/* This file is part of the Gudhi Library - https://gudhi.inria.fr/ - which is released under MIT. * See file LICENSE or go to https://gudhi.inria.fr/licensing/ for full license details. * Author(s): Clement Jamin * * Copyright (C) 2016 Inria * * Modification(s): * - YYYY/MM Author: Description of the modification */ #ifndef DOC_SUBSAMPLING_INTRO_SUBSAMPLING_H_ #define DOC_SUBSAMPLING_INTRO_SUBSAMPLING_H_ // needs namespace for Doxygen to link on classes namespace Gudhi { // needs namespace for Doxygen to link on classes namespace subsampling { /** \defgroup subsampling Subsampling * * \author Clément Jamin, Siargey Kachanovich * * @{ * * \section subsamplingintroduction Introduction * * This Gudhi component offers methods to subsample a set of points. * * \section sparsifyexamples Example: sparsify_point_set * * This example outputs a subset of the input points so that the * squared distance between any two points * is greater than or equal to 0.4. * * \include Subsampling/example_sparsify_point_set.cpp * * \section farthestpointexamples Example: choose_n_farthest_points * * This example outputs a subset of 100 points obtained by González algorithm, * starting with a random point. * * \include Subsampling/example_choose_n_farthest_points.cpp * * \section randompointexamples Example: pick_n_random_points * * This example outputs a subset of 100 points picked randomly. * * \include Subsampling/example_pick_n_random_points.cpp */ /** @} */ // end defgroup subsampling } // namespace subsampling } // namespace Gudhi #endif // DOC_SUBSAMPLING_INTRO_SUBSAMPLING_H_