I would like to get the center point(x,y) of a figure created by a set of points.

How do I do this?

  • 7
    Define "center". Center of gravity? Centroid? Something else? – Karl Knechtel Dec 4 '10 at 21:22
  • This is more like a math related question. I think in this exellent book: openbookproject.net/thinkcs I dont remember if in python or C++, there are some examples of what you are trying to achieve. – mRt Dec 4 '10 at 21:28

If you mean centroid, you just get the average of all the points.

x = [p[0] for p in points]
y = [p[1] for p in points]
centroid = (sum(x) / len(points), sum(y) / len(points))
  • 4
    But be careful with integer division in Python 2.x: if every point has an integer x value, the x value of your centroid will be rounded down to an integer. Use from __future__ import division, explicitly convert to a float before division, or use Python 3. – Thomas K Dec 4 '10 at 21:33
  • 7
    If points is a two-dimensional Numpy array, you can probably just use points.mean(0). – Philipp Dec 4 '10 at 21:53
  • 7
    that is not the centroid, is just the average of the points. If you want to compute the centroid, you have to use Green's theorem for discrete segments, as in en.wikipedia.org/wiki/Centroid#Centroid_of_polygon – chuse Oct 15 '15 at 13:39

I assume that a point is a tuple like (x,y), so you can use zip to join the x's and y's. Then using the min and max of x and y's, you can determine the center point.

center=(max(x)+min(x))/2., (max(y)+min(y))/2.

Sample output

Points in an array : [(411, 148), (304, 148), (357, 241)]
x:(411, 304, 357)
y:(148, 148, 241)
center: (357.5, 194.5)
  • Shouldn't that be max + min, not max - min? – Thomas K Dec 4 '10 at 21:54
  • trying to understand what this is doing... why do we 'add' the min to the max? The answer from @colin makes sense to me, but wasn't sure why this works too. – Futile32 Feb 22 '15 at 4:48
  • you are using min max instead of subtraction and addition. As an example, if min was 10 and max was 40 - min is 10 and max is 40, so that is 50/2=25. You can arrive at the same answer with 10 + ((40-10)/2) - both work perfectly well. – nycynik Sep 12 '20 at 3:23
  • Just another note: This center and the other answer are not the same center - for polygons there are multiple "center" formulas en.wikipedia.org/wiki/Centroid – nycynik Sep 12 '20 at 19:38

If the set of points is a numpy array positions of sizes N x 2, then the centroid is simply given by:

centroid = positions.mean(axis=0)

It will directly give you the 2 coordinates a a numpy array.

In general, numpy arrays can be used for all these measures in a vectorized way, which is compact and very quick compared to for loops.

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