# Calculate the area of intersection of two rotated rectangles in python

I have two 2D rotated rectangles, defined as an (center x,center y, height, width) and an angle of rotation (0-360°). How would I calculate the area of intersection of these two rotated rectangles.

• Project the vertex to the axis and check those points intersection. Jun 28, 2017 at 8:49
• Possible duplicate of Area of Intersection of Two Rotated Rectangles Jun 28, 2017 at 8:58
• This is less a software engineering problem than a mathematical problem Jul 13, 2017 at 9:54
• Its a mathematical problem for a mathematician. As a software engineer I come across this type of problem in collision detection, ocr, computer vision and other systems for which I need functional code rather than mathematical theory
– Bug
Jul 13, 2017 at 11:59
• Can we assume that two of the sides will not be collinear? Jul 21, 2017 at 20:15

Such tasks are solved using computational geometry packages, e.g. Shapely:

import shapely.geometry
import shapely.affinity

class RotatedRect:
def __init__(self, cx, cy, w, h, angle):
self.cx = cx
self.cy = cy
self.w = w
self.h = h
self.angle = angle

def get_contour(self):
w = self.w
h = self.h
c = shapely.geometry.box(-w/2.0, -h/2.0, w/2.0, h/2.0)
rc = shapely.affinity.rotate(c, self.angle)
return shapely.affinity.translate(rc, self.cx, self.cy)

def intersection(self, other):
return self.get_contour().intersection(other.get_contour())

r1 = RotatedRect(10, 15, 15, 10, 30)
r2 = RotatedRect(15, 15, 20, 10, 0)

from matplotlib import pyplot
from descartes import PolygonPatch

fig = pyplot.figure(1, figsize=(10, 4))
ax.set_xlim(0, 30)
ax.set_ylim(0, 30)

pyplot.show()


• Hi, how do you calculate the area of intersection with this?
– Bug
Jul 18, 2017 at 9:27
• @Bug once you have the shape of the intersection r1.intersection(r2) (which is a Shapely object) you only need to access its area attribute: r1.intersection(r2).area.
– Leon
Jul 18, 2017 at 10:57
• shapely rules!
– Rick
Jul 22, 2017 at 19:19
• I have installed shapely through pip install shapely, it shows Requirement already satisfied: shapely in /usr/local/lib/python2.7/dist-packages, but when I run the code, it always tell us ImportError: No module named affinity, any clue? Jul 25, 2017 at 4:25
• @user824624 Given the scarce information you've provided about your problem I have no clue as to what may have gone wrong. I think you better post a separate question for that problem and provide enough details.
– Leon
Jul 25, 2017 at 17:58

Here is a solution that does not use any libraries outside of Python's standard library.

Determining the area of the intersection of two rectangles can be divided in two subproblems:

• Finding the intersection polygon, if any;
• Determine the area of the intersection polygon.

Both problems are relatively easy when you work with the vertices (corners) of the rectangles. So first you have to determine these vertices. Assuming the coordinate origin is in the center of the rectangle, the vertices are, starting from the lower left in a counter-clockwise direction: (-w/2, -h/2), (w/2, -h/2), (w/2, h/2), and (-w/2, h/2). Rotating this over the angle a, and translating them to the proper position of the rectangle's center, these become: (cx + (-w/2)cos(a) - (-h/2)sin(a), cy + (-w/2)sin(a) + (-h/2)cos(a)), and similar for the other corner points.

A simple way to determine the intersection polygon is the following: you start with one rectangle as the candidate intersection polygon. Then you apply the process of sequential cutting (as described here. In short: you take each edges of the second rectangle in turn, and remove all parts from the candidate intersection polygon that are on the "outer" half plane defined by the edge (extended in both directions). Doing this for all edges leaves the candidate intersection polygon with only the parts that are inside the second rectangle or on its boundary.

The area of the resulting polygon (defined by a series of vertices) can be calculated from the coordinates of the vertices. You sum the cross products of the vertices of each edge (again in counter-clockwise order), and divide that by two. See e.g. www.mathopenref.com/coordpolygonarea.html

Enough theory and explanation. Here is the code:

from math import pi, cos, sin

class Vector:
def __init__(self, x, y):
self.x = x
self.y = y

if not isinstance(v, Vector):
return NotImplemented
return Vector(self.x + v.x, self.y + v.y)

def __sub__(self, v):
if not isinstance(v, Vector):
return NotImplemented
return Vector(self.x - v.x, self.y - v.y)

def cross(self, v):
if not isinstance(v, Vector):
return NotImplemented
return self.x*v.y - self.y*v.x

class Line:
# ax + by + c = 0
def __init__(self, v1, v2):
self.a = v2.y - v1.y
self.b = v1.x - v2.x
self.c = v2.cross(v1)

def __call__(self, p):
return self.a*p.x + self.b*p.y + self.c

def intersection(self, other):
# See e.g.     https://en.wikipedia.org/wiki/Line%E2%80%93line_intersection#Using_homogeneous_coordinates
if not isinstance(other, Line):
return NotImplemented
w = self.a*other.b - self.b*other.a
return Vector(
(self.b*other.c - self.c*other.b)/w,
(self.c*other.a - self.a*other.c)/w
)

def rectangle_vertices(cx, cy, w, h, r):
angle = pi*r/180
dx = w/2
dy = h/2
dxcos = dx*cos(angle)
dxsin = dx*sin(angle)
dycos = dy*cos(angle)
dysin = dy*sin(angle)
return (
Vector(cx, cy) + Vector(-dxcos - -dysin, -dxsin + -dycos),
Vector(cx, cy) + Vector( dxcos - -dysin,  dxsin + -dycos),
Vector(cx, cy) + Vector( dxcos -  dysin,  dxsin +  dycos),
Vector(cx, cy) + Vector(-dxcos -  dysin, -dxsin +  dycos)
)

def intersection_area(r1, r2):
# r1 and r2 are in (center, width, height, rotation) representation
# First convert these into a sequence of vertices

rect1 = rectangle_vertices(*r1)
rect2 = rectangle_vertices(*r2)

# Use the vertices of the first rectangle as
# starting vertices of the intersection polygon.
intersection = rect1

# Loop over the edges of the second rectangle
for p, q in zip(rect2, rect2[1:] + rect2[:1]):
if len(intersection) <= 2:
break # No intersection

line = Line(p, q)

# Any point p with line(p) <= 0 is on the "inside" (or on the boundary),
# any point p with line(p) > 0 is on the "outside".

# Loop over the edges of the intersection polygon,
# and determine which part is inside and which is outside.
new_intersection = []
line_values = [line(t) for t in intersection]
for s, t, s_value, t_value in zip(
intersection, intersection[1:] + intersection[:1],
line_values, line_values[1:] + line_values[:1]):
if s_value <= 0:
new_intersection.append(s)
if s_value * t_value < 0:
# Points are on opposite sides.
# Add the intersection of the lines to new_intersection.
intersection_point = line.intersection(Line(s, t))
new_intersection.append(intersection_point)

intersection = new_intersection

# Calculate area
if len(intersection) <= 2:
return 0

return 0.5 * sum(p.x*q.y - p.y*q.x for p, q in
zip(intersection, intersection[1:] + intersection[:1]))

if __name__ == '__main__':
r1 = (10, 15, 15, 10, 30)
r2 = (15, 15, 20, 10, 0)
print(intersection_area(r1, r2))

• No wonder you are a compatriot of the three Marks coauthoring the Computational Geometry book. I have a feeling that you may know some of them in person.
– Leon
Jul 23, 2017 at 18:49
• BTW, you should note in your answer that it works for computing the intersection of any polygon with any convex polygon.
– Leon
Jul 23, 2017 at 19:05
• Thank you for this answer, its very clear and useful! Is there a mathematical name for the operation happening in Line.__call__(). It seems like its related to this? math.stackexchange.com/questions/274712/… May 3, 2020 at 15:19
intersection, pnt = contourIntersection(rect1, rect2)


After looking at the possible duplicate page for this problem I couldn't find a completed answer for python so here is my solution using masking. This function will work with complex shapes on any angle, not just rectangles

You pass in the 2 contours of your rotated rectangles as parameters and it returns 'None' if no intersection occurs or an image of the intersected area and the left/top position of that image in relation to the original image the contours were taken from

Uses python, cv2 and numpy

import cv2
import math
import numpy as np

def contourIntersection(con1, con2, showContours=False):

# skip if no bounding rect intersection
leftmost1 = tuple(con1[con1[:, :, 0].argmin()][0])
topmost1 = tuple(con1[con1[:, :, 1].argmin()][0])
leftmost2 = tuple(con2[con2[:, :, 0].argmin()][0])
topmost2 = tuple(con2[con2[:, :, 1].argmin()][0])

rightmost1 = tuple(con1[con1[:, :, 0].argmax()][0])
bottommost1 = tuple(con1[con1[:, :, 1].argmax()][0])
rightmost2 = tuple(con2[con2[:, :, 0].argmax()][0])
bottommost2 = tuple(con2[con2[:, :, 1].argmax()][0])

if rightmost1[0] < leftmost2[0] or rightmost2[0] < leftmost1[0] or bottommost1[1] < topmost2[1] or bottommost2[1] < topmost1[1]:
return None, None

# reset top / left to 0
left = leftmost1[0] if leftmost1[0] < leftmost2[0] else leftmost2[0]
top = topmost1[1] if topmost1[1] < topmost2[1] else topmost2[1]

newCon1 = []
for pnt in con1:

newLeft = pnt[0][0] - left
newTop = pnt[0][1] - top

newCon1.append([newLeft, newTop])
# next
con1_new = np.array([newCon1], dtype=np.int32)

newCon2 = []
for pnt in con2:

newLeft = pnt[0][0] - left
newTop = pnt[0][1] - top

newCon2.append([newLeft, newTop])
# next
con2_new = np.array([newCon2], dtype=np.int32)

# width / height
right1 = rightmost1[0] - left
bottom1 = bottommost1[1] - top
right2 = rightmost2[0] - left
bottom2 = bottommost2[1] - top

width = right1 if right1 > right2 else right2
height = bottom1 if bottom1 > bottom2 else bottom2

# create images
img1 = np.zeros([height, width], np.uint8)
cv2.drawContours(img1, con1_new, -1, (255, 255, 255), -1)

img2 = np.zeros([height, width], np.uint8)
cv2.drawContours(img2, con2_new, -1, (255, 255, 255), -1)

# mask images together using AND
imgIntersection = cv2.bitwise_and(img1, img2)

if showContours:
img1[img1 > 254] = 128
img2[img2 > 254] = 100

imgAll = cv2.bitwise_or(img1, img2)
cv2.imshow('Merged Images', imgAll)

# end if

if not imgIntersection.sum():
return None, None

# trim
while not imgIntersection[0].sum():
imgIntersection = np.delete(imgIntersection, (0), axis=0)
top += 1

while not imgIntersection[-1].sum():
imgIntersection = np.delete(imgIntersection, (-1), axis=0)

while not imgIntersection[:, 0].sum():
imgIntersection = np.delete(imgIntersection, (0), axis=1)
left += 1

while not imgIntersection[:, -1].sum():
imgIntersection = np.delete(imgIntersection, (-1), axis=1)

return imgIntersection, (left, top)
# end function


To complete the answer so you can use the above function with the values of CenterX, CenterY, Width, Height and Angle of 2 rotated rectangles I have added the below functions. Simple change the Rect1 and Rect2 properties at the bottom of the code to your own

def pixelsBetweenPoints(xy1, xy2):
X = abs(xy1[0] - xy2[0])
Y = abs(xy1[1] - xy2[1])

return int(math.sqrt((X ** 2) + (Y ** 2)))
# end function

def rotatePoint(angle, centerPoint, dist):
xPotted = int(centerPoint[0] + (dist * xRatio))
yPlotted = int(centerPoint[1] + (dist * yRatio))
newPoint = [xPotted, yPlotted]

return newPoint
# end function

def angleBetweenPoints(pnt1, pnt2):
A_B = pixelsBetweenPoints(pnt1, pnt2)

pnt3 = (pnt1[0] + A_B, pnt1[1])
C = pixelsBetweenPoints(pnt2, pnt3)

angle = math.degrees(math.acos((A_B * A_B + A_B * A_B - C * C) / (2.0 * A_B * A_B)))

# reverse if above horizon
if pnt2[1] < pnt1[1]:
angle = angle * -1
# end if

return angle
# end function

def rotateRectContour(xCenter, yCenter, height, width, angle):
# calc positions
top = int(yCenter - (height / 2))
left = int(xCenter - (width / 2))
right = left + width

rightTop = (right, top)
centerPoint = (xCenter, yCenter)

# new right / top point
rectAngle = angleBetweenPoints(centerPoint, rightTop)
angleRightTop = angle + rectAngle
angleRightBottom = angle + 180 - rectAngle
angleLeftBottom = angle + 180 + rectAngle
angleLeftTop = angle - rectAngle

distance = pixelsBetweenPoints(centerPoint, rightTop)
rightTop_new = rotatePoint(angleRightTop, centerPoint, distance)
rightBottom_new = rotatePoint(angleRightBottom, centerPoint, distance)
leftBottom_new = rotatePoint(angleLeftBottom, centerPoint, distance)
leftTop_new = rotatePoint(angleLeftTop, centerPoint, distance)

contourList = [[leftTop_new], [rightTop_new], [rightBottom_new], [leftBottom_new]]
contour = np.array(contourList, dtype=np.int32)

return contour
# end function

# rect1
xCenter_1 = 40
yCenter_1 = 20
height_1 = 200
width_1 = 80
angle_1 = 45

rect1 = rotateRectContour(xCenter_1, yCenter_1, height_1, width_1, angle_1)

# rect2
xCenter_2 = 80
yCenter_2 = 25
height_2 = 180
width_2 = 50
angle_2 = 123

rect2 = rotateRectContour(xCenter_2, yCenter_2, height_2, width_2, angle_2)

intersection, pnt = contourIntersection(rect1, rect2, True)

if intersection is None:
print('No intersection')
else:
print('Area of intersection = ' + str(int(intersection.sum() / 255)))
cv2.imshow('Intersection', intersection)
# end if

cv2.waitKey(0)

• The drawback of this solution is that it computes the result via rasterisation, which introduces inaccuracy, is slow and the result may not be directly usable (if we need it as a polygon rather than as an image). See my answer for a better option.
– Leon
Jul 17, 2017 at 10:24
• Was attempting to calc a value rather than a shape. Also was thinking the contours may be pulled from an image so returned a result which allows the mapping to the individual intersecting pixels. Only single line to turn image into polygon, didnt want to clutter code
– Bug
Jul 18, 2017 at 9:52
• After running time tests on above code using time.time() with all output to screen turned off it ran at < minimum time able to be recorded by time.time(). Also avoids unnecessary processing if no possibility of intersection occurs
– Bug
Jul 18, 2017 at 10:48