This library contains the implementations of the Quick Hull algorithm, which is able to efficiently computes the convex hull of point clouds. If you are interested in the theoretical aspects behind the algorithm have a look at the documentation.
It is also possible to rely on a multi threaded version of the Quick Hull algorithm, see the MULTI THREADING section.
This library is stand-alone and completely cross platform. Use CMake to configure the project.
The relevant code is contained in src, while samples contains examples showing how to use this library. When running each sample, a .json file will be produced storing the results about the computed convex hull. This python script can be used to visualize such results. Notice that the sample itself will print in the console the command to run together with the right arguments, in order to visualize the results with such script.
Attention!!!! In order for the visualizing script to run, you may need to install eventually missing python packages.
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Using this library is pretty easy. The Quick Hull algorithm implementation is included into 1 single file, which can be included in this way:
#include <QuickHull/FastQuickHull.h>
The points in the cloud can be described by any kind of 3d representation (Eigen Vector3d, or any other representation of your favourite linear algebra library), like for example a struct like this:
// A 3d coordinate representation
struct MyVector {
float coordinate_x;
float coordinate_y;
float coordinate_z;
};
The trick is just to define a conversion function that map your 3d representation to the one uised by this library:
hull::Coordinate convert_function(const MyVector &vector) {
return hull::Coordinate{vector.coordinate_x, vector.coordinate_y,
vector.coordinate_z};
};
Now you are free to compute the convex hull of a cloud of points:
// A collection of 3d coordinates
std::vector<MyVector> points;
// compute the incidences (index of the vertices in the passed points cloud,
// which delimits each facet), of the facets constituting the convex hull of
// the points
std::vector<qh::FacetIncidences>
incidences = // qh::FacetIncidences is an array of incidences:
// std::array<std::size_t, 3>
qh::convex_hull(points.begin(), points.end(), convert_function);
It is also possible to get at the same time both the convex hull facets as well as their outward normals:
// compute at the same time the convex hull facets incidences and normals
std::vector<hull::Coordinate> normals;
incidences =
qh::convex_hull(points.begin(), points.end(), convert_function, normals);
You can exploit an internal thread pool strategy to compute the convex hull of clouds made of thousands of points.
This can be easily done by specifying a context structure that is passed to the function computing the convex hull.
In case you want to exploit all the available threads of your machine you can do this:
// specify in the context that we want to exploit ALL the available cores of
// this machine
qh::ConvexHullContext context;
context.thread_pool_size = 0;
std::vector<hull::Coordinate> normals;
incidences = qh::convex_hull(points.begin(), points.end(), convert_function,
normals, context);
Or you can specify the number of threads to use in this way:
// specify in the context the thread pool size
qh::ConvexHullContext context;
context.thread_pool_size = 3; // 3 threads will be used
std::vector<hull::Coordinate> normals;
incidences = qh::convex_hull(points.begin(), points.end(), convert_function,
normals, context);
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To consume this library you can rely on CMake. More precisely, You can fetch this package and link to the Fast-Quick-Hull library, which will expose the convex hulll algorithm:
include(FetchContent)
FetchContent_Declare(
qhull_lib
GIT_REPOSITORY https://github.com/andreacasalino/Fast-Quick-hull.git
GIT_TAG main
)
FetchContent_MakeAvailable(qhull_lib)
and then link to the Fast-Quick-Hull library:
target_link_libraries(${TARGET_NAME}
Fast-Quick-Hull
)