idamnjanovic@10 144
idamnjanovic@10 145 data.Original = im;
idamnjanovic@10 146 data.Noisy = imnoise;
idamnjanovic@44 147 data.noisy_psnr=psnr;
idamnjanovic@10 148 data.b = X;
idamnjanovic@44 149 data.b1=b1;
idamnjanovic@44 150 data.b1dc=dc;
idamnjanovic@10 151 data.m = size(X,1);
idamnjanovic@10 152 data.n = size(X,2);
idamnjanovic@10 153 data.p = dictsize;
idamnjanovic@10 154 data.blocksize=blocksize;
idamnjanovic@10 155 data.sigma = sigma;
idamnjanovic@10 156 data.gain = gain;
idamnjanovic@10 157 data.maxval = maxval;
idamnjanovic@10 158 data.initdict= initdict;
idamnjanovic@10 159 data.signalDim=2;
idamnjanovic@65 160 data.sparse=1;
idamnjanovic@10 161 end %% end of function