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I have two arrays of x-y coordinates, and I would like to find the minimum Euclidean distance between each point in one array with all the points in the other array. The arrays are not necessarily the same size. For example:

xy1=numpy.array(
[[  243,  3173],
[  525,  2997]])

xy2=numpy.array(
[[ 682, 2644],
[ 277, 2651],
[ 396, 2640]])

My current method loops through each coordinate xy in xy1 and calculates the distances between that coordinate and the other coordinates.

mindist=numpy.zeros(len(xy1))
minid=numpy.zeros(len(xy1))

for i,xy in enumerate(xy1):
    dists=numpy.sqrt(numpy.sum((xy-xy2)**2,axis=1))
    mindist[i],minid[i]=dists.min(),dists.argmin()

Is there a way to eliminate the for loop and somehow do element-by-element calculations between the two arrays? I envision generating a distance matrix for which I could find the minimum element in each row or column.

Another way to look at the problem. Say I concatenate xy1 (length m) and xy2 (length p) into xy (length n), and I store the lengths of the original arrays. Theoretically, I should then be able to generate a n x n distance matrix from those coordinates from which I can grab an m x p submatrix. Is there a way to efficiently generate this submatrix?

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If you need to speed up your code, you should remove the unnecessary numpy.sqrt (and only take the square root of the minimum squared distance when you have found it). –  EOL Dec 9 '09 at 10:03

3 Answers 3

up vote 23 down vote accepted

(Months later) scipy.spatial.distance.cdist( X, Y ) gives all pairs of distances, for X and Y 2 dim, 3 dim ...
It also does 22 different norms, detailed here .

# cdist example: (nx,dim) (ny,dim) -> (nx,ny)

from __future__ import division
import sys
import numpy as np
from scipy.spatial.distance import cdist

#...............................................................................
dim = 10
nx = 1000
ny = 100
metric = "euclidean"
seed = 1

    # change these params in sh or ipython: run this.py dim=3 ...
for arg in sys.argv[1:]:
    exec( arg )
np.random.seed(seed)
np.set_printoptions( 2, threshold=100, edgeitems=10, suppress=True )

title = "%s  dim %d  nx %d  ny %d  metric %s" % (
        __file__, dim, nx, ny, metric )
print "\n", title

#...............................................................................
X = np.random.uniform( 0, 1, size=(nx,dim) )
Y = np.random.uniform( 0, 1, size=(ny,dim) )
dist = cdist( X, Y, metric=metric )  # -> (nx, ny) distances
#...............................................................................

print "scipy.spatial.distance.cdist: X %s Y %s -> %s" % (
        X.shape, Y.shape, dist.shape )
print "dist average %.3g +- %.2g" % (dist.mean(), dist.std())
print "check: dist[0,3] %.3g == cdist( [X[0]], [Y[3]] ) %.3g" % (
        dist[0,3], cdist( [X[0]], [Y[3]] ))


# (trivia: how do pairwise distances between uniform-random points in the unit cube
# depend on the metric ? With the right scaling, not much at all:
# L1 / dim      ~ .33 +- .2/sqrt dim
# L2 / sqrt dim ~ .4 +- .2/sqrt dim
# Lmax / 2      ~ .4 +- .2/sqrt dim
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1  
Hello, I actually just came across this last week. Much faster too! –  fideli Jun 28 '10 at 13:56
    
@denis cdist calculate distances between ALL pairs. How can I distance only between corresponding elements, for example, [ dist(X[0],Y[0]), dist(X[1],Y[1]), ... dist(X[N],Y[N]) ], assuming X and Y are of same length N? –  LWZ Jul 30 '13 at 0:24
    
@LWZ, just what you have -- np.array([ dist( x, y ) for x, y in zip( X, Y )]) –  denis Jul 30 '13 at 10:13
    
This works! And pretty fast. Just a note that the elements to calculate must be of length 2, otherwise python will raise an error. For a list of points in a contour detected by opencv2, I needed to use reshape function of numpy to reshape it first... –  Jim Raynor Apr 30 at 21:53
    
@denis: well e.g. the result of cv2.findContours is something like this: [ [[x1 y1]] [[x2 y2]].....[[xn yn]] ]. I don't know why they put the coordinates in 2 square bracket, but if you apply cdist directly to the list, each element will only have length 1 (a list, containing 1 list inside), I have to reshape it so the contour become the list of length-2 element (which means flat out the double bracket) –  Jim Raynor May 1 at 13:16

To compute the m by p matrix of distances, this should work:

>>> def distances(xy1, xy2):
...   d0 = numpy.subtract.outer(xy1[:,0], xy2[:,0])
...   d1 = numpy.subtract.outer(xy1[:,1], xy2[:,1])
...   return numpy.hypot(d0, d1)

the .outer calls make two such matrices (of scalar differences along the two axes), the .hypot calls turns those into a same-shape matrix (of scalar euclidean distances).

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1  
This method is faster –  fideli Dec 9 '09 at 6:54
1  
+1: just learned about the properties of Numpy's ufuncs! –  EOL Dec 9 '09 at 10:17
    
I would go for cdist in this case, but +1'd and I've learnt from this solution cool stuff –  eldad Feb 23 at 10:16
    
Faster, it's numpy! –  Gunslinger_ Apr 5 at 11:30

For what you're trying to do:

dists = numpy.sqrt((xy1[:, 0, numpy.newaxis] - xy2[:, 0])**2 + (xy1[:, 1, numpy.newaxis - xy2[:, 1])**2)
mindist = numpy.min(dists, axis=1)
minid = numpy.argmin(dists, axis=1)

Edit: Instead of calling sqrt, doing squares, etc., you can use numpy.hypot:

dists = numpy.hypot(xy1[:, 0, numpy.newaxis]-xy2[:, 0], xy1[:, 1, numpy.newaxis]-xy2[:, 1])
share|improve this answer
    
Oh my, that's amazing. I did not realize that element-by-element could work that way too. So xy1[:,0,numpy.newaxis] effectively replaces my for loop by being a column vector, from which all the x-values of xy2 are subtracted. Very cool, thank you. –  fideli Dec 9 '09 at 4:55
    
Yes. For a more general and elegant method, see Alex's answer. –  Alok Singhal Dec 9 '09 at 4:58
    
@fideli: help(numpy.subtract.outer) tells you that the numpy.newaxis trick of Alok is what is also at work in Alex's answer. –  EOL Dec 9 '09 at 15:12

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