# Python point lookup (coordinate binning?)

Greetings,

I am trying to bin an array of points `(x, y)` into an array of boxes `[(x0, y0), (x1, y0), (x0, y1), (x1, y1)]` (tuples are the corner points)

So far I have the following routine:

``````def isInside(self, point, x0, x1, y0, y1):
pr1 = getProduct(point, (x0, y0), (x1, y0))
if pr1 >= 0:
pr2 = getProduct(point, (x1, y0), (x1, y1))
if pr2 >= 0:
pr3 = getProduct(point, (x1, y1), (x0, y1))
if pr3 >= 0:
pr4 = getProduct(point, (x0, y1), (x0, y0))
if pr4 >= 0:
return True
return False

def getProduct(origin, pointA, pointB):
product = (pointA[0] - origin[0])*(pointB[1] - origin[1]) - (pointB[0] - origin[0])*(pointA[1] - origin[1])
return product
``````

Is there any better way then point-by-point lookup? Maybe some not-obvious numpy routine?

Thank you!

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One answerer believes you want to "count density"; one answerer believes you want to make your code run faster; one answerer (me) believes you want to make your code be clearer... Maybe you should clarify your question :) –  badp May 25 '10 at 11:32
No need to clarify - I've got great answers approaching the problem from different sides. More brainfood :) –  Rince May 27 '10 at 14:03

Are these boxes axis aligned? i.e. are the edges parallel to the coordinate axes? If so this can be done quite efficiently with vectorized comparisons on NumPy arrays.

``````def in_box(X, B):
"""
Takes an Nx2 NumPy array of points and a 4x2 NumPy array of corners that
form an axis aligned box.
"""
xmin = B[:,0].min(); xmax = B[:,0].max()
ymin = X[:,1].min(); ymax = X[:,1].max()
return X[X[:,0] > xmin & X[:,0] < xmax & X[:,1] > ymin & X[:,1] < ymax]
``````

amending to >= and <= if you prefer them to be inclusive.

If you need it for an arbitrary quadrilateral, `matplotlib` actually has a routine `matplotlib.nxutils.points_inside_poly` that you could use (if you have it installed) or else copy it (it's BSD-licensed). See this page for a discussion of the algorithms used and other algorithms for inside-a-polygon tests.

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what is this `X[:,1]` syntax? I'm getting really strange errors. –  Xavier Ho May 27 '10 at 1:54
These need to be NumPy arrays sized the way I specified. X[:,1] selects all the elements in the second column. –  dwf May 27 '10 at 7:51

If I understand your problem correctly then the following should work assuming that your points are also 2-tuples.

``````def in_bin(point, lower_corner, upper_corner):
"""
lower_corner is a 2-tuple - the coords of the lower left hand corner of the
bin.
upper_corner is a 2-tuple - the coords of the upper right hand corner of the
bin.
"""
return lower_corner <= point <= upper_corner

if __name__ == '__main__':
p_min = (1, 1) # lower left corner of bin
p_max = (5, 5) # upper right corner of bin

p1 = (3, 3) # inside
p2 = (1, 0) # outside
p3 = (5, 6) # outside
p4 = (1, 5) # inside

points = [p1, p2, p3, p4]

for p in points:
print '%s in bin: %s' % (p, in_bin(p, x_min, x_max))
``````

This code shows that you can compare tuples directly - there is some information in the documentation about this: http://docs.python.org/tutorial/datastructures.html#comparing-sequences-and-other-types

-

Without too much change, your code can be compacted down to:

``````def isInside(self, point, x0, x1, y0, y1):
return getProduct(point, (x0, y0), (x1, y0)) >= 0 and
getProduct(point, (x1, y0), (x1, y1)) >= 0 and
getProduct(point, (x1, y1), (x0, y1)) >= 0 and
getProduct(point, (x0, y1), (x0, y0)) >= 0

def getProduct(origin, pointA, pointB):
product = (pointA[0] - origin[0])*(pointB[1] - origin[1]) - (pointB[0] - origin[0])*(pointA[1] - origin[1])
return product
``````
-

Your solution is `O(N)` where N is number of points. If N is large enough and you are running the query `isInside` a lot of times, you might considering sorting the points and then using binary search in order to find the relevant points.

As always, first profile whether you really need this optimisation.

-
If there is a loop I can't see it... four checks are `O(4) = O(1)`. –  badp May 25 '10 at 11:21
A loop on every point (as i mentioned N points -> O(N) –  Drakosha May 25 '10 at 14:11

I used a similar routine to do colourmapped density plots:

``````#calculate densities
rho = zeros((nx,ny));
for i in range(N):
x_sample = int(round(ix[i]))
y_sample = int(round(iy[i]))

if (x_sample > 0) and (y_sample > 0) and (x_sample<nx) and (y_sample<ny):
rho[y_sample,x_sample] = rho[y_sample,x_sample] + 1
``````

Instead of counting density you can store the x and y samples.

-

If you really do need to use `getProduct`... packing, unpacking and good variable names ftw!

``````def isInside(self, point, x0, x1, y0, y1):
A = x0,y0
B = x1,y0
C = x1,y1
D = x0,y1

return getProduct(point, A, B) and
getProduct(point, B, C) and
getProduct(point, C, D) and
getProduct(point, D, A)

def getProduct(origin, pointA, pointB):
xA,yA = pointA
xB,yB = pointB
x,y = point

return (xA - x)*(yB - y) - (xB - x)*(yB - y)
``````
-

Are you sure you need such a complicated check to begin with?

``````def isInside(self, point, x0, y0, x1, y1):
x,y = point
if x0 > x1: x0,x1 = x1,x0 #these cause no
if y0 > y1: y0,y1 = y1,y0 #side effect.

return x0 <= x <= x1 and y0 <= y <= y1
``````
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I hope I misunderstood what you were trying to achieve :) Way to wear the complicator's gloves. –  badp May 25 '10 at 11:18

Assuming that your boxes are rectangular, do not overlap, and have no gaps, then why don't you just call `numpy.histogram2d`? See the numpy docs.

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