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I have 1797 Mnist Images, for which I need to extract two features (FilledArea,EulerNumber). I know how to do it in Matlab. My feature matrix is having(and is correct) size of 1797*2 (1797 for each dimension) In Matlab

Code for matlab (working correctly)

for i = 1:2*N
    img = regionprops(BW(:,:,i),'FilledArea', 'Solidity');
    features(i, 1) = img.EulerNumber;
    features(i, 2) = img.FilledArea;
    clear img;
end

I want to do same thing in python with Skimage regionprops, but for 1797 images, I am getting 29350*2 features (29350 props for each features), which according to my understanding should be 1797*2

Code for python (not working correctly)

digits = datasets.load_digits()
label_img = digits.images
rps = regionprops(label_img, cache=False)
print(len([r.area for r in rps]))  #29350
print(len([r.euler_number for r in rps]))  #29350

What might be wrong with my approach? why am I having 29350 element for each feature instead of 1797?

  • Are digits.images binary images? If they're integer-valued, regionprops might produce an output for each distinct intensity level (what it interprets as a label). – Cris Luengo Nov 13 at 23:11
  • @CrisLuengo, I am new in Image processing, i loaded dataset from here "scikit-learn.org/stable/modules/generated/…" how can i check this? – A.B Nov 13 at 23:17
  • Link mentions "Features: integers 0-16", So it it a problem of being not in binary? – A.B Nov 13 at 23:20
  • You should display your data and look at it. This is the nice thing about image processing, it's all visual! :) – Cris Luengo Nov 13 at 23:23
  • @CrisLuengo i loaded binary images now but got 91856 for 1000 images – A.B Nov 14 at 0:00
3

Just like you need a for-loop in Matlab to compute the properties for each image, you need one in Python to do the same. Currently, you are computing the properties for a single 3D image of shape (1797, 8, 8), instead of 1797 2D images of shape (8, 8). Here is the somewhat equivalent Python code for what you are after:

features = []
for image in digits.images:
    labels = (image > 0).astype(int)  # only one object in the image
    props = regionprops(labels, image)[0]  # only one object
    features.append((props.euler_number, props.filled_area))

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