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I have a question.

I have two numpy arrays that are OpenCV convex hulls and I want to check for intersection without creating for loops or creating images and performing numpy.bitwise_and on them, both of which are quite slow in Python. The arrays look like this:

[[[x1 y1]]
 [[x2 y2]]
 [[x3 y3]]
 [[xn yn]]]

Considering [[x1 y1]] as one single element, I want to perform intersection between two numpy ndarrays. How can I do that? I have found a few questions of similar nature, but I could not figure out the solution to this from there.

Thanks in advance!

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You can use a view of the array as a single dimension to the intersect1d function like this:

def multidim_intersect(arr1, arr2):
    arr1_view = arr1.view([('',arr1.dtype)]*arr1.shape[1])
    arr2_view = arr2.view([('',arr2.dtype)]*arr2.shape[1])
    intersected = numpy.intersect1d(arr1_view, arr2_view)
    return intersected.view(arr1.dtype).reshape(-1, arr1.shape[1])

This creates a view of each array, changing each row to a tuple of values. It then performs the intersection, and changes the result back to the original format. Here's an example of using it:

test_arr1 = numpy.array([[0, 2],
                         [1, 3],
                         [4, 5],
                         [0, 2]])

test_arr2 = numpy.array([[1, 2],
                         [0, 2],
                         [3, 1],
                         [1, 3]])

print multidim_intersect(test_arr1, test_arr2)

This prints:

[[0 2]
 [1 3]]
share|improve this answer
Thank you very much for the response! This would be perfect if all the points in the perimeter were in the numpy arrays. However, in convex hulls, I think only a few points are passed as guides. But intersection, as it means in this case, is common values in both areas, which may not be common inside the numpy arrays themselves. I just read my post above, and realized that I did not mention this at all. I am sorry for that. – Subhamoy Sengupta Feb 14 '12 at 8:26
When I apply your view on my numpy, it looks like this: [[[(x1,)(y1,)]][[(x2,)(y2,)]]...[[(xn,)(yn,)]]] Whereas what we really need is this: [(x1,y1), (x2,y2), (x3,y3), ..., (xn,yn)] Any ideas? – Subhamoy Sengupta Feb 14 '12 at 10:59
Do you just have an extra axis for some reason? Can you just reshape it first with test_arr1.reshape(len(test_arr1), 2)? That will avoid a copy. – jterrace Feb 14 '12 at 14:13
Actually, the array is generated by opencv function, and it does not even require me to set a dtype or dimension, so I have no control over how it is shaped. I will try your suggestion now. – Subhamoy Sengupta Feb 14 '12 at 14:44

you can use, here is an example:

>>> import Polygon
>>> a = Polygon.Polygon([(0,0),(1,0),(0,1)])
>>> b = Polygon.Polygon([(0.3,0.3), (0.3, 0.6), (0.6, 0.3)])
>>> a & b
  <0:Contour: [0:0.60, 0.30] [1:0.30, 0.30] [2:0.30, 0.60]>

To convert the result of cv2.findContours to Polygon point format, you can:

points1 = contours[0].reshape(-1,2)

This will convert the shape from (N, 1, 2) to (N, 2)

Following is a full example:

import Polygon
import cv2
import numpy as np
from scipy.misc import bytescale

y, x = np.ogrid[-2:2:100j, -2:2:100j]

f1 = bytescale(np.exp(-x**2 - y**2), low=0, high=255)
f2 = bytescale(np.exp(-(x+1)**2 - y**2), low=0, high=255)

c1, hierarchy = cv2.findContours((f1>120).astype(np.uint8), 

c2, hierarchy = cv2.findContours((f2>120).astype(np.uint8), 

points1 = c1[0].reshape(-1,2) # convert shape (n, 1, 2) to (n, 2)
points2 = c2[0].reshape(-1,2)

import pylab as pl
poly1 = pl.Polygon(points1, color="blue", alpha=0.5)
poly2 = pl.Polygon(points2, color="red", alpha=0.5)
ax = pl.subplot(121)
pl.xlim(0, 100)
pl.ylim(0, 100)

a = Polygon.Polygon(points1)
b = Polygon.Polygon(points2)
intersect = a&b # calculate the intersect polygon

poly3 = pl.Polygon(intersect[0], color="green") # intersect[0] are the points of the polygon
ax = pl.subplot(122)
pl.xlim(0, 100)
pl.ylim(0, 100)


enter image description here

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Is this method really fast? I need to keep checking for intersection every frame as I capture, and system resource is not very high. – Subhamoy Sengupta Feb 14 '12 at 8:32
When I try to create polygon from an opencv contour or convex hull, this is the error I get: cPolygon.Error: Invalid polygon or contour for operation The format that you specified is not the format I have (shown in my original post). I assume some modifications might be necessary, but cannot imagine how it could be done. – Subhamoy Sengupta Feb 14 '12 at 10:37
please post some sample data. – HYRY Feb 14 '12 at 11:30
This is how I make contours: contours, hierarchy = cv2.findContours(sourceimage,, cv2.CHAIN_APPROX_SIMPLE) After that, when I do this:for contour in contours: print contour.dtype, contour.shape, contour, I get this: int32 (84, 1, 2) [[[23 1]] [[23 4]] [[22 5]] [[23 5]] ...... [[28 5]] [[24 1]]] The result would be the same for cv2.convexHull() if I used it instead of cv2.findContours() – Subhamoy Sengupta Feb 14 '12 at 11:49
As mentioned above, if I could change the view to a simple list of tuples, then Polygon.Polygon() would accept it, but I can't seem to get it :( – Subhamoy Sengupta Feb 14 '12 at 11:53
up vote 0 down vote accepted

So this is what I did to get the job done:

import Polygon, numpy

# Here I extracted and combined some contours and created a convex hull from it.
# Now I wanna check whether a contour acquired differently intersects with this hull or not.

for contour in contours:  # The result of cv2.findContours is a list of contours
    contour1 = contour.flatten()
    contour1 = numpy.reshape(contour1, (int(contour1.shape[0]/2),-1))
    poly1 = Polygon.Polygon(contour1)

    hull = hull.flatten()  # This is the hull is previously constructued
    hull = numpy.reshape(hull, (int(hull.shape[0]/2),-1))
    poly2 = Polygon.Polygon(hull)

    if (poly1 & poly2).area()<= some_max_val:

I had to use for loop, and this altogether looks a bit tedious, although it gives me expected results. Any better methods would be greatly appreciated!

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