/* * 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 namespace pcl { /** \brief PrincipalCurvaturesEstimation estimates the directions (eigenvectors) and magnitudes (eigenvalues) of * principal surface curvatures for a given point cloud dataset containing points and normals. * * The recommended PointOutT is pcl::PrincipalCurvatures. * * \note The code is stateful as we do not expect this class to be multicore parallelized. Please look at * \ref NormalEstimationOMP for an example on how to extend this to parallel implementations. * * \author Radu B. Rusu, Jared Glover * \ingroup features */ template class PrincipalCurvaturesEstimation : public FeatureFromNormals { public: using Ptr = shared_ptr >; using ConstPtr = shared_ptr >; using Feature::feature_name_; using Feature::getClassName; using Feature::indices_; using Feature::k_; using Feature::search_parameter_; using Feature::surface_; using Feature::input_; using FeatureFromNormals::normals_; using PointCloudOut = typename Feature::PointCloudOut; using PointCloudIn = pcl::PointCloud; /** \brief Empty constructor. */ PrincipalCurvaturesEstimation () : xyz_centroid_ (Eigen::Vector3f::Zero ()), demean_ (Eigen::Vector3f::Zero ()), covariance_matrix_ (Eigen::Matrix3f::Zero ()), eigenvector_ (Eigen::Vector3f::Zero ()), eigenvalues_ (Eigen::Vector3f::Zero ()) { feature_name_ = "PrincipalCurvaturesEstimation"; }; /** \brief Perform Principal Components Analysis (PCA) on the point normals of a surface patch in the tangent * plane of the given point normal, and return the principal curvature (eigenvector of the max eigenvalue), * along with both the max (pc1) and min (pc2) eigenvalues * \param[in] normals the point cloud normals * \param[in] p_idx the query point at which the least-squares plane was estimated * \param[in] indices the point cloud indices that need to be used * \param[out] pcx the principal curvature X direction * \param[out] pcy the principal curvature Y direction * \param[out] pcz the principal curvature Z direction * \param[out] pc1 the max eigenvalue of curvature * \param[out] pc2 the min eigenvalue of curvature */ void computePointPrincipalCurvatures (const pcl::PointCloud &normals, int p_idx, const pcl::Indices &indices, float &pcx, float &pcy, float &pcz, float &pc1, float &pc2); protected: /** \brief Estimate the principal curvature (eigenvector of the max eigenvalue), along with both the max (pc1) * and min (pc2) eigenvalues for all points given in using the surface in * setSearchSurface () and the spatial locator in setSearchMethod () * \param[out] output the resultant point cloud model dataset that contains the principal curvature estimates */ void computeFeature (PointCloudOut &output) override; private: /** \brief A pointer to the input dataset that contains the point normals of the XYZ dataset. */ std::vector > projected_normals_; /** \brief SSE aligned placeholder for the XYZ centroid of a surface patch. */ Eigen::Vector3f xyz_centroid_; /** \brief Temporary point placeholder. */ Eigen::Vector3f demean_; /** \brief Placeholder for the 3x3 covariance matrix at each surface patch. */ EIGEN_ALIGN16 Eigen::Matrix3f covariance_matrix_; /** \brief SSE aligned eigenvectors placeholder for a covariance matrix. */ Eigen::Vector3f eigenvector_; /** \brief eigenvalues placeholder for a covariance matrix. */ Eigen::Vector3f eigenvalues_; }; } #ifdef PCL_NO_PRECOMPILE #include #endif