- You need to reshape the data such that each row represents the flatenned image.
- Then you can use the 'pca' function to perform pca on the data.
principal component analysis pca
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Hello everybody
I have infrared images (144) for one day for a specific specimen. Anyhow, I transferred these images into 3D matrix that has thousands of signals. I want to subject the PCA approach so I can change the frequencies to get best results for these images.
I uploaded only one signal, please any help on doing that on my signals.
Thanks
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nick
am 16 Aug. 2024
Hello Mohaneed,
I understand that you want to use PCA approach on the dataset of images. The signal shared can't be used for PCA as PCA cant be performed on a single observation.
To apply PCA to infrared images stored in a 3D matrix :
% Reshape the 3D matrix into a 2D matrix
[height, width, num_images] = size(images);
reshaped_images = reshape(images, height * width, num_images)';
% Perform PCA on the reshaped data
[coeff, score, latent, tsquared, explained] = pca(reshaped_images);
You may refer to the following documentation to learn more about the 'pca' function :
Hope this helps!
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