how PCA can be applied to an image to reduce its dimensionality with example?
    73 views (last 30 days)
  
       Show older comments
    
    G Prasanth Reddy
 on 24 Dec 2014
  
    
    
    
    
    Commented: Image Analyst
      
      
 on 14 Sep 2021
            Dimensionality reduction
3 Comments
  Image Analyst
      
      
 on 14 Sep 2021
				@SHEETAL AGRAWAL, perhaps.  You obviously need at least two features.  What would be your two features?  Maybe gray level is one, but what is the other?  Or do you just have two different features, like blob area and blob texture or brightness?
Accepted Answer
  Image Analyst
      
      
 on 24 Dec 2014
        
      Edited: Image Analyst
      
      
 on 14 Apr 2020
  
      Here's code I got from Spandan, one of the developers of the Image Processing Toolbox at the Mathworks:
Here some quick code for getting principal components of a color image. This code uses the pca() function from the Statistics Toolbox which makes the code simpler.
I = double(imread('peppers.png'));
X = reshape(I,size(I,1)*size(I,2),3);
coeff = pca(X);
Itransformed = X*coeff;
Ipc1 = reshape(Itransformed(:,1),size(I,1),size(I,2));
Ipc2 = reshape(Itransformed(:,2),size(I,1),size(I,2));
Ipc3 = reshape(Itransformed(:,3),size(I,1),size(I,2));
figure, imshow(Ipc1,[]);
figure, imshow(Ipc2,[]);
figure, imshow(Ipc3,[]);
In case you don’t want to use pca(), the same computation can be done without the use of pca() with a few more steps using base MATLAB functions.
Hope this helps.
-Spandan
Also attached are some full demos.
More Answers (7)
  Devan Marçal
 on 13 Aug 2015
        Hi,
in your example you used PCA in just one image. I have an image bank a total of ~ 800 images. If I make a loop (if, while, etc ..) using the PCA function for each image individually, will be using this command wrong or inefficiently?
Thanks a lot.
Devan
8 Comments
  Darshan Jain
 on 25 Jul 2019
				Hey @ImageAnalyst,
I checked out your script, I had a small question, How could I plot the colored image back in three plots (showing approximation by pca1, then pca1 and pca2 and then followed by pca1, pca2 and pca3).
I tried doing using the imfuse comand "imfuse(pca1,pca2)", the clarity improved well, but i'm not able to reproduce the same colors. (see the attached image)
I think this is because I need to normalize the data, and then un-normalize it back before plotting. (I'm not sure though)
  Image Analyst
      
      
 on 25 Jul 2019
				Etworld, I just ran the colored chips image and it ran fine.  Did you change my code at all?

Darshan: where did your colors come from? I don't understand what your "approximations" are supposed to be.  But anyway, you can stitch images side by side if they are all RGB images to begin with:
wideImage = [rgbImage1, rgbImage2, rgbImage3];
  Shaveta Arora
 on 30 Jan 2016
        Can I have the pca code used in this color image example
6 Comments
  Image Analyst
      
      
 on 31 Jan 2016
				I can't. It would not be legal. You either have to buy the toolbox from the Mathworks, or implement it yourself from low level code.
  Anitha Anbazhagan
 on 17 Sep 2016
        I have 200 ROIs from each of the 50 images. For each ROI, I have 96 feature vectors for four different frequency bands. It seems very high dimensional. How to apply PCA for this? PCA should be applied to data matrix. Do I have to apply for each image or each ROI?
1 Comment
  Image Analyst
      
      
 on 17 Sep 2016
				It depends on if you want PCA components on each image individually, or the PCA components of the group as a whole.
  Mina Kh
 on 11 Dec 2016
        Hi. I have multispectral( multi channel) data and I want to apply PCA to reduce the number of channel. Can u give me some hint?Which code i have to use?
0 Comments
  Arathy Das
 on 20 Dec 2016
        How can i extract three texture features among the 22 using PCA?
1 Comment
  Image Analyst
      
      
 on 20 Dec 2016
				I think you should start your own discussion with your own data or images. If you have 22 PCA columns, then just extract the 3 you want as usual.
pca3 = pca22(:, 1:3); % or whatever.
  joynjo
 on 24 Mar 2018
        How to visualize the result of PCA image in pseudocolor?
1 Comment
  Image Analyst
      
      
 on 24 Mar 2018
				imshow(PC1); % Display the first principal component image.
colormap(jet(256));
  F M Anim Hossain
 on 6 Apr 2018
        I'm new to the concept of PCA. I'm trying to develop something that can recognize color features from different images. Is it possible to do it with the help of PCA?
0 Comments
See Also
Categories
				Find more on Dimensionality Reduction and Feature Extraction in Help Center and File Exchange
			
	Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!



















