# Python: intersection indices numpy array

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)[numpy.in1d(a, b)]
array([0, 3, 8])
>>> indices = numpy.arange(a.shape)[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))
array([,
,
])
``````
• 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
• 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])
print(np.intersect1d(a,b))
#unique values

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

indices=np.array(range(len(a)))[inter]
#These are the non-unique indices

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

uniqueIndices=indices[unique]
#this grabs the unique indices

print(uniqueIndices)
print(a[uniqueIndices])
#now they are unique as you would get from np.intersect1d()
``````

Output:

``````[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)
``````

output

``````>>> [ 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)
``````

output

``````>>>[ 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])
``````

### Reference

• 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))
``````