Assume I have 4 points (they are 2-dimension), which are different from each other, and I want to know whether they form a square. How to do it? (let the process be as simple as possible.)

  • 4
    I take it you'd need to account for rotated squares? Nov 23, 2012 at 12:59
  • Do you have information about the order of the points at all? I.e. can you tell whether two points are adjacent, or form a diagonal? (this info can be used to simplify the process)
    – Daniel B
    Nov 23, 2012 at 13:53
  • 1
    @DanielB No other information. It just like I have a white paper and draw 4 points on it randomly. Then I want to know whether they form a square.
    – MarshalSHI
    Nov 23, 2012 at 14:05
  • 6
    Particularly if the points are represented as floating point numbers, it is useful to include a sense of "tolerance" in any of the comparisons suggested below. Exact equality checks can fail for the results of floating point operations, even when we humans would consider them "close enough." Nov 29, 2012 at 22:40
  • This smells like a homework question. Not that there's anything wrong with that. :/ whathaveyoutried.com
    – Jim G.
    Dec 2, 2012 at 23:56

12 Answers 12


Assuming that your square might be rotated against whatever coordinates system you have in place, you can't rely on there being any repetition of X and Y values in your four points.

What you can do is calculate the distances between each of the four points. If you find the following to be true, you have a square:

  1. There are two points, say A and C which are distance x from each other, and two other points, say B and D which are also distance x from each other.

  2. Each point {A, B, C, D} is an equal distance from the two points which aren't x away. i.e.: If A is x away from C, then it will be z away from both B and D.

Incidentally, the distance z will have to be SQRT((x^2)/2), but you don't need to confirm this. If conditions 1 and 2 are true then you have a square. NOTE: Some people are concerned about the inefficiency of square root. I didn't say that you should do this calculation, I just said that if you did you would get a predictable result!

Illustration of Square Rules

The bare minimum of work that you would need to do would be to pick a point, say A and calculate the distance to each of the other three points. If you can find that A is x from one point and z from two other points, then you just need to check those two other points against each other. If they are also x from each other then you have a square. i.e.:

  • AB = z
  • AC = x
  • AD = z

Since AB = AD, check BD:

  • BD = x

Just to be sure, you need to check the other sides: BC and CD.

  • BC = z
  • CD = z

Since AC = BD and since AB = AD = BC = CD, this is therefore a square.

Along the way, if you find more than two distinct edge distances then the figure cannot be a square, so you can stop looking.

Working Example Implementation

I have created a working example on jsfiddle (see here). In my explanation of the algorithm, I use arbitrary points A, B, C, and D. Those arbitrary points happen to be in a certain order for the sake of walking through the example. The algorithm works even if the points are in a different order, however, the example doesn't necessarily work if those points are in a different order.

Thanks to: meshuai, Blrfl, MSalters and Bart van Ingen Schenau for useful comments to improve this answer.

  • 19
    You can short-circuit this process and not worry about how the points are ordered by measuring the distance between them and keeping track of the number of unique distances you find. Once you exceed two (Joel's x and z), the figure isn't a square.
    – Blrfl
    Nov 23, 2012 at 13:36
  • 3
    Another optimisation would be to compare the squared distances, instead of the distances. Nov 23, 2012 at 14:03
  • 5
    @Blrfl: Your test doesn't work. Let ABCD be a diamond with AB=BC=CD=DA=1, AC=1 too (short diagonal), then AD~1.7 (long diagonal)/ You have only two lengths x and z, yet the figure is not a square.
    – MSalters
    Nov 23, 2012 at 14:23
  • 2
    @JoelBrown: It is possible to create a trapezium shape with the diagonals AC = BD = x, the sides AB = BC = AD = z and the last side CD = y != z. Nov 23, 2012 at 14:38
  • 2
    Fair enough, note however that OP said explicitly 2 dimensions.
    – Joel Brown
    Nov 23, 2012 at 21:03

Pick three of the four points.

Figure out if it's a right isosceles triangle by checking if one of the three vectors between points is equal to another one rotated by 90 degrees.

If so, compute the fourth point by vector addition and compare it to the given fourth point.

Note that this doesn't require expensive square roots, not even multiplication.

  • One of the two good answers. Don't use sqrt unless crucial! You don't need to degrade integer calculations to FP... not to mention worsen the precision of the FP computation.
    – K.Steff
    Nov 23, 2012 at 19:16
  • thx. a good one.
    – MarshalSHI
    Nov 24, 2012 at 5:46
  • Now that's the right way to do it. Multiplication is indeed not needed here.
    Nov 29, 2012 at 11:06
  • 1
    (x,y) rotated by a right angle is (-y,x) or (y,-x), depending on whether you rotate in the positive or negative direction, respectively.
    – starblue
    Apr 3, 2018 at 10:12
  • 1
    A vector (x,y) rotated left by a right angle is (-y,x), and rotated right (y,-x).
    – starblue
    Aug 19, 2019 at 19:20

I think the easiest solution is the following:

  • First, calculate the center of the 4 points: center = (A + B + C + D)/4

  • Then calculate the vector A - center. Let this be v := (x,y)

  • Let v2 be the vector v rotated by 90 degrees: v2 := (-y, x)

  • Now the other points should be center - v, center + v2 and center - v2.

The advantage of this solution is that you don't have to use square roots at all.

  • 2
    Yeah. This is the most comprehensible and probably the easiest to implement as well.
    – Eric G
    Nov 30, 2012 at 17:39
  • It seems like vector equality of segments. Can anyone please elaborate or prove why it works?
    – vCillusion
    Jul 18, 2016 at 16:16
  • It fails specifically for case (0,0), (2,1), (3,-1), (1, -2) -- square not aligned to axis
    – vCillusion
    Jul 18, 2016 at 16:52
  • 1
    It works for this case. The center point is (1.5, -0.5), first point is (0, 0) and three other points are (1.5, -0.5)+(1.5, -0.5) = (3, -1); (1.5, -0.5)+(0.5, 1.5) = (2, 1) and (1.5, -0.5)-(0.5, 1.5) = (1, -2) which means it's a square. The proof is .. symmetry?
    – aragaer
    Jul 27, 2016 at 22:36
  • 1
    The "distance solution" needs square roots, but there's the "squared distance solution", which needs none. Yours may be still more efficient...
    – maaartinus
    Nov 18, 2019 at 21:44

I'm sorry but some answers don't apply.

For the case you measure 3 edges (let's say AB, AC and AD) to find that two have the same size (let's say AC and AD) and one is bigger (let's say AB). Then you would measure CD to see if it's the same size of AB, and you find that it is. Instead of a square, you could have the picture below, and that makes it a wrong solution.

Not a square...

Then you try some other solution: measure all the distances at least once: AB, AC, AD, BC, BD, CD. Then you find that 4 of then are equal, and the other 2 are also equal among themselves. But you could just have a picture like below:

And that's not a square, too...

So, those answers aren't correct, despite the high upvotes they received.

One possible solution: if the two equal measures don't connect the same point. So: if AB and CD are the same lenght, all the other combinations (AC, AD, BC, BD) are also equal, you have a square. If you have the same point making the biggest length (AB and AC is the biggest, and all the others are equal), you have one of the pictures above.

  • no, his algorithm said the 2 edges of distances x do not share a point. but you just share C. So, assume A-C is x, then B-D should be another x instead of your B-C.
    – MarshalSHI
    Nov 23, 2012 at 15:15

Let the four points have coordinate vectors a, b, c, d.

Then lets call their differences w=(a-d), x=(b-a), y=(c-b), z=(d-c).

Then w is orthogonal to a if you can create w from a by a 90-degree-rotation. Mathematically the 90-degree-rotation-matrix in 2-space is ( ( 0, -1 ), ( 1, 0 ) ). Thus, the condition whether w is a 90-degree-rotated a results in

( w_1 == -x_2 and w_2 == x_1 )

If this holds, then you need to check that w == -y and x == -z, or

( ( w_1 == -y_1 and w_2 == -y_2 ) and ( x_1 == -z_1 and x_2 == -z_2 ) )

If those three relations hold, a, b, c, d make an oriented square.

  • 1
    I think rectangle can satisfy your conditions, as well.
    – MarshalSHI
    Nov 23, 2012 at 15:41
  • No, the first conditionis not met by orthogonal, but not equally lengthed vectors. Nov 23, 2012 at 15:44
  • 1
    yeah, I just miss the first one. But the 4 points are not ordered. So, we need more steps, I think, in order to confirm.
    – MarshalSHI
    Nov 23, 2012 at 15:58
  • Yes... if no cleverer idea arises, one whould need to loop. I think one needs an outer loop to calculate w, x, y, z from each possible ordering of a, b, c, d, and one inner loop for each possible ordering of the w, x, y, z tuple. Nov 23, 2012 at 17:08

Similar to the answer by starblue

Pick any three of the four points.

Look for a right angled vertex among them: By checking if the dot product of any two of the three vectors is zero. If not found, not a square.

Check whether the vertices adjacent to this angle are right angled too. If not, not a square.

Check whether diagonals are perpendicular: If the dot product of the vectors between the first and fourth vertex and the other two vertices (diagonals) is zero, then its a square.

  • Good idea, but you still need to check that the 4th vertex is at the right distance from the other points. You only check that it is on the diagonal.
    – starblue
    Dec 1, 2012 at 15:49
  • @starblue Right! Otherwise it can form a kite. Updated.
    – max
    Dec 1, 2012 at 18:14

I think you can do this with simple addition and subtraction and finding min/max. Terms (matches other people's diagram):

  • Point with highest y value => A
  • highest x => B
  • lowest y => C
  • lowest x => D

If 4 points share only 2 x values and 2 y values you have a level square.

Otherwise, you have a square if your points satisfy the following:

  • A.x + C.x = B.x + D.x
  • A.y + C.y = B.y + D.y
  • A.y - C.y = B.x - D.x

Explanation: The line segments A-C and B-D should meet at their midpoints. Thus (A.x + C.x) / 2 is the midpoint of A-C and (B.x + D.x) / 2 is the midpoint of B-D. Multiply each side of this equation by 2 to get my first equation. The second equation is the same thing for Y-values. Diamond-shapes (rhomboids) will satisfy these properties, so you need to check that you have equal sides - that the width is the same as the height. That's the third equation.


enter image description here

There are some good answers here, but the question asked for the simplest approach. I gave this some quick thought and this is how I would do it.

You can tell if four points represent a square (even if rotated), but finding the average of the four points.

R = (A+B+C+D)/4

Once you have the average, the distance between each point and the average would have to be the same for all four points.

if(dist(R,A) == dist(R,B) == dist(R,C) == dist(R,D) then
   print "Is Square"
   print "Is Not Square"


My mistake. That would only tell you if the form points were on a circle. If you also check the distance between points, then it must be a square.

if(dist(R,A) == dist(R,B) == dist(R,C) == dist(R,D) AND
  (dist(A,B) == dist(B,C) == dist(C,D) == dist(A,D) then
   print "Is Square"
   print "Is Not Square"

This assumes that points A,B,C,D do not cross (as in have a valid winding order).


this is not an answer according to the standards set, but I hope this helps:

[Copied from the link below so you don't have to open the link] Python 76 characters

def S(A):c=sum(A)/4.0;return set(A)==set((A[0]-c)*1j**i+c for i in range(4))

Function S takes a list of complex numbers as its input (A). If we know both the centre and one corner of a square, we can reconstruct the square by rotating the corner 90,180 and 270 degrees around the centre point (c). On the complex plane rotation by 90 degrees about the origin is done by multiplying the point by i. If our original shape and the reconstructed square have the same points then it must have been a square.

This was taken from : Determine if 4 points form a square

If you like the answer, I say, take some moments out to thank the person, or up-vote his answer on that page.

  • 1
    You could summarize the algorithm here. You are linking to another SE site, which is slightly better than pointing to another site, but we want the answer to be on this page, where the question is being asked. Now people have to click again to learn what the answer might be. Nov 29, 2012 at 15:01

Basic idea (this answers the question of whether I was contributing something new, which was asked by the bot when I clicked to provide an answer):

  • a rhombus with equal diagonals is a square.
  • "simple as possible" includes:
    • no division,
    • no square roots,
    • no branching,
    • no searching,
    • no angle-checking or -chasing,
    • no vectors,
    • no transformations,
    • no complex numbers,
    • no multiline functions, and
    • no importing of special packages (use built-in stuff only).
    • (And no Imperial entantglements!)

My solution in R is presented below. I am assuming that there are exactly four points and that, per the problem statement, it has already been determined that the points are unique.

sumsq <- function(x) sum(x^2)

quadrances.xy <- function(xy) vapply(
    as.data.frame(t(diff(xy)), optional=T), sumsq, 1)

See the works of Norman Wildberger, especially his YouTube videos (Real fish, real numbers, real jobs et seq.) and his book Divine Proportions for a discussion of "quadrance."

xy refers to a kind of matrix accepted by R's plot, points, and lines functions.

Application of as.data.frame is a trick to get R to do things column-wise.

The optional=T clause eliminates names, which are not used, anyway.

quadrances.xy..i2. <- function(xy, i2) vapply(
    as.data.frame(i2, optional=T),
    function(k) quadrances.xy(m[k,]),

This is a function to compute the quadrances between the specified points, where pairs of points are specified by the i2 argument. The i2 symbol refers to an index matrix which has one column per index, and 2 elements per column (the same kind of matrix returned by the combn function).

quadrance.every.xy <- function(xy, .which=combn(nrow(xy), 2))
        quadrances.xy..i2.(xy, .which)

The .which is presented as an argument merely to expose it to formals and to attempt to communicate what is going on.

is.square.xy <- function(xy) {
    qq <- sort(quadrance.every.xy(xy))
    all(qq[2:4] == qq[1]) && # ALL SIDES (SHORT QUADRANCES) EQUAL

I said "simple" included no multiline functions. You'll have to excuse this two-line function.

xy <- t(matrix(c(3,0,  7,3,  4,7,  0,4), ncol=4))
#      [,1] [,2]
# [1,]    3    0
# [2,]    7    3
# [3,]    4    7
# [4,]    0    4
# [1] TRUE

Note that the first four functions are useful in their own right, apart from the question about the four points.


Assume four points A = (ax, ay), B = (bx, by), C = (cx, cy), D = (dx, dy), and they form the points of a square in anti-clockwise ordering. We move the points so that A is at (0, 0) by subtracting ax from bx, cx, and dx, and subtracting ay from by, cy, and dy, setting ax = ay = 0.

If the points are exactly the corners of a square in anti-clockwise ordering, then given A and B, we can calculate where C and D are: We should have (cx, cy) = (bx - by, bx + by) and (dx, dy) = (-by, bx). So we calculate the squared distance from where C and D are, to where they should be: errC = (cx - bx + by)^2 + (cy - bx - by)^2, and errD = (dx + by)^2 + (dy - bx)^2. We add these, and divide by (bx^2 + by^2), giving err = (errC + errD) / (bx^2 + by^2).

The result err would be 0 if a perfect square, or a small number if almost a square, and the number would stay unchanged except for rounding errors if we translate, scale, or rotate the points of the square. So we can use err to decide how good a square we have.

But we don't know the ordering of the points. B and D should be at the same distance from A; if we multiply this by the square root of 2, that should be the distance from A to C. We use this to figure out which point is C: Calculate distB = bx^2 + by^2, distD = dx^2 + dy^2. If distD ≥ 1.5 distB, then we swap C and D; if distB ≥ 1.5 distD then we swap C and B. Now C is right.

We can also figure out which points are B and D: If we guessed wrong which one is B and which one is D, then our calculation puts D into the completely wrong place, exactly opposite from where it is. So if errD ≥ (bx^2 + by^2), then we swap B and D.

This will arrange B, C and D correctly if we have a square indeed or at least roughly a square. But if we don’t have even roughly a square, we know the error calculation at the end will show this.


  1. Subtract ax from bx, cx, dx. Subtract ay from by, cy, dy.
  2. Let distB = bx^2 + by^2, distD = dx^2 + dy^2.
  3. If distD ≥ 1.5 * distB, swap C and D and calculate distD again.
  4. Otherwise, if distB ≥ 1.5 * distD, swap B and C and calculate distB again.
  5. Let errD = (dx + by)^2 + (dy - bx)^2.
  6. If errD ≥ distB then swap B and D, swap distB and distD, calculate errD again.
  7. Let errC = (cx - bx + by)^2 + (cy - bx - by)^2.
  8. Let err = (errC + errD) / distB.
  9. Decide whether we have a square or almost a square depending on the value of err.

If we know the order of the points, this can obviously be simplified.


Solution is similar to thinking media.

First step:

x = (A+B+C+D)/4
if(dist(x,A) == dist(x,B) == dist(x,C) == dist(x,D) 

This property is followed by square because it is cyclic. now a circle to follow this property. so, now just check


if (f==1)
  not square

Here A.B means dot product of A and B

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