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step_01_generate_orientation_field.m
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140 lines (118 loc) · 3.15 KB
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%%
label2 = load_untouch_nii('data/cortex_boundary_TC_std.nii.gz');
label2 = label2.img;
%%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
% order 0 orientation field smoothing
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%%
mask = label2;
mask = (mask == 2) | (mask == 3);
data = zeros(size(label2));
data(:)=0.5;
data(label2(:) == 2) = 0;
data(label2(:) == 3) = 1;
H = zeros([3,3,3],'double');
H(2,2,1) = 1;
H(:,:,2) = [0,1,0;1,-6,1;0,1,0];
H(2,2,3) = 1;
%%
iters = 5000;
data2_org = gpuArray(data);
data2 = gpuArray(data);
mask2 = gpuArray(mask);
H2 = gpuArray(H);
for a = 1:iters
fprintf('%d \n',a);
data2_lap = imfilter(data2,H2);
data2 = data2 + 0.05 * data2_lap;
data2(mask2) = data2_org(mask2);
if mod(a-1,5) == 0
sfigure(1);
imagesc(squeeze(data2(:,:,ceil(end/2))));
title(num2str(a));
drawnow
end
end
cortex_dist = single(gather(data2));
%%
trace_nii = label2;
trace_nii.hdr.dime.datatype = 16;
trace_nii.hdr.dime.bitpix = 32;
trace_nii.img = single(cortex_dist);
save_untouch_nii(trace_nii,'cortex_dist.nii.gz');
%%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%
% order 1 orientation field smoothing
%
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%%
gm = stafield(single(label2 == 1));
kernel = stafield('gauss',size(label2),1.5,0,0,'STA_FIELD_STORAGE_R','single');
gms = gm.fft().prod(kernel.fft(),0).ifft();
gmd = gms.deriv(1);
%%
gmd_n = gmd.norm();
gmd_n = 1/(squeeze(gmd_n.data(1,1,:,:,:))+eps);
gmdn = gmd;
for a = 1:2
for r = 1:2
gmdn.data(a,r,:,:,:) = squeeze(gmdn.data(a,r,:,:,:)) .* gmd_n;
end
end
%start_VIannotator(squeeze(gmdn.data(1,1,:,:,:)));
%%
step = 1;
mask = label2;
mask = (mask == 2) | (mask == 3);
gm_in = gmdn;
gm_out = gmdn;
for m=1:2
for r = 1:2
gm_in.data(m,r,:,:,:) = squeeze(gmdn.data(m,r,:,:,:)).*(label2 == 2);
gm_out.data(m,r,:,:,:) = -squeeze(gmdn.data(m,r,:,:,:)).*(label2 == 3);
end
end
gm_both = gm_in;
gm_both.data = gm_in.data + gm_out.data;
%%
result = gm_both;
%result.data =
%%
iters = 5000;
for m = 1:size(gm_both.data,2)
for r=1:2
fprintf(' %d %d \n',m,r);
data = squeeze(gm_both.data(r,m,1:step:end,1:step:end,1:step:end));
data2_org = gpuArray(data);
data2 = gpuArray(data);
mask2 = gpuArray(mask);
H2 = gpuArray(H);
if sum(abs(data(:)))>0.000001
for a = 1:iters
fprintf('%d \n',a);
data2_lap = imfilter(data2,H2);
data2 = data2 + 0.05 * data2_lap;
data2(mask2) = data2_org(mask2);
if mod(a-1,5) == 0
sfigure(1);
imagesc(squeeze(data2(:,:,ceil(end/2))));
title(num2str(a));
drawnow
end
end
else
fprintf('skipping %d %d \n',m,r);
end
result.data(r,m,:,:,:) = gather(data2);
end
end
%%
save('data/result_t1_n.mat','result','-v7.3')
gradf = sta_s2c(result);
tracer_mask = single(label2 >0);
tracer_gradf = gradf;
save('data/fmstack_data_n.mat','tracer_mask','tracer_gradf','cortex_dist','-v7.3')