# How do I calculate the surface area of a 2d polygon?

Assuming a series of points in 2d space that do not self-intersect, what is an efficient method of determining the area of the resulting polygon?

As a side note, this is not homework and I am not looking for code. I am looking for a description I can use to implement my own method. I have my ideas about pulling a sequence of triangles from the list of points, but I know there are a bunch of edge cases regarding convex and concave polygons that I probably won't catch.

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The term "surface area" is a bit misleading. What you seem to want is just the (regular) area. In 3D, surface area is the area of the outer surface, so the natural 2D generalization of this concept would be the length of the perimeter of the polygon, which is clearly not what you are looking for. – batty Feb 25 '10 at 4:59

Here is the standard method, AFAIK. Basically sum the cross products around each vertex. Much simpler than triangulation.

Python code, given a polygon represented as a list of (x,y) vertex coordinates, implicitly wrapping around from the last vertex to the first:

``````def area(p):
return 0.5 * abs(sum(x0*y1 - x1*y0
for ((x0, y0), (x1, y1)) in segments(p)))

def segments(p):
return zip(p, p[1:] + [p[0]])
``````

David Lehavi comments: It is worth mentioning why this algorithm works: It is an application of Green's theorem for the functions -y and x; exactly in the way a planimeter works. More specifically:

Formula above =
`integral_over_perimeter(-y dx + x dy) =`
`integral_over_area((-(-dy)/dy+dx/dx) dy dx) =`
`2 Area`

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It is worth mentioning why this algorithm works: It is an application of Green's theorem for the functions -y and x; exactly in the way a planimeter works. More specifically: Formula above = integral_permieter(-y dx + x dy) = integral_area((-(-dy)/dy+dx/dx)dydyx = 2 Area – David Lehavi Jan 17 '09 at 6:44
The link in the post is dead.Does anyone have another? – Yakov Jul 11 '11 at 12:42
The linked discussion on compgeom-discuss@research.bell-labs.com mailing list is unavalable to me. I copied the message from Google Cache: gist.github.com/1200393 – Andrew Андрей Листочкин Sep 7 '11 at 12:10
Here is another link for explanation. mathopenref.com/coordpolygonarea.html – imsc Feb 17 '12 at 10:09
@perfectionm1ng switching directions would flip the sign in the sum, but `abs()` strips the sign out. – Darius Bacon Nov 19 '13 at 9:38

The cross product is a classic.

If you have zillion of such computation to do, try the following optimized version that requires half less multiplications:

``````area = 0;
for( i = 0; i < N; i += 2 )
area += x[i+1]*(y[i+2]-y[i]) + y[i+1]*(x[i]-x[i+2]);
area /= 2;
``````

I use array subscript for clarity. It is more efficient to use pointers. Though good compilers will do it for you.

The polygon is assumed to be "closed", which means you copy the first point as point with subscript N. It also assume the polygon has an even number of points. Append an additional copy of the first point if N is not even.

The algorithm is obtained by unrolling and combining two successive iterations of the classic cross product algorithm.

I'm not so sure how the two algorithms compare regarding numerical precision. My impression is that the above algorithm is better than the classic one because the multiplication tend to restore the loss of precision of the subtraction. When constrained to use floats, as with GPU, this can make a significant difference.

EDIT: "Area of Triangles and Polygons 2D & 3D" describes an even more efficient method

``````// "close" polygon
x[N] = x[0];
x[N+1] = x[1];
y[N] = y[0];
y[N+1] = y[1];

// compute area
area = 0;
for( size_t i = 1; i <= N; ++i )
area += x[i]*( y[i+1] - y[i-1] );
area /= 2;
``````
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I cannot imagine the second code snippet will work. It's pretty obvious that, the further the polygon is on the X axis, the larger its area would be. – Cygon Apr 29 '12 at 9:19
It is a correct mathematical rearrangement of the algorithm described above saving some multiplications. You are right, but the areas defined by other vertexes will subtract. But this may indeed lead to precision degradation. – chmike May 14 '12 at 9:12
Sorry, but I don't think this is right. One just needs to look at the loop to see that it cannot work. Here's an example program that demonstrates that the result of the second algorithm changes completely depending on the translation of the polygon on the X axis: pastebin.com/Mb8uQpz5 – Cygon May 15 '12 at 14:58
What you overlooked is that the addition has always some negative terms because of the y subtraction. Consider any 2d polygonal shape and compare y values of consecutive vertexes. You'll see that some subtraction will yield a negative value and some positive. – chmike May 15 '12 at 15:52
Indeed, that last paragraph is what I couldn't wrap my mind around! With i <= N it works. Thanks for your patience, I take everything back :) – Cygon May 15 '12 at 16:07

Step 1 = triangulate the polygon.

Step 2 = find the area of each triangle.

Step 3 = add up the areas from Step 2.

Step 1 is the difficult part.

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– Jimmy Jan 16 '09 at 18:24
He didn't specify it's guaranteed to be convex :( – Marcin Jan 16 '09 at 18:26
You don't need a full triangulation, or a convex polygon/hull. Just pick any vertex as common to all triangles, and walk the edge of the polygon, treating "negative" triangles as negative area (this is roughly equivalent to most of the other answers here) – comingstorm Jan 16 '09 at 19:16

can be simplified to:

If you write out a few terms and group them according to common factors of `xi`, the equality is not hard to see.

The final summation is more efficient since it requires only `n` multiplications instead of `2n`.

``````def area(x, y):
return abs(sum(x[i] * (y[i + 1] - y[i - 1]) for i in xrange(-1, len(x) - 1))) / 2.0
``````

I learned this simplification from Joe Kington, here.

If you have NumPy, this version is faster (for all but very small arrays):

``````def area_np(x, y):
x = np.asanyarray(x)
y = np.asanyarray(y)
n = len(x)
shift_up = np.arange(-n+1, 1)
shift_down = np.arange(-1, n-1)
return (x * (y.take(shift_up) - y.take(shift_down))).sum() / 2.0
``````
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Thanks for the NumPy version. – physicsmichael Jun 11 '14 at 17:03

A set of points without any other constraints don't necessarily uniquely define a polygon.

So, first you have to decide what polygon to build from these points - perhaps the convex hull? http://en.wikipedia.org/wiki/Convex_hull

Then triangulate and calculate area. http://www.mathopenref.com/polygonirregulararea.html

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Here is a good explanation that hasn't been linked yet: http://www.wikihow.com/Calculate-the-Area-of-a-Polygon

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To expand on the triangulate and sum triangle areas, those work if you happen to have a convex polygon OR you happen to pick a point that doesn't generate lines to every other point that intersect the polygon.

For a general non-intersecting polygon, you need to sum the cross product of the vectors (reference point, point a), (reference point, point b) where a and b are "next" to each other.

Assuming you have a list of points that define the polygon in order (order being points i and i+1 form a line of the polygon):

Sum(cross product ((point 0, point i), (point 0, point i + 1)) for i = 1 to n - 1.

Take the magnitude of that cross product and you have the surface area.

This will handle concave polygons without having to worry about picking a good reference point; any three points that generate a triangle that is not inside the polygon will have a cross product that points in the opposite direction of any triangle that is inside the polygon, so the areas get summed correctly.

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Or do a contour integral. Stokes' Theorem allows you to express an area integral as a contour integral. A little Gauss quadrature and Bob's your uncle.

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To calc the area of the polygon

http://community.topcoder.com/tc?module=Static&d1=tutorials&d2=geometry1#polygon_area

``````int cross(vct a,vct b,vct c)
{
vct ab,bc;
ab=b-a;
bc=c-b;
return ab.x*bc.y-ab.y*bc.x;
}
double area(vct p[],int n)
{
int ar=0;
for(i=1;i+1<n;i++)
{
vct a=p[i]-p[0];
vct b=p[i+1]-p[0];
area+=cross(a,b);
}
return abs(area/2.0);
}
``````
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This is a 3 year old question with 34 upvotes on the accepted answer. Tell us how your answer is better than any of the other answers already posted. – Mark Taylor Oct 4 '12 at 21:05
It is an example in c and not python. Not better but nice to have it in different languages – underdoeg Aug 27 at 14:11

One way to do it would be to decompose the polygon into triangles, compute the area of the triangles, and take the sum as the area of the polygon.

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1. Set a base point (the most convex point). This will be your pivot point of the triangles.
2. Calculate the most-left point (arbitrary), other than your base point.
3. Calculate the 2nd-most-left point to complete your triangle.
4. Save this triangulated area.
5. Shift over one point to the right each iteration.
6. Sum the triangulated areas
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Make sure you negate the triangle area if the next point is moving "backwards". – recursive Jan 17 '09 at 20:24

language independent solution:

GIVEN: a polygon can ALWAYS be composed by n-2 triangles that do not overlap (n = number of points OR sides). 1 triangle = 3 sided polygon = 1 triangle; 1 square = 4 sided polygon = 2 triangles; etc ad nauseam QED

therefore, a polygon can be reduced by "chopping off" triangles and the total area will be the sum of the areas of these triangles. try it with a piece of paper and scissors, it is best if you ca visualize the process before following.

if you take any 3 consecutive points in a polygons path and create a triangle with these points, you will have one and only one of three possible scenarios:

1. resulting triangle is completely inside original polygon
2. resulting triangle is totally outside original polygon
3. resulting triangle is partially contained in original polygon

we are interested only in cases that fall in the first option (totally contained).

every time we find one of these, we chop it off, calculate its area (easy peasy, wont explain formula here) and make a new polygon with one less side (equivalent to polygon with this triangle chopped off). until we have only one triangle left.

how to implement this programatically:

create an array of (consecutive) points that represent the path AROUND the polygon. start at point 0. run the array making triangles (one at a time) from points x, x+1 and x+2. transform each triangle from a shape to an area and intersect it with area created from polygon. IF the resulting intersection is identical to the original triangle, then said triangle is totally contained in polygon and can be chopped off. remove x+1 from the array and start again from x=0. otherwise (if triangle is outside [partially or completely] polygon), move to next point x+1 in array.

additionally if you are looking to integrate with mapping and are starting from geopoints, you must convert from geopoints to screenpoints FIRST. this requires deciding a modelling and formula for earths shape (though we tend to think of the earth as a sphere, it is actually an irregular ovoid (eggshape), with dents). there are many models out there, for further info wiki. an important issue is whether or not you will consider the area to be a plane or to be curved. in general, "small" areas, where the points are up to some km apart, will not generate significant error if consider planar and not convex.

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My inclination would be to simply start slicing off triangles. I don't see how anything else could avoid being awfully hairy.

Take three sequential points that comprise the polygon. Ensure the angle is less than 180. You now have a new triangle which should be no problem to calculate, delete the middle point from the polygon's list of points. Repeat until you have only three points left.

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The hairy part about this is that if your three consecutive points define a triangle outside or partially outside of the polygon, then you have a problem. – Richard Nov 17 '12 at 19:44
@Richard: That's why the qualification about 180 degrees. If you slice off a triangle outside the polygon you'll end up with too many degrees. – Loren Pechtel Nov 18 '12 at 20:28
you may need to better describe how you are finding the angle. There is no way in plane geometry to have 3 points as part of a triangle and have any angle or combination of angles exceed 180 degrees - the check would seem to be meaningless. – Richard Nov 18 '12 at 22:09
@Richard: On your polygon you have the angle of every junction. If the relevant triangle would lie outside the polygon the angle between the two segments will be greater than 180 degrees. – Loren Pechtel Nov 19 '12 at 19:08
You mean the interior angle of the two adjacent edge segments would be greater than 180 degrees. – Richard Nov 19 '12 at 20:36

Better than summing triangles is summing trapezoids in the Cartesian space:

``````area = 0;
for (i = 0; i < n; i++) {
i1 = (i + 1) % n;
area += (vertex[i].y + vertex[i1].y) * (vertex[i1].x - vertex[i].x) / 2.0;
}
``````
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Implementation of Shoelace formula could be done in Numpy. Assuming these vertices:

``````import numpy as np
x = np.arange(0,1,0.001)
y = np.sqrt(1-x**2)
``````

We can define the following function to find area:

``````def PolyArea(x,y):
return 0.5*np.abs(np.dot(x,np.roll(y,1))-np.dot(y,np.roll(x,1)))
``````

And getting results:

``````print PolyArea(x,y)
# 0.26353377782163534
``````

Avoiding loop makes this function ~50X faster than `PolygonArea`:

``````%timeit PolyArea(x,y)
# 10000 loops, best of 3: 42 µs per loop
%timeit PolygonArea(zip(x,y))
# 100 loops, best of 3: 2.09 ms per loop
``````

Note: I had written this answer for another question, I just mention this here to have a complete list of solutions.

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