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')
filenames.sort()
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)
results.Wt
```

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?