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What are the easy algorithms to implement Voronoi diagram?

I couldn't find any algorithm specially in pseudo form. Please share some links of Voronoi diagram algorithm, tutorial etc.

Thanks in advance.

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11 Answers 11

An easy algorithm to compute the Delaunay triangulation of a point set is flipping edges. Since a Delaunay triangulation is the dual graph of a Voronoi diagram, you can construct the diagram from the triangulation in linear time.

Unfortunately, the worst case running time of the flipping approach is O(n^2). Better algorithms such as Fortune's line sweep exist, which take O(n log n) time. This is somewhat tricky to implement though. If you're lazy (as I am), I would suggest looking for an existing implementation of a Delaunay triangulation, use it, and then compute the dual graph.

In general, a good book on the topic is Computational Geometry by de Berg et al.

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The Wikipedia page (http://en.wikipedia.org/wiki/Voronoi_diagram) has an Algorithms section with links to algorithms for implementing Voronoi diagrams.

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There is a freely availble voronoi implementation for 2-d graphs in C and in C++ from Stephan Fortune / Shane O'Sullivan:



You'll find it at many places. I.e. at http://www.skynet.ie/~sos/masters/

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Widely referenced, undocumented, and nearly every re-implementation I've seen based on this code is wrong (in different languages, many people need Voronoi, few can understand it well enough to port correctly). The only working ports I've seen are from the science/academia community and have massively over-complicated function signatures - or massively optimized (so that they can't be used for most purposes) making them unusable by normal programmers. –  Adam Nov 7 '13 at 21:05

Easiest? That's the brute-force approach: For each pixel in your output, iterate through all points, compute distance, use the closest. Slow as can be, but very simple. If performance isn't important, it does the job. I've been working on an interesting refinement myself, but still searching to see if anyone else has had the same (rather obvious) idea.

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Here is a javascript implementation that uses quat-tree and allows incremental construction.


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The most effecient algorithm to construct a voronoi diagram is Fortune's algorithm. It runs in O(n log n).

Here is a link to his reference implementation in C.

Personally I really like the python implementation by Bill Simons and Carson Farmer, since I found it easier to extend.

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Thanks for the Python link. Any idea if this is easily modified to output polygons instead of just edges? –  Bram May 13 '14 at 23:14
I did it. Unfortunately I cannot open-source it. It took about 3h to 4h and is not too difficult. –  Marco Pashkov May 14 '14 at 6:14
The python link helped me out a lot, and it also does delauney triangulation. –  Karim Bahgat Oct 1 '14 at 14:54

while the original question asks about how to implement Voronoi, if i'd found a post that said the following when i was searching for info on this subject it would have saved me a lot of time:

there are a lot of "nearly correct" C++ code on the internet for implementing Voronoi diagrams but most have rarely triggered failures when the seed points get very dense. test any code you find online extensively with the number of points you expect to use in your finished project before you waste too much time on it.

the best of the implementations i found online was part of the MapManager program linked from here: http://www.skynet.ie/~sos/mapviewer/voronoi.php it mostly works but i am getting intermittent diagram corruption when dealing with order 10^6 points. i have not been able to work out exactly how the corruption is creeping in.

but then last night i found this: http://www.boost.org/doc/libs/1_53_0_beta1/libs/polygon/doc/voronoi_main.htm "The Boost.Polygon Voronoi library". it looks very promising. it comes with benchmark tests to prove it's accuracy and performance. it also has a proper interface and documentation. i'm surprised i didn't find this library before now, hence me writing about it here. (i read this post early in my research.)

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The Bowyer-Watson algorithm is quite easy to understand. Here is an implementation: http://paulbourke.net/papers/triangulate/. It's a delaunay triangulation for a set of points but you can use it to get the dual of the delaunay,I.e. a voronoi-diagram.

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Sorry for the "me too" but I strongly agree with this recommendation. The theoretical simplicity gives way to simplicity of implementation, within reason. –  Mayur Patel Jan 13 '14 at 15:43
@Mayur Patel:You can show some love and give some points? –  Phpdna Jan 13 '14 at 17:23

Check brute-force solution presented with pseudo-code by Richard Franks in his answer on the question How do I derive a Voronoi diagram given its point set and its Delaunay triangulation?

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there is several VoronoiDiagramGenerator.cpp/h around

requiring all some serious clean up on memory if you plan a realtime heavy app

like all fortune sweepline have trouble with very close points at least

-move from float to double

-remove "identical" point at start

-then try to deal with precision issue in rare case

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This is the fastest possible, it's simpel voronoi but it looks great. it devides spaces into a grid, places a dot in each grid cell randomly placed, and moves along the grid checking 3x3 cells to find how the dot in centre cell relates to side cells.

even faster is voronoi with no gradient, just color cells different colors.

you may ask what the easiest 3d voronoi would be, that would be fascinating. probably 3x3x3 cells and checking gradient.


float voronoi( in vec2 x )
    ivec2 p = floor( x );
    vec2  f = fract( x );

    float res = 8.0;
    for( int j=-1; j<=1; j++ )
    for( int i=-1; i<=1; i++ )
        ivec2 b = ivec2( i, j );
        vec2  r = vec2( b ) - f + random2f( p + b );
        float d = dot( r, r );

        res = min( res, d );
    return sqrt( res );

and here is the same with chebychev distance. you can use a random2f 2d float noise from here:


edit: i have converted this to C like code, but if it's karma'd as a bad reply i might as well not post it! silly me giving this answer. UGH what was i thinking?

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