Distance approximation?

I am doing pathfinding on a 2D grid.

I need to calculate distance as one of my heuristics.

Furthermore I need to return the closest spot if the full path is not found.

Calculating the exact distance to a double precision seems like unnecessary overhead. Is there any fast approximation I can use, which will still be accurate enough to meet my needs? (within rounding accuracy of 1)

By the way, path lengths are typically only around 5-30 nodes, so using a more accurate function at the end wouldn't be worth it.

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What kind of moves are legal? (and why has no one asked that yet? knowing the moves is crucial to finding a good heuristic) –  harold Oct 27 '11 at 11:08

I need to return the closest spot if the full path is not found.

In this case you could skip the square root operation in the distance calculation, i.e. compare squared distances using just `dy * dy + dx * dx`.

This works since a2 < b2 if and only if a < b for two arbitrary distances a and b.

In a 2D grid this would be implemented purely with integers.

If you need non-integer values, I'd probably go with `double`s until that proves to be a bottleneck.

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It's the most demanding function of the program. Timed them. It will cause lag so yes I'm micro-optimizing. :) –  user1012037 Oct 27 '11 at 8:48
Heheh.. That good to hear :) I don't have any better option than `dy*dy + dx*dx`. That will however avoid doubles any way. –  aioobe Oct 27 '11 at 8:49
@aioobe. Is it necessary to use dy*dy + dx*dx, or just dy + dx will work? Is there something I am missing? –  KK. Oct 27 '11 at 9:00
dy + dx will get the closest point in terms of Manhattan distance. I wouldn't say that that is actually the closest point. Consider for instance if my unit moves to a position (1,1) away from it's goal (that is, dx = dy = 1) then I'd say he's closer than if he had moved (2, 0) away from his goal. (Since the actual distance from the goal is √2.) –  aioobe Oct 27 '11 at 9:04
Thanks, voted this as the answer. I implemented it and the pathfinding is 3x faster, just in case anyone thought it is unnecessary optimizing. ;) –  user1012037 Oct 27 '11 at 9:34

If it is a 2D grid you could consider using the Manhattan distance. This would allow you to work in grid units all the time and avoid the square root. As aioobe suggests, this is probably micro-optimizing.

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Slightly better than Manhattan distance and nearly as fast would be:

``````unsigned int fastDist(unsigned int dx, unsigned int dy) {
if ( dy < dx ) return (dx + (dy >> 1));
else return (dy + (dx >> 1));
}
``````

It's exact when either dx or dy are zero. The error on the diagonal is about 6% and the maximum error is about 12%.

And this can be improved by adding another term:

``````unsigned int fastDist(unsigned int dx, unsigned int dy) {
unsigned int w;
if ( dy < dx ) {
w = dy >> 2;
return (dx + w + (w >> 1));
}
else {
w = dx >> 2;
return (dy + w + (w >> 1));
}
}
``````

This has a maximum error of less than 7% and the error along the diagonal is less than 3%.

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This is a nice mechanism with odd properties I'm still trying to understand. There's a write-up here with a derivation and some refinement: flipcode.com/archives/Fast_Approximate_Distance_Functions.shtml –  phord Nov 4 '13 at 15:28