0
votes
1answer
27 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
1answer
40 views

How to calculate the average time complexity of the nearest neighbor search using kd-tree?

We know the complexity of the nearest neighbor search of kd-tree is O(logn). But how to calculate it? The main problem is the average time complexity of the back tracing. I have tried to read the ...
0
votes
0answers
43 views

Finding nearest neighbour given fields in a few dimensions

I've a 5 dimension point set, and I want to find the point nearest to an incomplete query point. An example query point is (X, X, 34, 45, 66). I was wondering if there is any algorithm, which uses ...
1
vote
1answer
61 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
2answers
148 views

K nearest neighbour search with weights on dimensions

I have a floor on which various sensors are placed at different location on the floor. For every transmitting device, sensors may detect its readings. It is possible to have 6-7 sensors on a floor, ...
-2
votes
1answer
110 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
1answer
60 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 ...
2
votes
2answers
67 views

How to choose the cutting dimension properly in building a kd-tree?

recently I am digging into the kd-tree, and have found some interesting thing on choosing the cutting dimension. Through some tech blogs, there are two approaches: If the point dimension is denoted ...
0
votes
1answer
72 views

Removing element from balanced KD-Tree of two dimensions

I want to remove a element from balanced KD-Tree and Tree remain balance without rebuilding the whole tree. is this possible to balance tree without rebuilding the whole tree ? if yes then how?
1
vote
3answers
705 views

Storing Rectangles/Circles/Triangles in a KD-Tree

I was looking at Kd-tree and found some implementations of this algorithm. All of these were storing points (2d in major of cases). What I am trying to achieve is to store different shapes in it like ...
0
votes
0answers
231 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 ...
3
votes
3answers
148 views

Balancing KD-Tree: Which approach is more efficient?

I'm trying to balance a set of (Million +) 3D points using a KD-tree and I have two ways of doing it. Way 1: Use an O(n) algorithm to find the arraysize/2-th largest element along a given axis and ...
0
votes
2answers
237 views

Finding points in space closer than a certain value

In an python application I'm developing I have an array of 3D points (of size between 2 and 100000) and I have to find the points that are within a certain distance from each other (say between two ...
1
vote
2answers
265 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
1answer
274 views

scipy kdtree with meta data

I'm currently looking for a way to build a couple of kd trees for quickly querying some n-dimensional data. However, I'm having some issue with the scipy KD tree algorithm My data consists of id ...
1
vote
2answers
425 views

KD-Tree “median of list” construction

I've coded up a KD-Tree in Java using the "median of list" algorithm for constructing a more balanced tree. It seems to work fine when using the data provided by the wiki, note that the wikipedia ...
3
votes
3answers
1k 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 ...
1
vote
1answer
137 views

Suitable data structure

I have a Image (appx 1000 x 1000) and a set of small images each 10 x 10. I created a (3 dimensions tree) for storing the HSL values of each tile.I get an array-list of tile RGB values that is ...
3
votes
3answers
194 views

determine efficiently which rectangle a point is in 2d space

I have a large set of rectangles that are drawn on html5 canvas. I would like to be able to interact with this image using mouse tracking (I cannot use SVG because it does not scale to 10-100k ...
6
votes
2answers
604 views

What spatial indexing algorithm should I use?

I want to implement some king of spatial indexing data structure for my MKAnnotations. Currently it's horribly slow when I try to filter them based on distance criteria ( 3-4k of locations, currently ...
2
votes
2answers
730 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
2answers
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: ...
3
votes
3answers
1k views

KD TREES (3-D) Nearest Neighbour Search

I am looking at the Wikipedia page for KD trees Nearest Neighbor Search. The pseudo code given in Wikipedia works when the points are in 2-D(x,y) . I want to know,what changes should i make,when the ...
3
votes
5answers
750 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
375 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
511 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 ...
1
vote
3answers
440 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) ...
2
votes
1answer
135 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
493 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 ...
2
votes
2answers
2k views

Kd Tree Iterative implementation ( C++ )

Hello Does anybody has iterative implementation of Kd-Tree in C++. I tried but it is failing when the number of nodes are odd. Here is my code so far. I am referring ...
1
vote
1answer
566 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 ...
5
votes
1answer
550 views

How do I use kd-trees for determining string similarity?

I am trying to utilize k-nearest neighbors for the string similarity problem i.e. given a string and a knowledge base, I want to output k strings that are similar to my given string. Are there any ...
1
vote
1answer
616 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. ...
11
votes
2answers
4k views

KDTree Splitting

I am currently writing a KDTree for a physics engine (Hobby project). The KDTree does not contain points. Instead it contains Axis Aligned bounding boxes which bound the different objects in the ...
2
votes
2answers
380 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 ...
0
votes
1answer
347 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
7
votes
4answers
4k 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 ...
2
votes
2answers
1k views

Deleting an element from a kd-tree of two dimensions

I would like to extend a kd-tree (2D) class to be able to remove nodes (points). This removal should be conducted without having to rebuild large sections of the tree. The algorithm described in these ...