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I am writing a code in C++ and want to compute distance between two points. Question 1:

I have two points P(x1, y1, z1) and Q(x2, y2, z2) , where x, y and z are floats/doubles.

I want to find the distance between these two points. One way to do it is :

square_root(x_diff*x_diff + y_diff*y_diff + z_diff*z_diff)

But this is probably not the most efficient way . (e.g. a better formula or a ready made utility in math.h etc )

Question 2:

Is there a better way if I just want to determine if P and Q are in fact the same points?

My inputs are x, y and z coordinates of both the points.

Thank you

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2  
On Question 2 - what's stopping you from just comparing each component of the 3D coordinate? –  Tom Duckering Feb 15 '10 at 8:45
    
@Tom Duckering : "what's stopping you..."-- My brain! I need a break. –  memC Feb 15 '10 at 9:01
4  
@Tom The fact that a comparison is actually quite a slow operation (probably involves a branch, and hence some degree of pipeline flush), and that comparing floating point values for equality is never a good idea. –  James Feb 15 '10 at 13:49
    
Comparison is not actually that slow; floating-point compares are about the same speed as floating-point addition on "typical" hardware. MSalters explains how to do an approximate equality test in three adds and one compare in a comment below, which is certainly faster than two adds, three multiplies (possibly a square root) and a compare. –  Stephen Canon Feb 15 '10 at 20:36

11 Answers 11

up vote 36 down vote accepted

Do you need the actual distance? You could use the distance squared to determine if they are the same, and for many other purposes. (saves on the sqrt operation)

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11  
This is the correct answer for comparisons--and many other vector operations where you think you need distance. Use distance squared! For example, instead of writing sqrt(dx*dx + dy*dy + dz*dz) < epsilon you write dx*dx + dy*dy + dz*dz < epsilonsquared. Mathematically equivalent, and much faster. –  Rex Kerr Feb 15 '10 at 14:30

Is there a better way if I just want to determine if P and Q are in fact the same points?

Then just compare the coordinates directly!

bool areEqual(const Point& p1, const Point& p2) {
     return fabs(p1.x - p2.x) < EPSILON &&
            fabs(p1.y - p2.y) < EPSILON &&
            fabs(p1.z - p2.z) < EPSILON;
}
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+1, saved my typing and testing (even before the IDE spawned, hehe) –  mlvljr Feb 15 '10 at 8:49
    
thanks Mehrdad.. that answers my second question. –  memC Feb 15 '10 at 8:50
4  
You're using an EPSILON-sized cube to determine proximity. Reasonable, but it's quicker to check (fabs(p1.x - p2.x) + fabs(p1.y - p2.y) + fabs(p1.z - p2.xz)) < EPSILON_3D - single comparison. (with EPSILON <= EPSILON_3D <= 3*EPSILON) –  MSalters Feb 15 '10 at 11:05
3  
No, the "precision" is determined exclusively by the size of the volume around p1 considered equal to p1. Both our tests use a cube, mine is just rotated. You can get exactly the same box size by an appropriate choice of EPSILON_3D (sqrt(3) * EPSILON IIRC), and thus exactly the same precision. As to speed; test it if you don't believe it. –  MSalters Feb 15 '10 at 13:48
1  
MSalters: Yes, you're right about sqrt(3) * EPSILON. I was thinking about 3 * EPSILON which is less precise. –  Mehrdad Afshari Feb 15 '10 at 14:59

No, there is no more efficient way to calc the dist. Any treatment with special cases p.x==q.x etc. will be slower on average.

Yes, the fastest way to see if p and q are the same points is just comparing x, y, z. Since they are float, you should not check == but allow for some finite, small difference which you define.

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You may try to use SSE extensions. For example, you can init two vectors A(x1,y1,z1) and B(x2,y2,z2):

_m128 A = _mm_set_ps(x1, y1, z1, 0.0f)
_m128 B = _mm_set_ps(x2, y2, z2, 0.0f)

Then compute diff using _mm_sub_ps:

__m128 Diff = _mm_sub_ps(A, B)

Next compute sqr of diff:

__m128 Sqr = __mm_mul_ps(Diff, Diff)

And finally:

__m128 Sum = add_horizontal(Sqr)
__m128 Res = _mm_sqrt_ss(Sum)

Res[0] will be filled with your answer.

P.S. add_horizontal is a place for optimization

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Many modern compilers use SSE and SSE2 by themselves. –  AndreyT Feb 15 '10 at 17:23
1  
IIRC SSE3 includes some kind of add_horizontal operation. It might only have a double-precision version though. Also, you used _mm_set_ps instead of _mm_sub_ps when you calculate Diff. I don't have enough ninja power to correct it myself :) –  Peter Feb 15 '10 at 20:38
    
There's a horizontal add for single-precision as well (haddps, though it doesn't sum the entire vector in one operation; it needs to be invoked twice to sum all four elements. On some architectures, this can be slower than an equivalent sequence of shuffles and adds, depending on what other instructions are in flight). –  Stephen Canon Feb 15 '10 at 20:45

No there is no better way.

The implementation of square_root might be optimised.

If you are comparing two distances and want to know the longer, but do not care about what the actual distance is, then you can simply ingore the square-rooting step completely and manipulate your distances still squared. This would be applicable to comparing two pairs of points to determine if they are the same distance apart, for example.

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thank you Will. –  memC Feb 15 '10 at 8:58
    
I was going to say it's highly unlikely that someone could come up with a better square root function than C++'s built in one. But see pheelicks's answer. Maybe you can! –  MatrixFrog Feb 15 '10 at 20:23

You might find this article interesting:

http://www.codemaestro.com/reviews/9

It describes how the square root was calculated in the Quake 3 engine, claiming that on some CPU's it ran 4 times as fast as the sqrt() function. Not sure whether it'll give you a performance boost in C++ nowadays - but still an interesting read

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Note that when using sqrt(dx*dx+dy*dy+dz*dz) the sum of squares might overflow. hypot(dx, dy) computes a distance directly without any chance of overflow. I'm not sure of the speediest 3d equivalent, but hypot(dx, hypot(dy, dz)) does the job and won't overflow either.

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I always assume hypot was literally just doing sqrt(x*x + y*y). What does it do that's different and prevents overflow? –  MatrixFrog Feb 15 '10 at 20:17
2  
@MatrixFrog: a typical simple implementation of hypot checks the scaling of x and y; if they are well scaled, it just does sqrt(x*x + y*y), but if they are poorly scaled (such that that computation would result in undue overflow or underflow), it rescales them by some known value, then does the computation, then scales the final result. More sophisticated implementations are possible, especially when sub-ulp accuracy or correct rounding is the goal. I would suggest looking at some of the open source implementations if you're curious. –  Stephen Canon Feb 15 '10 at 20:39

Q2 answer: x1 = x2 and y1 = y2 and z1 = z2 if the points are the same.

Taking in consideration that you store points as float/double you might need to do the comparison with some epsilon.

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There are faster ways to get an approximate distance but nothing built into the standard libraries. Take a look at this article on FlipCode that covers the method for fast 2D distances. It essentially collapsed the sqrt function into a compound linear function that can be quickly calculated but isn't 100% accurate. However, on modern machines these days fpmath is fairly fast so don't optimize too early, you might find that you're fine taking your simple approach.

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The GNU Scientific Library defines gsl_hypot3 that computes exactly the distance you want in the first part of your question. Kind of overkill compiling the whole thing just for that, given Darius' suggestion, but maybe there's other stuff there you want.

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As far as Question 1 goes, the performance penalty is the calculation of the square root itself. The formula for calculating the distance using the square root of paired coordinate differences is what it is.

I would highly recommend to read this A-M-A-Z-I-N-G square root implementation by John Carmack of ID software he used in his engine in Quake III. It is simply MAGICAL.

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It's a clever implementation, but not really "amazing" to someone in the field. It's also slower than using the reciprocal square root instructions on all modern hardware. –  Stephen Canon Feb 15 '10 at 20:33
1  
John Carmack didn't write that algorithm, actually. I forget who, but it wasn't him. –  GManNickG Feb 15 '10 at 20:58

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