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Demo_inpaint.m
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Demo_inpaint.m
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%==========================================================================
% This is the testing code of IRCNN for image inpainting.
%
% @inproceedings{zhang2017learning,
% title={Learning Deep CNN Denoiser Prior for Image Restoration},
% author={Zhang, Kai and Zuo, Wangmeng and Gu, Shuhang and Zhang, Lei},
% booktitle={IEEE Conference on Computer Vision and Pattern Recognition},
% year={2017}
% }
%
% If you have any question, please feel free to contact with <Kai Zhang ([email protected])>.
%
%
% by Kai Zhang (1/2018)
%==========================================================================
clear; clc;
addpath('utilities');
imageSets = {'Inpaint_set1'}; % testing dataset
setTest = imageSets(1); % select the dataset
useGPU = 1;
folderTest = 'testsets';
folderResult = 'results';
folderModel = 'models';
if ~exist(folderResult,'file')
mkdir(folderResult);
end
setTestCur = cell2mat(setTest(1));
disp('--------------------------------------------');
disp(['----',setTestCur,'-----Image Inpainting-----']);
disp('--------------------------------------------');
folderTestCur = fullfile(folderTest,setTestCur);
% folder to store results
folderResultCur = fullfile(folderResult, ['Inpaint_',setTestCur]);
if ~exist(folderResultCur,'file')
mkdir(folderResultCur);
end
%% read ground truth image and generate input {y, mask}
% ground truth image
Iname = 'butterfly_gray'; % Isigma = 0.5/255; Msigma = 1 or 3; window = 7; for 75%
Iname = 'butterfly_color'; % Isigma = 0.5/255; Msigma = 5; window = 7; for 80%
Iname = '09'; % Isigma = 0.5/255; Msigma = 1 or 3; window = 7; for 50%
pert = 0.5; % 80% pixels are missing
window = 7; % default 10, from [5,30]
label = im2single(imread(fullfile(folderTestCur,[Iname,'.png'])));
[a,b,c] = size(label);
% generate mask
rand('seed',0);
mask = rand(a,b)>=pert;
mask = repmat(mask,[1,1,c]);
% generate input
y = label.*mask;
%% parameter setting in HQS (tune the following parameters to obtain the best results)
%% -------------------important!------------------
% Parameter settings of IRCNN
% (1) image noise level: Isigma
Isigma = 0.5/255; % ****** from interval [1/255, 20/255] ******; e.g., 1/255, 2.55/255, 7/255, 11/255
% (2) noise level of the last denoiser: Msigma
Msigma = 3; % ****** from {1 3 5 7 9 11 13 15} ******
%--------------------------------------------------------
%% load denoisers
if c==1
load(fullfile(folderModel,'modelgray.mat'));
elseif c==3
load(fullfile(folderModel,'modelcolor.mat'));
end
%% default parameter setting in HQS
totalIter = 30; % default 30
lamda = (Isigma^2)/3; % default 3, ****** from {1 2 3 4} ******
modelSigma1 = 49; % default 49
modelSigmaS = logspace(log10(modelSigma1),log10(Msigma),totalIter);
rho = Isigma^2/((modelSigma1/255)^2);
ns = min(25,max(ceil(modelSigmaS/2),1));
ns = [ns(1)-1,ns];
z = shepard_initialize(y, mask, window);
if useGPU
z = gpuArray(z);
y = gpuArray(y);
end
for itern = 1:totalIter
% step 1
rho = lamda*255^2/(modelSigmaS(itern)^2);
z = (y+rho*z)./(mask+rho);
if ns(itern+1)~=ns(itern)
[net] = loadmodel(modelSigmaS(itern),CNNdenoiser);
net = vl_simplenn_tidy(net);
if useGPU
net = vl_simplenn_move(net, 'gpu');
end
end
% step 2
res = vl_simplenn(net, z,[],[],'conserveMemory',true,'mode','test');
residual = res(end).x;
z = z - residual;
% imshow(z)
% title(int2str(itern))
% drawnow;
end
if useGPU
output = im2uint8(gather(z));
y = im2uint8(gather(y));
end
[PSNR_Cur,SSIM_Cur] = Cal_PSNRSSIM(label*255,output,0,0);
imshow(cat(2,y,output));
disp([PSNR_Cur,SSIM_Cur]);
imwrite(y,fullfile(folderResultCur,[Iname,'_',int2str(pert*100),'_masked.png']));
imwrite(output,fullfile(folderResultCur,[Iname,'_',int2str(pert*100),'_ircnn.png']));