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I am trying to make Principal component analysis (PCA) using python. Here is my code:

import os
from PIL import Image
import numpy as np
import glob
from matplotlib.mlab import PCA

#Step1: put database images into a 3D array
filenames = glob.glob('C:\\Users\\Karim\\Downloads\\att_faces\\New folder/*.pgm')
img = [Image.open(fn).convert('L') for fn in filenames]
images = np.dstack([np.array(im) for im in img])    

# Step2: create 2D flattened version of 3D input array
d1,d2,d3 = images.shape
b = np.zeros([d1,d2*d3])
for i in range(len(images)):
  b[i] = images[i].flatten()

#Step 3: PCA
results = PCA(b)

but I am getting an error RuntimeError: we assume data in a is organized with numrows>numcols

I tried replacing b = np.zeros([d1,d2*d3]) by b = np.zeros([d2*d3, d1]) I got ValueError: could not broadcast input array from shape (2760) into shape (112)

Can anyone help me?

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1 Answer 1

up vote 2 down vote accepted

If you change to b = np.zeros([d2*d3, d1]) you should also change the loop afterwards otherwise you try to put a d1 dimention array into a d2*d3 one.

You should get rid of the second error doing this

You can simply transpose b

# Step2: create 2D flattened version of 3D input array
d1,d2,d3 = images.shape
b = np.empty([d1,d2*d3])  #if you know that you are filling the whole array it's faster that using np.zeros or np.ones
for i, im in enumerate(images): 
    b[i,:] = im.flatten()

#Step 3: PCA
results = PCA(b.T)

I've also substituted your for loop with what I think is a better version: in your implementation you first find the dimension of images, create a list of integers loop over it and then re-access images. enumerate returns an iterator with a couple (index, value). The advantages are that it returns just the elements that you need, and then you don't have to access images directly in the loop.

Probably you also don't need to create images, but I don't know PIL, so there I can't help you. In that case, you can simply get the dimensions with something like

d1,d2,d3 = len(img), img[0].shape


you if you want you can also convert the content of the files to numpy when reading them.

For the records, this is numpy.asarray.

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Thanks for your help. I got your point and I find it more logical, but when trying the code you've suggested to get rid of the second error I got another error: AttributeError: flatten –  user2229953 Apr 9 '13 at 9:40
I was assuming that the elements of img were numpy arrays. See my edit –  Francesco Montesano Apr 9 '13 at 9:42
again I got an error similar to the second error : ValueError: could not broadcast input array from shape (10304) into shape (2760) –  user2229953 Apr 9 '13 at 10:08
Me stupid. What happens if you use your code and just substitute results = PCA(b) with result = PCA(b.T)? –  Francesco Montesano Apr 9 '13 at 10:23
It works ! Thanks a lot @Francesco Montesano –  user2229953 Apr 9 '13 at 10:37

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