# How can i detect number of segments in a circle in a skeletonized image?

I have a skeleton image of wheels with 2,4, or 6 diameters drawn. I have also branched point coordinates.

I think about 2 ways for detecting the different wheels:

1. Counting black areas inside the circle
2. counting diameters drawn

In both cases i do not know how could i implement them.

As you can see, wheels are not perfect skeletonized, and so it is harder detecting differences.

This is the code i use for skeletonization:

first of all i binarize image, i dilate and then skeletonize.

``````from skimage import io
import scipy
from skimage import morphology
import cv2
from scipy import ndimage as nd
import mahotas as mah
import pymorph as pm
import pymorph

complete_path = "wheel1.jpg"
print(gray.shape)
cv2.imshow('graybin',gray)
cv2.waitKey()

ret,thresh = cv2.threshold(gray,127,255,cv2.THRESH_BINARY_INV)
imgbnbin = thresh
print("shape imgbnbin")
print(imgbnbin.shape)
cv2.imshow('binaria',imgbnbin)
cv2.waitKey()

element = cv2.getStructuringElement(cv2.MORPH_CROSS,(6,6))
graydilate = cv2.dilate(imgbnbin, element) #imgbnbin
graydilate = cv2.dilate(graydilate, element)
#graydilate = cv2.erode(graydilate, element)

cv2.imshow('dilate',graydilate)
cv2.waitKey()

#SKELETONIZE
out = morphology.skeletonize(graydilate>0)
skel = out.astype(float)
cv2.imshow('scikitimage',skel)
cv2.waitKey()
io.imsave('wheel.jpg', skel)
sk = skel
print(sk.shape)
``````

Original images:

-
I solved ,with a better skeletonization (scikit-image is good but also mahotas libraries) and retrieving contoursof every image i can count the black region and recognize a wheel with 2,4 or 6 diameters! –  improc Apr 26 '13 at 0:40