Using Principle Component Analysis (PCA) in classification

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Hi All, I am working in a project that classify certain texture images. I will be using Gaussian Mixture model to classify all the database into textured and non-textured images.
Now, I am using PCA to reduce the dimension of my data that is 512 dimensions, so I can train the GMM model. The results from PCA are new variables and those variables will be used in the training process:
[wcoeff,score,latent,~,explained] = pca(AllData);
The question is: in the testing process how can I use the wcoeff to get the same variables? Do I just multiply the wcoeff with the new image?
  2 个评论
Delsavonita Delsavonita
编辑:Adam 2018-5-8
i have the same problem too, since you post the question on 2014, you must be done doing your project, so can you kindly send me the solution for this problem ? i really need this...

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回答(1 个)

KaMu
KaMu 2014-6-26
编辑:KaMu 2014-6-26
I keep received emails that some one answer my question but I can't see any answers!
  2 个评论
Image Analyst
Image Analyst 2018-5-8
Because we don't understand your question. See my attached PCA demo. It will show you how to get the PC components.
jin li
jin li 2018-7-13
It is right. He finally display each component. first calculate coeff then component=image matrix * coeff so this will be eigenimage

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