/* * Software License Agreement (BSD License) * * Point Cloud Library (PCL) - www.pointclouds.org * Copyright (c) 2010-2011, Willow Garage, Inc. * Copyright (c) 2012-, Open Perception, Inc. * * All rights reserved. * * Redistribution and use in source and binary forms, with or without * modification, are permitted provided that the following conditions * are met: * * * Redistributions of source code must retain the above copyright * notice, this list of conditions and the following disclaimer. * * Redistributions in binary form must reproduce the above * copyright notice, this list of conditions and the following * disclaimer in the documentation and/or other materials provided * with the distribution. * * Neither the name of the copyright holder(s) nor the names of its * contributors may be used to endorse or promote products derived * from this software without specific prior written permission. * * THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS * "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT * LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS * FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE * COPYRIGHT OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, * INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, * BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; * LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER * CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT * LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN * ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE * POSSIBILITY OF SUCH DAMAGE. * * $Id$ */ #pragma once #include #include namespace pcl { // Forward declarations template class PointRepresentation; namespace search { /** \brief @b search::KdTree is a wrapper class which inherits the pcl::KdTree class for performing search * functions using KdTree structure. KdTree is a generic type of 3D spatial locator using kD-tree structures. * The class is making use of the FLANN (Fast Library for Approximate Nearest Neighbor) project * by Marius Muja and David Lowe. * * \author Radu B. Rusu * \ingroup search */ template > class KdTree: public Search { public: using PointCloud = typename Search::PointCloud; using PointCloudConstPtr = typename Search::PointCloudConstPtr; using pcl::search::Search::indices_; using pcl::search::Search::input_; using pcl::search::Search::getIndices; using pcl::search::Search::getInputCloud; using pcl::search::Search::nearestKSearch; using pcl::search::Search::radiusSearch; using pcl::search::Search::sorted_results_; using Ptr = shared_ptr >; using ConstPtr = shared_ptr >; using KdTreePtr = typename Tree::Ptr; using KdTreeConstPtr = typename Tree::ConstPtr; using PointRepresentationConstPtr = typename PointRepresentation::ConstPtr; /** \brief Constructor for KdTree. * * \param[in] sorted set to true if the nearest neighbor search results * need to be sorted in ascending order based on their distance to the * query point * */ KdTree (bool sorted = true); /** \brief Destructor for KdTree. */ ~KdTree () { } /** \brief Provide a pointer to the point representation to use to convert points into k-D vectors. * \param[in] point_representation the const boost shared pointer to a PointRepresentation */ void setPointRepresentation (const PointRepresentationConstPtr &point_representation); /** \brief Get a pointer to the point representation used when converting points into k-D vectors. */ inline PointRepresentationConstPtr getPointRepresentation () const { return (tree_->getPointRepresentation ()); } /** \brief Sets whether the results have to be sorted or not. * \param[in] sorted_results set to true if the radius search results should be sorted */ void setSortedResults (bool sorted_results) override; /** \brief Set the search epsilon precision (error bound) for nearest neighbors searches. * \param[in] eps precision (error bound) for nearest neighbors searches */ void setEpsilon (float eps); /** \brief Get the search epsilon precision (error bound) for nearest neighbors searches. */ inline float getEpsilon () const { return (tree_->getEpsilon ()); } /** \brief Provide a pointer to the input dataset. * \param[in] cloud the const boost shared pointer to a PointCloud message * \param[in] indices the point indices subset that is to be used from \a cloud */ void setInputCloud (const PointCloudConstPtr& cloud, const IndicesConstPtr& indices = IndicesConstPtr ()) override; /** \brief Search for the k-nearest neighbors for the given query point. * \param[in] point the given query point * \param[in] k the number of neighbors to search for * \param[out] k_indices the resultant indices of the neighboring points (must be resized to \a k a priori!) * \param[out] k_sqr_distances the resultant squared distances to the neighboring points (must be resized to \a k * a priori!) * \return number of neighbors found */ int nearestKSearch (const PointT &point, int k, Indices &k_indices, std::vector &k_sqr_distances) const override; /** \brief Search for all the nearest neighbors of the query point in a given radius. * \param[in] point the given query point * \param[in] radius the radius of the sphere bounding all of p_q's neighbors * \param[out] k_indices the resultant indices of the neighboring points * \param[out] k_sqr_distances the resultant squared distances to the neighboring points * \param[in] max_nn if given, bounds the maximum returned neighbors to this value. If \a max_nn is set to * 0 or to a number higher than the number of points in the input cloud, all neighbors in \a radius will be * returned. * \return number of neighbors found in radius */ int radiusSearch (const PointT& point, double radius, Indices &k_indices, std::vector &k_sqr_distances, unsigned int max_nn = 0) const override; protected: /** \brief A pointer to the internal KdTree object. */ KdTreePtr tree_; }; } } #ifdef PCL_NO_PRECOMPILE #include #else #define PCL_INSTANTIATE_KdTree(T) template class PCL_EXPORTS pcl::search::KdTree; #endif