# Tagged Questions

**0**

votes

**1**answer

35 views

### kd-tree stores points in inner nodes? If yes, how to search for NN?

The link in wikipedia about kd-trees store points in the inner nodes. I have to perform NN queries and I think (newbie here), I am understanding the concept.
However, I was said to study Kd-trees ...

**1**

vote

**1**answer

86 views

### KdTree nearest neighbour search algorithm not working properly

I'm implementing a KdTree in java. I have most of the rest of the program done, but I can't seem to get my nearest neighbour search algorithm to work properly. It always returns the root node's ...

**2**

votes

**3**answers

61 views

### Nearest neighbor search for points with directional vectors caveat

I have a set of 3D points, each of which is associated with a direction (e.g. a unit vector). Given another point + direction I would like to figure out the closest point in the set (using standard ...

**0**

votes

**0**answers

52 views

### KDTree and polygon

I have a lot of entities some of them constant and some of them mobile entities.And some of them are polygon and some of them line and others point.
I try to find an instance's nearest neighbors or i ...

**-2**

votes

**1**answer

160 views

### Performance of RTree vs kd-trees

I have around 10 K points in 5 dimensional space. We can assume that the points are randomly distributed in space (0,0,0,0,0) and (100,100,100,100,100). Clearly, the whole data set can easily reside ...

**3**

votes

**1**answer

67 views

### Could kd-tree build with dot-product?

A normal kd-tree is constructed by recursively split the super plane into half. And to do range search with a query point, it will only search a small bunch of points(log) in stead of all(linear).
I ...

**3**

votes

**1**answer

225 views

### How to implement a fast, lazy KDTree in Haskell?

I am trying to implement a kdtree in Haskell (see implementation) but I tried to be smart and utilize Haskells lazyness while implementing the nearest neighbour algorithm (see line 46).
While it is ...

**1**

vote

**0**answers

148 views

### Kdtree nearest neighbor with minimum distance

I'm using ANN kdtree library to find nearest neighbors. I want to find the nearest neighbors with a minimum distance. I have included the regular code (from ANN library) below. It is obvious I can ...

**1**

vote

**1**answer

45 views

### Det neighbours within radius of each point , radius changes per point relating to c value. Sk-learn to slow anything faster?

I am working on a point cloud simplification algorithm that preserves features.
In the one aspect I am searching through each xyzc point, at each point i search the nearest neighbours within a ...

**3**

votes

**1**answer

90 views

### data structure for movable points in 3d

I have many points (+100,000) in 3 dimensional space. I need to use nearest neighbor and range queries. Firstly I used kdtree (k=3) but each point has a velocity attribute. Their location is not ...

**3**

votes

**1**answer

119 views

### nearest k neighbours that satisfy conditions (python)

I have a slight variant on the "find k nearest neighbours" algorithm which involves rejecting those that don't satisfy a certain condition and I can't think of how to do it efficiently.
What I'm ...

**1**

vote

**1**answer

811 views

### Why OpenCV KdTree always returns same nearest neighbour in c++?

I have two sets of 2 dimensional points, set A & B. In set A, I have 100 points and set B contains 5000 points. For each point in set A, I want to find a nearest neighbor or the point closest to ...

**0**

votes

**0**answers

251 views

### Search for all nearest neighbors within a certain radius of a point in 3D?

I have about 80 million spatial points(3D) and I want to find all the nearest neighbors of a query point which lie under a sphere of a certain radius(can be given as input) with the query point as ...

**0**

votes

**2**answers

187 views

### KD Tree alternative/variant for weighted data

I'm using a static KD-Tree for nearest neighbor search in 3D space. However, the client's specifications have now changed so that I'll need a weighted nearest neighbor search instead. For example, ...

**0**

votes

**1**answer

264 views

### How to use k-d tree to find nearest neighbor?

I have applied SIFT on one image and got descriptors, then I have used Euclidean distance to find similar descriptors, now I want to use k-d tree to find which descriptors are more similar and ...

**1**

vote

**2**answers

301 views

### Nearest vertex search

I'm looking for effective algorithm to find a vertex nearest to point P(x, y, z). The set of vertices is fixed, each request comes with new point P. I tried kd-tree and others known methods and I've ...

**1**

vote

**1**answer

856 views

### Using Google's C KD Tree Library

Google has a KD Tree Library written in C: Here
As far as I can tell, you insert notes into the tree using one of it's functions, and then query the tree for nearest neighbors. It returns a pointer ...

**4**

votes

**1**answer

454 views

### Is k-d tree suited for keeping triangles or i need some changes in classic k-d tree building algo?

I've read k-d tree description in wiki, wiki says that k-d tree keep points. I have mesh of triangles and need some structure for effective calculation intersections with cylinder and distance to ...

**3**

votes

**3**answers

2k views

### K-d trees: nearest neighbor search algorithm

This is my understanding of it:
1. Recurse down the tree, taking the left or right subtree according as whether ELEMENT would lie in the left or the right subtree, if it existed.
2. Set CURRENT_BEST ...

**2**

votes

**2**answers

2k views

### Optimizing Python KD Tree Searches

Scipy (http://www.scipy.org/) offers two KD Tree classes; the KDTree and the cKDTree.
The cKDTree is much faster, but is less customizable and query-able than the KDTree (as far as I can tell from ...

**5**

votes

**1**answer

2k views

### Nearest Neighbor Search: Python

I have a 2 dimensional array:
MyArray = array([6588252.24, 1933573.3, 212.79, 0, 0],
[6588253.79, 1933602.89, 212.66, 0, 0],
etc...)
The first two elements ...

**1**

vote

**1**answer

301 views

### How could I make this KD-tree?

I have a very long, semi-sorted list of latitude, longitude, and time zone triplets. I want to be able to search this list quickly to find the closest time zone to any given latitude and longitude, so ...

**2**

votes

**2**answers

786 views

### Simple k-nearest-neighbor algorithm for euclidean data with variable density?

An elaboration on this question, but with more constraints.
The idea is the same, to find a simple, fast algorithm for k-nearest-neighbors in 2 euclidean dimensions. The bucketing grid seems to work ...

**1**

vote

**2**answers

3k views

### KD Tree - Nearest Neighbor Algorithm

I'm not quite understanding the O(log n) nearest neighbor algorithm from wikipedia.
…
…
The algorithm unwinds the recursion of the tree, performing the following steps at each node:
...

**4**

votes

**4**answers

323 views

### kNN with dynamic insertions in high-dim space

I am looking for a method to do fast nearest neighbour (hopefully O(log n)) for high dimensional points (typically ~11-13 dimensional). I would like it to behave optimally during insertions after ...

**0**

votes

**0**answers

142 views

### Adapting Nearest Neighbor search function to provide K-nearest neighbors through kD-tree in Groovy?

I have successfully written a function that traverses a Kd-Tree for the nearest single neighbor of a point.
However, I'm trying to switch this function around so that it finds the K-nearest neighbors ...

**2**

votes

**1**answer

138 views

### Query the nearest range

I have two sets, A and B. The sets are made of N dimension points and ordered (N<10). I need find the nearest part of B to A. Let's say the nearest part is B1. The count of points in B1 should be ...

**3**

votes

**1**answer

850 views

### Implementing a k-d tree for 'nearest neighbor' search in MYSQL?

I am designing an automated trading software for the foreign exchange market.
In a MYSQL database I have years of market data at five-minute intervals. I have 4 different metrics for this data ...

**3**

votes

**3**answers

2k views

### How does it work comparing/matching images with kd-trees and nearest neighbor search?

I have been querying google for some material about kd-trees and image comparison but I couldn't make the 'link' between the technics for image comparison using kd-trees.
Firstly, I found some ...

**2**

votes

**1**answer

587 views

### from recursion on tree to iterative on array (kd-tree Nearest Neighbor)

I've got a recursive function (on tree) and I need to make it work without recursion and representing the tree as an implicit data structure (array).
Here is the function:
kdnode* kdSearchNN(kdnode* ...

**2**

votes

**1**answer

685 views

### Searching in KD-tree slow

I'm implementing a KD-tree to cluster points a map into groups. I've been using Wikipedia's KD-tree article as a reference. The search returns the correct nearest neighbor point, but it is slower than ...

**2**

votes

**2**answers

392 views

### Finding nearest point's in space time to interpolate data

I have a set of data in the following format:
Date/time | Latitude | Longitude |
Height | Temp
These data can be entered by the user based on atmospheric temperature measurements at different ...

**13**

votes

**2**answers

8k views

### How does the KD-tree nearest neighbor search work?

I am looking at the Wikipedia page for KD trees. As an example, I implemented, in python, the algorithm for building a kd tree listed.
The algorithm for doing KNN search with a KD tree, however, ...

**1**

vote

**2**answers

385 views

### Are KD trees still efficient when most/all of the attributes are discrete and distance is equivalent?

It's always touted that KD trees are great for nearest neighbor searches. However, if your data set is all discrete values, with no real distance metric, are they still efficient?
For example, if ...

**1**

vote

**3**answers

3k views

### KD tree, slow tree construction

I am trying to build KD Tree (static case). We assume points are sorted on both x and y coordinates.
For even depth of recursion the set is split into two subsets with a vertical line going through ...

**2**

votes

**1**answer

1k views

### Alternative to distance metric in nearest neighbor algorithm?

I came across an implementation of the nearest neighbor algorithm for finding matches between certain keypoints in two similar images. The keypoints were generated by the SIFT algorithm. The points ...

**7**

votes

**4**answers

5k views

### Efficient method for finding KNN of all nodes in a KD-Tree

I'm currently attempting to find K Nearest Neighbor of all nodes of a balanced KD-Tree (with K=2).
My implementation is a variation of the code from the Wikipedia article and it's decently fast to ...

**5**

votes

**2**answers

2k views

### Is k-d tree efficient for kNN search. k nearest neighbors search

I have to implement k nearest neighbors search for 10 dimensional data in kd-tree.
But problem is that my algorithm is very fast for k=1, but as much as 2000x slower for k>1 (k=2,5,10,20,100)
Is ...

**8**

votes

**1**answer

5k views

### nearest neighbor - k-d tree - wikipedia proof

On the wikipedia entry for k-d trees, an algorithm is presented for doing a nearest neighbor search on a k-d tree. What I don't understand is the explanation of step 3.2. How do you know there isn't ...