How can I get the indices of intersection points between two numpy arrays? I can get intersecting values with intersect1d:

import numpy as np

a = np.array(xrange(11))
b = np.array([2, 7, 10])
inter = np.intersect1d(a, b)
# inter == array([ 2,  7, 10])

But how can I get the indices into a of the values in inter?


You could use the boolean array produced by in1d to index an arange. Reversing a so that the indices are different from the values:

>>> a[::-1]
array([10,  9,  8,  7,  6,  5,  4,  3,  2,  1,  0])
>>> a = a[::-1]

intersect1d still returns the same values...

>>> numpy.intersect1d(a, b)
array([ 2,  7, 10])

But in1d returns a boolean array:

>>> numpy.in1d(a, b)
array([ True, False, False,  True, False, False, False, False,  True,
       False, False], dtype=bool)

Which can be used to index a range:

>>> numpy.arange(a.shape[0])[numpy.in1d(a, b)]
array([0, 3, 8])
>>> indices = numpy.arange(a.shape[0])[numpy.in1d(a, b)]
>>> a[indices]
array([10,  7,  2])

To simplify the above, though, you could use nonzero -- this is probably the most correct approach, because it returns a tuple of uniform lists of X, Y... coordinates:

>>> numpy.nonzero(numpy.in1d(a, b))
(array([0, 3, 8]),)

Or, equivalently:

>>> numpy.in1d(a, b).nonzero()
(array([0, 3, 8]),)

The result can be used as an index to arrays of the same shape as a with no problems.

>>> a[numpy.nonzero(numpy.in1d(a, b))]
array([10,  7,  2])

But note that under many circumstances, it makes sense just to use the boolean array itself, rather than converting it into a set of non-boolean indices.

Finally, you can also pass the boolean array to argwhere, which produces a slightly differently-shaped result that's not as suitable for indexing, but might be useful for other purposes.

>>> numpy.argwhere(numpy.in1d(a, b))
  • 2
    So rough, but it works :) easier in Octave: [inter indexA indexB] = intersect(A,b) – invis Jul 14 '12 at 13:15
  • Thank you a lot for your answer ! – invis Jul 14 '12 at 18:32
  • in1d and intersect1d are not the same. intersect1d gives unique values, in1d gives all the intersection so this answer does not work all the time. – Rik Sep 20 '16 at 2:50
  • @Rik, I guess I disagree. It's true that in1d doesn't weed out duplicates, but it shouldn't. It's returning indices, and it would be bad to return only one index from a set of duplicates -- that would be confusing behavior. The question doesn't specify which behavior, so this answer does exactly what it asks for: "get the indices of intersection points between two numpy arrays." If you want to have no duplicates, you have to weed them out beforehand, which is reasonable and expected. – senderle Sep 20 '16 at 10:52
  • 1
    I see your point, you can use np.unique first or after with return_index=true to give indices then use intersect1d. I interpreted that he wanted unique values because of the code he posted but not sure. – Rik Sep 20 '16 at 21:07

If you need to get unique values as given by intersect1d:

import numpy as np

a = np.array([range(11,21), range(11,21)]).reshape(20)
b = np.array([12, 17, 20])
#unique values

inter = np.in1d(a, b)
#you can see these values are not unique

#These are the non-unique indices

_,unique=np.unique(a[inter], return_index=True)

#this grabs the unique indices

#now they are unique as you would get from np.intersect1d()


[12 17 20]
[12 17 20 12 17 20]
[1 6 9]
[12 17 20]

For Python >= 3.5, there's another solution to do so

Other Solution

Let we go through this step by step.

Based on the original code from the question

import numpy as np

a = np.array(range(11))
b = np.array([2, 7, 10])
inter = np.intersect1d(a, b)

First, we create a numpy array with zeros

c = np.zeros(len(a))
print (c)


>>> [ 0.  0.  0.  0.  0.  0.  0.  0.  0.  0.  0.]

Second, change array value of c using intersect index. Hence, we have

c[inter] = 1
print (c)


>>>[ 0.  0.  1.  0.  0.  0.  0.  1.  0.  0.  1.]

The last step, use the characteristic of np.nonzero(), it will return exactly the index of the non-zero term you want.

inter_with_idx = np.nonzero(c)
print (inter_with_idx)

Final output

array([ 2, 7, 10])


[1] numpy.nonzero

  • If there is something need to be improved, plz let me know – WY Hsu May 18 '18 at 2:09
  • Could anyone explain the downvote? I would appreciate :) – WY Hsu May 30 '18 at 2:19
indices = np.argwhere(np.in1d(a,b))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.