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What is the fastest way to find closest point to the given point in data array?

For example, I have 3D space, array of points (coordinates - (x,y,z)) and point (xp, yp,zp). I need to find closest point to the (xp, yp, zp).

As far as I know, slowest way to do it is to use linear search. Are there any better solutions?

Addition of any auxilary data is possible.

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up vote 13 down vote accepted

You may organize your points in an Octree. Then you only need to search a small subset.

See: en.wikipedia.org/wiki/Octree

This is a fairly simple data structure you can implement yourself (which would be a valuable learning experience), or you may find some helpful libraries to get you going.

Note: I originally said Quadtree (which is for 2D) by accident. Thanks @marcog for the correction.

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Quadtrees are for 2D. You probably meant octrees. – marcog Dec 3 '10 at 23:15
The algorithms suggested here are effective only if we need to repeatedly search for a nearest neighbor for a lot of points. If we just need the information for one point, a linear search is more efficient. – efficiencyIsBliss Dec 7 '10 at 20:42
Elaborating on my comment, building the tree itself (KD Tree or OC Tree) will be worse than linear. I'm not sure about OC trees, but KD Trees take O(NlogN). Therefore, for a single query a linear search is better. – efficiencyIsBliss Dec 7 '10 at 20:44
@efficiencyIsBliss But you konw what is the cost of calculating hundreds of thousands of multiplcations only for kNN of a single point?This could be reduced to just a few distance calculation in Octree and the cost of building an octree is much less than the overhead of the numerous multiplications in the distance calculation in linear serach even it is just for one point because nowadays, point cloud is easily large enough to have more than 100k points. – Gab May 8 at 10:59

If you're doing a once-off nearest neighbour query, then a linear search is really the best you can get. This is of course assuming the data isn't pre-structured.

However, if you're going to be doing lots of queries there are a few space-partitioning data structures.These take some preprocessing to form the structure, but then can answer nearest neighbour queries very fast.

Since you're dealing with 3D space, I recommend looking at either octrees or kd-trees. Kd-trees are more generic (they work for arbitrary dimensions) and can be made more efficient than octrees if you implement a suitable balancing algorithm (e.g. median works well), but octrees are easier to implement.

ANN is a great library using these data structures, but also allowing for approximate nearest neighbor queries which are significantly faster but have a small error as they're just approximations. If you can't take any error, then set the error bound to 0.

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Unless they are not organized in a proper data structure, the only way will be linear search.

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Its my understanding quadtree is for 2d, but you could calculate something for 3d thats is very similar. This will speed up your search, but it will require much more time to calculate the index if done on the fly. I would suggest calculating the index once then storing it. On every lookup you figure out all of the exterior quads then work your way in looking for hits... it would look like pealing an orange. The speed will greatly increase as the quads get smaller. Everything has a trade off.

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BTW if you really have tons of points in the same quad, its common to do a quad in a quad... and keep nesting to the resolution that makes sense. For 3d this could cost a lot... 2d is usually not too bad. – CrazyDart Dec 3 '10 at 22:12
The 3d structure is called an octree. – marcog Dec 3 '10 at 23:16

I would use a KD-tree to do this in O(log(n)) time, assuming the points are randomly distributed or you have a way to keep the tree balanced.


KD trees are excellent for this kind of spatial query, and even allow you to retrieve the nearest k neighbors to a query point.

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I suggest KD-Tree will work fine.Also good for nearest neighbour searches.

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The "Fastest" way to do it, considering the search ONLY, would be to use voxels. With a 1:1 point-voxel map, the access time is constant and really fast, just shift the coordinates to center your point origin at the voxel origin(if needed) and then just round-down the position and access the voxel array with that value. For some cases, this is a good choice. As explained before me, octrees are better when a 1:1 map is hard to get( too much points, too little voxel resolution, too much free space).

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check this out.. You can consult CLRS computational geometry chapter also.. http://www.cs.ucsb.edu/~suri/cs235/ClosestPair.pdf

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