A kd-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 nearest-neighbor searches and searches inside of hyperdimensional rectangular regions.

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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 ...
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Fast, stackless kd-tree traversal in raytracing, clarification needed

I am trying to implement a real time ray tracer, and I was reading this interesting paper on a fast, stackless kd-tree traversal method, but it is unclear regarding certain concepts. At page 4, where ...
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245 views

Efficient matching of two arrays (how to use KDTree)

I have two 2d arrays, obs1 and obs2. They represent two independent measurement series, and both have dim0 = 2, and slightly different dim1, say obs1.shape = (2, 250000), and obs2.shape = (2, 250050). ...
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289 views

Photo mosaic web application. KD-tree

Last month I have been working on a photomosaic website. I build everything in PHP and I got it working great. The only thing I don’t like is the execution time. This is too long I think because of a ...
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187 views

Checking if point set triangle subdivision is a triangulation

I've been studying Delaunay triangulation (not a homework) and I thought about the following problem : given a set of points S on plane (with cardinality of n) and a set of triangles T (should be with ...
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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 ...
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595 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* ...
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28 views

Python KD Tree Nearest Neigbour where distance is greater than zero

I am trying to implement a Nearest neighbour search for Lat and Lon data. Here is the Data.txt 61.3000183105 -21.2500038147 0 62.299987793 -23.750005722 1 66.3000488281 -28.7500038147 2 40.8000183105 ...
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82 views

OpenCV: In FLANN module KDTree constructor creates 4 trees of same size. why?

In FLANN module the KDTree constructor takes configuration params for creating trees. I see the default value is 4. Can someone please suggest why 4 or why more than one trees are required for nearest ...
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89 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 ...
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185 views

Is there any way to add points to KD tree implementation in Scipy

I have a set of points for which I want to construct KD Tree. After some time I want to add few more points to this KDTree periodically. Is there any way to do this in scipy implementation
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473 views

Any good range Query library(using K-D tree, quad tree or R-tree) in C++

I used this library before http://www.cs.umd.edu/~mount/ANN/. However, they don't provide range query implementations. I Guess is there a C++ range-query implementation (Both circle or rectangle), to ...
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56 views

Continuous modification of a set of points - find all nearest neighbors

I have a 3D set of points. These points will undergo a series of tiny perturbations (all points will be perturbed at once). Example: if I have 100 points in a box, each point may be moved up to, but ...
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111 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 ...
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742 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 ...
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587 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 ...
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689 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. ...
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55 views

Number of items in an (x,y) interval in (logn)(logn) time

Homework I need to use a data structure + algorithm that returns the number of elements within a range consisting of 2 (x,y) values (i.e. return the number of elements that fall within a rectangular ...
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125 views

Creating a KDTree that inserts and visualizes logically

So I was tasked with this homework assignment of constructing a KdTree that has nodes that are type Point2D. First starting on the insert method to make sure nodes were being placed accordingly by ...
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240 views

Impose voxel grid on 3D point cloud

I am working with structured 2.5D and unstructured 3D data, which generally is available in (X,Y,Z) coordinates, i.e. point clouds. Now I want to impose a regular voxel grid onto the data. This is not ...
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49 views

Finding the first element with a specific distance

I'm trying to write a method, which will return the index of a point which is closest to another point in 3D space. The points are stored in a KD-tree and I'm comparing them with the point p which is ...
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269 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 ...
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226 views

Finding number of lattice points inside a region

Given a set of points in 2-D plane, How to find number of points lying on or inside any arbitrary triangle. One method is to check all points whether they lie inside the given triangle. But I read ...
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115 views

scipy.spatial ValueError: “x must consist of vectors of length %d but has shape %s”

Scipy has an excelent spatial analysis pack which includes a K-dimensional tree. I am attempting to use the query function and it is returning this error: ValueError: x must consist of vectors of ...
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79 views

Get the smallest element of a kdtree

I want to get the minimum element of a kdtree two-dimensional (x, y). The minimum element is one that for every element (x ', y') of kdtree, x As can be repeated elements x, returns either.
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Kdtree insert function

void insert_KD_tree(noKD **tree, Queue *queue, int counter) { if ((*tree)!=NULL) { *tree = new_KD_node(queue->first->pointer,NULL,NULL); } else if ...
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327 views

Deleting nodes from a 2d binary search tree

I was wondering if someone could provide some helpful insight on deleting nodes from a 2d binary search tree. I understand there's four cases, the first of which I've completed: Deleting a node ...
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338 views

dual kd-tree construction

Please anyone tell me how to construct dual kd-tree and how to traverse it? And at least tell me the algorithm for finding nearest neighbor using this dual tree concept in java. This will help full ...
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How to do high dimensional range query with fixed range?

I have about 10^4 points in 7 dimensional space. For a certain application, I need to make ~10^6 range queries on this input to find all the points that lie inside a given range. In this application, ...
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Datetime as a dimension in python KDTree

Currently have a working example using scipy.spatial.KDTree to do a nearest neighbour look up for some x,y points. Question is, if I have datetime data for each x,y point can I put that into a KDTree ...
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181 views

Kdtree Lookup: PBRT Source Code

I am trying to implement a kdtree using the pbrt source code for finding the n closest points. I have a array of points distributed over the 3d space and I need to calculate the number of points that ...
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Opinions on kd tree for map nodes visualisation

I need you opinion on this. I have gps coordinates stored in a graph database and I need to visualize them on a map. If I try to place them all at once on the map the program will crash due to the ...
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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 ...
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Save Data from kd-tree in a pile on Pre-order with constant cost

I have a little problem to implement a method that given a kdtree, stored in a stack all items ordered on pre-order. I implemented this method iteratively, and I have this code: public void preorder ...
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332 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 ...
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KdTree (3d) C# implementation not working properly and very slow

I am implementing Kd Tree in 3D space where I get a point cloud and I need to store it in a kdTree structure. My problem is that it doesn't work as it should, it add the same numbers as in an infinite ...
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How to find optimum split panes in k-d tree without brute force

I'm using a k-d tree for spatial partitioning in a ray tracer. When determining where to divide a given rectangular region, I choose the dimension with the longest size of the region and then look for ...
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43 views

NetworkX : Accessing nodes on a weighted graph

I'm pretty new to Python. I'm using networkX to simulate atomic positions in a crystal. My old graph, G, was unweighted. I could access the neighbours quite simply by running the function: def ...
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kd-Tree Surface Area Heuristic (SAH), how does it work on an AABB?

I am trying to implement a kd-tree using SAH - assuming reader knows what that is :) - for tree construction. The tree seems to work fine, except when my scene is a single Axis Aligned Bounding Box. ...
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51 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 ...
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Draw function of KdTree not working. Can you help me figure out why?

public void draw() { draw(this.root, new RectHV (0.0, 0.0, 1.0, 1.0) , 0); } private static void draw (Node x, RectHV area, int level) { if (x == null) return; ...
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find indices in pointcloud using getApproximateIndices

There is a function in PointCloud Library (PCL), pcl::getApproximateIndices void pcl::getApproximateIndices (const typename pcl::PointCloud< PointT >::Ptr & cloud_in, const typename ...
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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 ...
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45 views

search in a kd-tree without imputing the missing values python

How to search a query with missing values in a multi-dimensional kd-tree. Suppose a 5-Dimensional kd-tree is created having 10k nodes with such values (eg. (1,42.35,6.78,72.41,28) ) . Now , I have a ...
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How to store sift features in k-d tree in python?

Does anyone know of a good python implementation for storing image sift features in a k-d tree for object recognition? What kind of processing is needed to do for the features and how can I store ...
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c++ k-d tree implementation crashes

I'm trying to implement a simple k-d tree, but I'm either doing something wrong in terms of memory management, or that I'm trying to access something that isn't there (e.i. the program compiles, but ...
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kd-tree BBF algorithm time complexity

I hava 2000 points with 5000 dimensions , and I want to get the nearest neighbour. Now I have some problems , could anybody give a answer. People say , it works good with high dimensions. What's ...
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254 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 ...
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123 views

Quadtree and kd-tree splitting and mandelbrot set?

I've read about a quadtree or kd-tree splitting and a mandelbrot set but what when the rectangle before the first split and the frame lies in the mandelbrot set or has the same iteration depth and the ...
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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 ...