291 lines
11 KiB
C++
291 lines
11 KiB
C++
/*
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* Software License Agreement (BSD License)
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*
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* Point Cloud Library (PCL) - www.pointclouds.org
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* Copyright (c) 2016-, Open Perception, Inc.
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*
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* All rights reserved.
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*
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* Redistribution and use in source and binary forms, with or without
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* modification, are permitted provided that the following conditions
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* are met:
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*
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* * Redistributions of source code must retain the above copyright
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* notice, this list of conditions and the following disclaimer.
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* * Redistributions in binary form must reproduce the above
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* copyright notice, this list of conditions and the following
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* disclaimer in the documentation and/or other materials provided
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* with the distribution.
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* * Neither the name of the copyright holder(s) nor the names of its
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* contributors may be used to endorse or promote products derived
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* from this software without specific prior written permission.
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*
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* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS
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* "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT
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* LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS
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* FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE
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* COPYRIGHT OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT,
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* INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING,
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* BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES;
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* LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER
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* CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT
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* LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN
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* ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
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* POSSIBILITY OF SUCH DAMAGE.
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*
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*
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*/
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#pragma once
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#include <pcl/point_types.h>
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#include <pcl/features/feature.h>
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#include <pcl/features/normal_3d.h>
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namespace pcl
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{
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/** \brief FLARELocalReferenceFrameEstimation implements the Fast LocAl Reference framE algorithm
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* for local reference frame estimation as described here:
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*
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* - A. Petrelli, L. Di Stefano,
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* "A repeatable and efficient canonical reference for surface matching",
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* 3DimPVT, 2012
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*
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* FLARE algorithm is deployed in ReLOC algorithm proposed in:
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*
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* Petrelli A., Di Stefano L., "Pairwise registration by local orientation cues", Computer Graphics Forum, 2015.
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*
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* \author Alioscia Petrelli
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* \ingroup features
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*/
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template<typename PointInT, typename PointNT, typename PointOutT = ReferenceFrame, typename SignedDistanceT = float>
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class FLARELocalReferenceFrameEstimation : public FeatureFromNormals<PointInT, PointNT, PointOutT>
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{
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protected:
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using Feature<PointInT, PointOutT>::feature_name_;
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using Feature<PointInT, PointOutT>::input_;
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using Feature<PointInT, PointOutT>::indices_;
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using Feature<PointInT, PointOutT>::surface_;
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using Feature<PointInT, PointOutT>::tree_;
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using Feature<PointInT, PointOutT>::search_parameter_;
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using FeatureFromNormals<PointInT, PointNT, PointOutT>::normals_;
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using Feature<PointInT, PointOutT>::fake_surface_;
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using Feature<PointInT, PointOutT>::getClassName;
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using typename Feature<PointInT, PointOutT>::PointCloudIn;
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using typename Feature<PointInT, PointOutT>::PointCloudOut;
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using typename Feature<PointInT, PointOutT>::PointCloudInConstPtr;
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using typename Feature<PointInT, PointOutT>::KdTreePtr;
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using PointCloudSignedDistance = pcl::PointCloud<SignedDistanceT>;
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using PointCloudSignedDistancePtr = typename PointCloudSignedDistance::Ptr;
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using Ptr = shared_ptr<FLARELocalReferenceFrameEstimation<PointInT, PointNT, PointOutT> >;
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using ConstPtr = shared_ptr<const FLARELocalReferenceFrameEstimation<PointInT, PointNT, PointOutT> >;
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public:
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/** \brief Constructor. */
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FLARELocalReferenceFrameEstimation () :
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tangent_radius_ (0.0f),
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margin_thresh_ (0.85f),
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min_neighbors_for_normal_axis_ (6),
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min_neighbors_for_tangent_axis_ (6),
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sampled_surface_ (),
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sampled_tree_ (),
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fake_sampled_surface_ (false)
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{
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feature_name_ = "FLARELocalReferenceFrameEstimation";
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}
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//Getters/Setters
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/** \brief Set the maximum distance of the points used to estimate the x_axis of the FLARE Reference Frame for a given point.
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*
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* \param[in] radius The search radius for x axis.
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*/
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inline void
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setTangentRadius (float radius)
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{
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tangent_radius_ = radius;
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}
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/** \brief Get the maximum distance of the points used to estimate the x_axis of the FLARE Reference Frame for a given point.
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*
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* \return The search radius for x axis.
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*/
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inline float
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getTangentRadius () const
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{
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return (tangent_radius_);
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}
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/** \brief Set the percentage of the search tangent radius after which a point is considered part of the support.
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*
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* \param[in] margin_thresh the percentage of the search tangent radius after which a point is considered part of the support.
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*/
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inline void
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setMarginThresh (float margin_thresh)
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{
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margin_thresh_ = margin_thresh;
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}
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/** \brief Get the percentage of the search tangent radius after which a point is considered part of the support.
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*
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* \return The percentage of the search tangent radius after which a point is considered part of the support.
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*/
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inline float
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getMarginThresh () const
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{
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return (margin_thresh_);
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}
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/** \brief Set min number of neighbours required for the computation of Z axis.
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*
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* \param[in] min_neighbors_for_normal_axis min number of neighbours required for the computation of Z axis.
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*/
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inline void
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setMinNeighboursForNormalAxis (int min_neighbors_for_normal_axis)
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{
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min_neighbors_for_normal_axis_ = min_neighbors_for_normal_axis;
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}
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/** \brief Get min number of neighbours required for the computation of Z axis.
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*
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* \return min number of neighbours required for the computation of Z axis.
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*/
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inline int
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getMinNeighboursForNormalAxis () const
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{
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return (min_neighbors_for_normal_axis_);
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}
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/** \brief Set min number of neighbours required for the computation of X axis.
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*
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* \param[in] min_neighbors_for_tangent_axis min number of neighbours required for the computation of X axis.
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*/
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inline void
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setMinNeighboursForTangentAxis (int min_neighbors_for_tangent_axis)
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{
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min_neighbors_for_tangent_axis_ = min_neighbors_for_tangent_axis;
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}
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/** \brief Get min number of neighbours required for the computation of X axis.
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*
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* \return min number of neighbours required for the computation of X axis.
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*/
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inline int
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getMinNeighboursForTangentAxis () const
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{
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return (min_neighbors_for_tangent_axis_);
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}
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/** \brief Provide a pointer to the dataset used for the estimation of X axis.
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* As the estimation of x axis is negligibly affected by surface downsampling,
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* this method lets to consider a downsampled version of surface_ in the estimation of x axis.
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* This is optional, if this is not set, it will only use the data in the
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* surface_ cloud to estimate the x axis.
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* \param[in] cloud a pointer to a PointCloud
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*/
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inline void
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setSearchSampledSurface(const PointCloudInConstPtr &cloud)
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{
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sampled_surface_ = cloud;
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fake_sampled_surface_ = false;
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}
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/** \brief Get a pointer to the sampled_surface_ cloud dataset. */
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inline const PointCloudInConstPtr&
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getSearchSampledSurface() const
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{
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return (sampled_surface_);
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}
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/** \brief Provide a pointer to the search object linked to sampled_surface.
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* \param[in] tree a pointer to the spatial search object linked to sampled_surface.
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*/
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inline void
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setSearchMethodForSampledSurface (const KdTreePtr &tree) { sampled_tree_ = tree; }
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/** \brief Get a pointer to the search method used for the extimation of x axis. */
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inline const KdTreePtr&
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getSearchMethodForSampledSurface () const
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{
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return (sampled_tree_);
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}
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/** \brief Get the signed distances of the highest points from the fitted planes. */
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inline const std::vector<SignedDistanceT> &
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getSignedDistancesFromHighestPoints () const
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{
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return (signed_distances_from_highest_points_);
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}
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protected:
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/** \brief This method should get called before starting the actual computation. */
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bool
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initCompute () override;
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/** \brief This method should get called after the actual computation is ended. */
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bool
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deinitCompute () override;
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/** \brief Estimate the LRF descriptor for a given point based on its spatial neighborhood of 3D points with normals
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* \param[in] index the index of the point in input_
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* \param[out] lrf the resultant local reference frame
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* \return signed distance of the highest point from the fitted plane. Max if the lrf is not computable.
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*/
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SignedDistanceT
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computePointLRF (const int index, Eigen::Matrix3f &lrf);
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/** \brief Abstract feature estimation method.
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* \param[out] output the resultant features
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*/
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void
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computeFeature (PointCloudOut &output) override;
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private:
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/** \brief Radius used to find tangent axis. */
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float tangent_radius_;
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/** \brief Threshold that define if a support point is near the margins. */
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float margin_thresh_;
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/** \brief Min number of neighbours required for the computation of Z axis. Otherwise, feature point normal is used. */
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int min_neighbors_for_normal_axis_;
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/** \brief Min number of neighbours required for the computation of X axis. Otherwise, a random X axis is set */
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int min_neighbors_for_tangent_axis_;
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/** \brief An input point cloud describing the surface that is to be used
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* for nearest neighbor searches for the estimation of X axis.
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*/
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PointCloudInConstPtr sampled_surface_;
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/** \brief A pointer to the spatial search object used for the estimation of X axis. */
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KdTreePtr sampled_tree_;
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/** \brief Class for normal estimation. */
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NormalEstimation<PointInT, PointNT> normal_estimation_;
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/** \brief Signed distances of the highest points from the fitted planes.*/
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std::vector<SignedDistanceT> signed_distances_from_highest_points_;
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/** \brief If no sampled_surface_ is given, we use surface_ as the sampled surface. */
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bool fake_sampled_surface_;
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};
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}
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#ifdef PCL_NO_PRECOMPILE
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#include <pcl/features/impl/flare.hpp>
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#endif
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