Stitching sub images to reconstruct full image
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Jason
le 13 Jan 2015
Réponse apportée : KHOR WEI KOK
le 2 Sep 2016
I have subdivided an image into 4x4 tiles and produced a subimage and obtained a binary imaged. I add each of these binary images to a binary stack using a loop.
After the loop, how do I reconstruct/stitch the sub binary images back to the full image size, so I can create a binary image representing the while raw image so to use as a mask:
My binary sub images are expressed as :
BI(:,:,i) %where i is 1:16 as I'm using 4x4 tiles
This is my approach that isn't working:
%Now combine binary images so to create regions to act as mask on original
%image
size(BI) %Confirm there are 16 planes of images in the binarystack
Binary=[]; %Create empty Binary Image that will hold reconstructed sub images
ct=0; %counter
for jj=1:tiles
for ii=1:tiles
ii
jj
ct=ct+1
startingCols(jj)
startingRows(ii)
Binary(startingCols(ii):endingCols(ii), startingRows(jj):endingRows(jj))=BI(:,:,ct);
figure(2)
subplot(4,4,ct)
imshow(BI(:,:,ct),[0,1])
Binary=BI;
end
end
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Mohammad Abouali
le 14 Jan 2015
Modifié(e) : Mohammad Abouali
le 14 Jan 2015
what you are asking, i.e. stitching the sub images into one big one, can be done in a single command using blockproc() as follows:
Binary=blockproc( reshape(1:16,4,4)', [1,1], @(x) BI(:,:,x.data) );
where Binary contains all the sub images placed in the order you show in the figure. 16 sub images are not much but if there were more you can even do this in parallel as easily as:
Binary =blockproc( reshape(1:16,4,4)', [1,1], @(x) BI(:,:,x.data), 'UseParallel',true);
5 commentaires
Mohammad Abouali
le 14 Jan 2015
Modifié(e) : Mohammad Abouali
le 14 Jan 2015
If you are just thresholding using graythresh you can write your blockproc like this
Binary=blockproc(OrigImage,[25,25],@(x) (im2bw(x.data,graythresh(x.data(:)))) )
That would threshold your image using Otsu's method and it is not global, the threshold is decided on each 25x25 tile separately. You don't need to divide the image into tiles, you don't need to spend time stitching them back.
Another approach is to use the function that ImageAnalyst told you.
Plus de réponses (6)
Iain
le 13 Jan 2015
depending how you've done it....
BInew = permute(BI,[1 3 2]);
BInew = reshape(BInew,16*size(BI,1),[]);
ought to work.
9 commentaires
Iain
le 13 Jan 2015
You'd need to change the reshapes, not the permute. You've got 16 tiles though.... (4 x 4)
BInew = reshape(BI,[25 25 tileshigh tileswide]);
BInew = permute(BInew,[1 3 2 4]);
BInew = reshape(BInew, 25*tileshigh, [])
Image Analyst
le 13 Jan 2015
Why bother saying this:
Binary(startingCols(ii):endingCols(ii), startingRows(jj):endingRows(jj))=BI(:,:,ct);
if you're just going to say this
Binary=BI;
three lines later? Not only that, but you switched rows and columns. The first index should be rows, not columns as you have it, and the second index should be columns, not rows as you have it.
15 commentaires
Image Analyst
le 14 Jan 2015
See attached blockproc demos. And don't forget to look at Mohammad's last comment under his answer.
Jason
le 13 Jan 2015
2 commentaires
Image Analyst
le 13 Jan 2015
The first index should be rows, not columns as you have it, and the second index should be columns, not rows as you have it.
Jason
le 14 Jan 2015
3 commentaires
Image Analyst
le 14 Jan 2015
OK but you don't need to split apart your image to do that. You can get a better local thresholding using adapthisteq() to flatten your image and then use a global threshold, or use blockproc like Mohammad suggested. adapthisteq is like splitting your image apart into tons of tiles that are only a pixel apart and will be much better and more accurate than splitting your image into 4 tiles and then computing the threshold for the whole tile. You should really look into these methods.
KHOR WEI KOK
le 2 Sep 2016
Hi, I would like to ask, how you manage to show the line segmentation and numbering on your image axes?
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