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Any recommendations for a C/C++ kd-tree?

I'm looking for an existing implementation which the poster hopefully has worked with or has heard good things about. Also, I need to use this kd-tree to do a 1/2-NN search.

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closed as off-topic by Dennis Meng, Code Maverick, bluet, robert, alphadogg Jan 31 '14 at 1:17

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Do you want to use an existing library, or do you want an explanation sufficient to implement your own? –  Jonathan Graehl Sep 9 '09 at 21:07
    
I've been wondering the same thing –  Maciek Sep 9 '09 at 21:11
    
Sorry about that, details added. –  Jacob Sep 9 '09 at 21:13

6 Answers 6

up vote 12 down vote accepted

http://people.cs.ubc.ca/~mariusm/index.php/FLANN/FLANN

Or OpenCV 1.2 which has FLANN.

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I want to mention, correct me if I am wrong, that this is library is for finding approximate nearest neighbors fast. Additionally it aims on doing nearest neighbour search for high dimensional data. So if you search a 3dtree implementation it might not be what you are looking for. –  math May 3 '13 at 9:08
    
This implementation will get the job done, but you're right ; it's not designed for that. It's overkill. –  Jacob May 29 '13 at 20:25

http://code.google.com/p/kdtree/

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Have you used it? –  Jacob Sep 9 '09 at 21:16
    
No. I wrote my own in Scala, which I imagine isn't what you want unless you enjoy translating code from one language to the next. –  Jonathan Graehl Sep 9 '09 at 21:25
    
No, that isn't what I want since there is a time constraint. –  Jacob Sep 9 '09 at 21:26
    
This project seems a bit out of date, there is e.g. an unfixed bug from 2009. –  math May 3 '13 at 9:09

This code is optimized for SIZE.

So you'll see a lot of "bad hacks".

Note that we used 'struct', but it can be easily changed to be a class if you add public:. Paste also missing 'Point2D' type but you can guess how it looks. Includes and Include guards also removed.

/* ------------------------------ kdtree.h ------------------------------ */

typedef struct kdNode2D
{
	kdNode2D(pPoint2D pointList, int pointLength, int depth = 0);

	~kdNode2D()
	{
		for(int i=0; i<2; ++i)
			delete sons[i];
	}

	/* Leave depth alone for outside code! */
	unsigned nearest(const Point2D &point, int depth = 0);

	union {
		struct {
			kdNode2D* left;
			kdNode2D* right;
		};

		kdNode2D* sons[2];
	};

	Point2D p;

} kdNode2D;

/* ----------------------------- kdtree.cpp ----------------------------- */

static int cmpX(const void* a, const void* b)
{
	return (*(pPoint2D)a).x - (*(pPoint2D)b).x;
}

static int cmpY(const void* a, const void* b)
{
	return (*(pPoint2D)a).y - (*(pPoint2D)b).y;
}

kdNode2D::kdNode2D(pPoint2D pointList, int pointLength, int depth)
{
	if(pointLength == 1) {
		left	= NULL;
		right	= NULL;
		p		= *pointList;
		return;
	}

		// Odd depth = Y, even depth = X
	if(depth & 1)
		qsort(pointList, pointLength, sizeof(Point2D), cmpY);
	else
		qsort(pointList, pointLength, sizeof(Point2D), cmpX);

	const int halfLength = pointLength >> 1;
	p = pointList[halfLength];
	for(int i=0; i<2; ++i)
		sons[i] = new kdNode2D(pointList + (i*halfLength), halfLength, depth + 1);
}

unsigned kdNode2D::nearest(const Point2D &point, int depth)
{
	/* End of tree. */
	if(!left || !right)   // We assume if left != NULL, then right != NULL (see ctor)
	{
		Point2D r = p;
		for(int i=0; i<2; ++i)
			r[i] -= point[i];

		return r.dot(r);
	}

	const int tmp = p[depth] - point[depth];
	const int side = tmp < 0; /* Prefer the left. */

	/* Switch depth. */
	depth ^= 1;

	/* Search the near side of the tree. */
	int leftDist = sons[side]->nearest(point, depth);

	/* Radius intersects a kd tree boundary? */
	if(leftDist < (tmp * tmp))
	{
		/* No; this is the nearest point on this side. */
		return leftDist;
	}

	/* Yes; look at the points on the other side. */
	return min(leftDist, sons[side ^ 1]->nearest(point, depth));
}
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There appears to be a bug in kdNode2D constructor as provided by LiraNuna above: for(int i=0; i<2; ++i) sons[i] = new kdNode2D(pointList + (i*halfLength), halfLength, depth + 1); The above code will not work for pointList arrays or vectors of odd length. It will ignore the last element. –  user569542 Jan 10 '11 at 8:35

Recommend 2 approaches to consider :

1) classic ptr approach :

class KdTreeNode
{
   private :
    vector<T> data;
    KdTreeNode * Left;
    KdTreeNode * Right; 
};

2) std::map approach :

where a tree node consits of :

class KdTreeNode
{
  private :
    map<K, V> values;
    map<K, KdTreeNode> subnodes;
};

ad 1. I've been using it a couple years back in a graphics project my company needed, it's simple , and get's the job done.

ad 2. I've been using this lately, although not as a KdTree. Thanks to using maps it's very versatile.

I'm not saying my solutions are the best, I've tried both - on different ocasions - and they worked.

Hope that helps

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Just to make the list complete. There is a good implementation of a kdtree in c++ called libkdtree++. The library is templated, and you can use your own datastructures as nodes. I've used this library a few times, and liked it especially for its interface. Haven't done any benchmarking yet.

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ANN is a great library to deal with kNN search. And it solved my problem as well. It is open source and provides two ways, that is, kd-tree and bd-tree.

ANN: A Library for Approximate Nearest Neighbor Searching

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