# Extracting connected objects from an image in Python

I have a graysacle png image and I want to extract all the connected components from my image. Some of the components have same intensity but I want to assign a unique label to every object. here is my image I tried this code:

``````img = imread(images + 'soccer_cif' + str(i).zfill(6) + '_GT_index.png')
labeled, nr_objects = label(img)
print "Number of objects is %d " % nr_objects
``````

But I get just three objects using this. Please tell me how to get each object.

• Where does the `label` function come from? Jun 5, 2013 at 10:45
• Possible solution: stackoverflow.com/a/5304140/190597 Jun 5, 2013 at 10:52
• I am using something similar actually. The label function is from scipy.ndimage But getting the result that I posted Jun 5, 2013 at 11:45

J.F. Sebastian shows a way to identify objects in an image. It requires manually choosing a gaussian blur radius and threshold value, however:

``````from PIL import Image
import numpy as np
from scipy import ndimage
import matplotlib.pyplot as plt

fname='index.png'
threshold = 50

img = Image.open(fname).convert('L')
img = np.asarray(img)
print(img.shape)
# (160, 240)

# smooth the image (to remove small objects)
threshold = 50

# find connected components
labeled, nr_objects = ndimage.label(imgf > threshold)
print("Number of objects is {}".format(nr_objects))
# Number of objects is 4

plt.imsave('/tmp/out.png', labeled)
plt.imshow(labeled)

plt.show()
`````` With `blur_radius = 1.0`, this finds 4 objects. With `blur_radius = 0.5`, 5 objects are found: • Hmm, I didn't try Gaussian blurring earlier. This method works better. Thanks :) Jun 5, 2013 at 13:47

If the border of objects are completely clear and you have a binary image in img, you can avoid Gaussian filtering and just do this line:

``````labeled, nr_objects = ndimage.label(img)
``````