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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, CRABOLO, robert, alphadogg Jan 31 '14 at 1:17

This question appears to be off-topic. The users who voted to close gave this specific reason:

  • "Questions asking us to recommend or find a tool, library or favorite off-site resource are off-topic for Stack Overflow as they tend to attract opinionated answers and spam. Instead, describe the problem and what has been done so far to solve it." – Dennis Meng, Code Maverick, CRABOLO, robert, alphadogg
If this question can be reworded to fit the rules in the help center, please edit the question.

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
Why hasn't anyone mentioned ? – AlwaysLearning Jan 3 at 20:00
up vote 12 down vote accepted

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

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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This project seems a bit out of date, there is e.g. an unfixed bug from 2009.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);

		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;

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


	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

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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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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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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