A k-d-tree (k-dimensional tree) is a data structure for storing points in multidimensional space. They can be used to efficiently query for whether a point exists, as well as to do Euclidean nearest-neighbor searches and searches inside of hyperdimensional rectangular regions.

learn more… | top users | synonyms

2
votes
2answers
1k 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 ...
3
votes
2answers
2k views

Explain this algorithm (Compare points in SURF algorithm)

I need to know if this algorithm is a known one: void getMatches(IpVec &ipts1, IpVec &ipts2, IpPairVec &matches, float ratio) { float dist, d1, d2; Ipoint *match; ...
1
vote
0answers
586 views

Building Distributed KD tree using map-reduce

I am trying to build a Distributed KD tree using map-reduce. Description of Distributed KD tree can be found out here Dkd-Tree I have a feature vector of images having dimension 20. I have to build ...
0
votes
1answer
1k views

Building a k-d tree using MapReduce?

I am trying to build the KD tree(independent) for image features. I have extracted the image features,the feature contains suppose 1000 float values. Using map-reduce to distribute the images among ...
2
votes
1answer
743 views

SIFT feature matching performance while matching multiple images

I have a image library, with has ~5000 images with ~150 features. Now I have another image with ~300 features, and I want to find 5 most similar images in my library. The brute force need about 300 * ...
0
votes
1answer
98 views

How to implement with OO a set of keys in C++ for a kdtree

I need to implement a B+ tree which is adapted to be a k-d tree. As a short explanation of this, a k-d tree is like a binary tree except that at its nodes it has a multi-valued key, that is a key with ...
3
votes
1answer
352 views

Implementing a k-d tree in Rails - Need help to get started

I need to query my DB based on a range of two values which are essentially two columns of type float in my database. After doing some research, I narrowed down my options to implementing this with an ...
4
votes
5answers
2k views

When to use Kd-Trees? [closed]

I was reading about Kd-Trees the other day and I was looking for a concrete/simple situation where such a data structure could be useful. Does anybody have such an example? Thanks,
6
votes
4answers
641 views

Nearest neighbor zones visualized

I'm writing an app that looks up points in two-dimensional space using a k-d tree. It would be nice, during development, to be able to "see" the nearest-neighbor zones surrounding each point. In the ...
3
votes
4answers
693 views

Nearest neighbour search in a constantly changing set of line segments

I have a set of line segments. I want to perform the following operations on them: Insert a new line segment. Find all line segments within radius R of a given point. Find all points within radium ...
6
votes
4answers
3k views

How to find the closest pairs (Hamming Distance) of a string of binary bins in Ruby without O^2 issues?

I've got a MongoDB with about 1 million documents in it. These documents all have a string that represents a 256 bit bin of 1s and 0s, like: 0110101010101010110101010101 Ideally, I'd like to query ...
1
vote
1answer
113 views

Is there any existing database (preferred embedded ones) supporting large diminutional multi-dimentional search?

I would like to build a C++ application on top of an database that can support multi-dimensional search (e.g. KDTree or RTree). SQLite with R-tree enabled only supports up to 5 dimensions, which is ...
0
votes
2answers
1k views

How do range queries work in Python's kd-tree?

What is a range query over a kdtree and how is it done by python?
1
vote
3answers
856 views

What is the best datastructure for line segments searching?

I need a datastructure to find all segments falling in a rectangle (in C#, even if it is not the main problem). For exemple, the segment [(0,0) , (10,10)] must be in the rectangle begining at (5,5) ...
0
votes
0answers
185 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 ...
1
vote
1answer
381 views

Need help figuring out C++ code segment in kd-tree implementation

I am having trouble figuring out what the code segment below is doing. It is taken from the book Realistic Image Synthesis Using Photon Mapping by Henrik Wann Jensen. I think what it's trying to do ...
1
vote
1answer
977 views

Python: Best particles self-collision / triangle collision algorithm

I'm starting to work on this particle engine for Blender in Python: http://www.youtube.com/watch?v=uoK4QV3jg58&feature=channel_video_title All data is processed by my script, Blender is just ...
1
vote
1answer
192 views

Templated Class Declaration for KDTree

The following class returns the following error from g++: tree.h:9: error: expected unqualified-id before 'template' If line 5 is uncommented, the same error occurs, only at line 5. Am I ...
4
votes
2answers
814 views

Which spatial data structure (algorithm) is best for (searching in) a set of regions (spacial data)?

I have a set of regions (geo-fences) which are polygons. This set of data is fixed; so there is no need for insertion and deletion of data. Which data structure can be used for searching for regions ...
2
votes
1answer
147 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 ...
1
vote
1answer
1k views

KdTree Node Removal

I've been trying to implement a KdTree from scratch. Having successfully implemented add-, find nearest neighbour- and find nodes in range methods I am now stuck on removal of nodes. The method ...
1
vote
1answer
650 views

Ray Tracing using k-d trees for stanford bunny model

I am trying to ray trace the Stanford bunny model which is PLY format. I have a parser which parses the PLY file and gives me the value of co-ordinates of triangles and also their vertices. Now I am ...
7
votes
2answers
380 views

Parameterizing types by integers in Haskell

I am trying to make some Haskell types which are parametrized not by types but by elements of a type, specifically, integers. For instance, a (linear-algebra) vector in R^2 and a vector in R^3 are ...
3
votes
1answer
1k 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 ...
1
vote
2answers
404 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
1answer
903 views

Kd-Tree Question

I am trying to implementation and understand KdTree, Following is the link I found. http://ldots.org/kdtree/#buildingAkDTree But I fail to understand following algorithm tuple function ...
2
votes
2answers
494 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 ...
3
votes
2answers
902 views

KD-Tree Implementation in SQL

Is anyone aware of a KD-Tree, or similar spatial index, implemented in SQL? I was considering writing my own using Python and Django's ORM, but I'd like to avoid reinventing the wheel. I have a table ...
1
vote
1answer
1k views

KD-tree in a MongoDB DB collection

I am trying to solve the k nearest neighbor problem on a set of objects in 3-space. These objects live in a MongoDB collection with all the joy and sorrow that comes with document based storage. ...
3
votes
1answer
806 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* ...
14
votes
2answers
11k 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, ...
2
votes
1answer
783 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 ...
0
votes
3answers
706 views

Is it possible to find the KNN for a node that is *IN* the KD-tree?

Trying to create a KNN search using a KD-tree. I can form the KD-tree fine (or at least, I believe I can!). My problem is that I am searching to find the closest 2 neighbours to every point in a list ...
0
votes
1answer
435 views

Constructing a KD-Tree from a cube-based world

This question should be pretty easy to answer and I have a feeling there's probably a lot of documentation on the subject but I couldn't find anything in my searches so I presume I'm searching for the ...
1
vote
1answer
4k views

Implement a 2-dimensional kd-tree construction algorithm in C++

I'm working on a personal project to implement a 2-dimensional kd-tree construction algorithm in C++. I know there are libraries that already do this, but I want to gain experience in C++ programming ...
0
votes
1answer
426 views

Distributed KD-tree

My friend and I are working on a project for distributed KD-tree with applications to location-aware services in mind. Can anyone point us to papers related to this? Thanks
0
votes
1answer
2k views

C++: looking for thread based a parallel kd tree library [closed]

Are there some implementation for KD-Tree on shared memory machines? thanks Arman.
7
votes
2answers
3k 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 ...
4
votes
1answer
4k views

KD-Tree in GLSL

after one day of trying to figure out how to implement a kd-tree in OpenGL/GLSL i am pretty frustrated ... I declare my KD-Nodes like this in GLSL: layout(std140) uniform node{ ivec4 splitPoint; ...
2
votes
1answer
864 views

How to use KDTree to make top-k query and range query on arbitrary dimensions

I have used KD-tree(libkdtree++) to store a multi-dimensional data set, and the requirements here is this data set can support top-k/range queries on different dimensions. For example, a KDTree<3, ...
2
votes
1answer
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 ...
2
votes
4answers
279 views

Which datastructure is appropriate for this situation?

I'm trying to decide which datastructure to use to store key-value pairs when only features needed are insertion lookup Specifically, I don't need to be able to delete pairs, or iterate through ...