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Point Cloud Library (PCL)
1.6.0
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00001 /* 00002 * Software License Agreement (BSD License) 00003 * 00004 * Point Cloud Library (PCL) - www.pointclouds.org 00005 * Copyright (c) 2010-2011, Willow Garage, Inc. 00006 * 00007 * All rights reserved. 00008 * 00009 * Redistribution and use in source and binary forms, with or without 00010 * modification, are permitted provided that the following conditions 00011 * are met: 00012 * 00013 * * Redistributions of source code must retain the above copyright 00014 * notice, this list of conditions and the following disclaimer. 00015 * * Redistributions in binary form must reproduce the above 00016 * copyright notice, this list of conditions and the following 00017 * disclaimer in the documentation and/or other materials provided 00018 * with the distribution. 00019 * * Neither the name of Willow Garage, Inc. nor the names of its 00020 * contributors may be used to endorse or promote products derived 00021 * from this software without specific prior written permission. 00022 * 00023 * THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS 00024 * "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT 00025 * LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS 00026 * FOR A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE 00027 * COPYRIGHT OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, 00028 * INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, 00029 * BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; 00030 * LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER 00031 * CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT 00032 * LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN 00033 * ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE 00034 * POSSIBILITY OF SUCH DAMAGE. 00035 * 00036 * $Id: fpfh_omp.hpp 5026 2012-03-12 02:51:44Z rusu $ 00037 * 00038 */ 00039 00040 #ifndef PCL_FEATURES_IMPL_FPFH_OMP_H_ 00041 #define PCL_FEATURES_IMPL_FPFH_OMP_H_ 00042 00043 #include <pcl/features/fpfh_omp.h> 00044 00046 template <typename PointInT, typename PointNT, typename PointOutT> void 00047 pcl::FPFHEstimationOMP<PointInT, PointNT, PointOutT>::computeFeature (PointCloudOut &output) 00048 { 00049 std::vector<int> spfh_indices_vec; 00050 std::vector<int> spfh_hist_lookup (surface_->points.size ()); 00051 00052 // Build a list of (unique) indices for which we will need to compute SPFH signatures 00053 // (We need an SPFH signature for every point that is a neighbor of any point in input_[indices_]) 00054 if (surface_ != input_ || 00055 indices_->size () != surface_->points.size ()) 00056 { 00057 std::vector<int> nn_indices (k_); // \note These resizes are irrelevant for a radiusSearch (). 00058 std::vector<float> nn_dists (k_); 00059 00060 std::set<int> spfh_indices_set; 00061 for (size_t idx = 0; idx < indices_->size (); ++idx) 00062 { 00063 int p_idx = (*indices_)[idx]; 00064 if (this->searchForNeighbors (p_idx, search_parameter_, nn_indices, nn_dists) == 0) 00065 continue; 00066 00067 spfh_indices_set.insert (nn_indices.begin (), nn_indices.end ()); 00068 } 00069 spfh_indices_vec.resize (spfh_indices_set.size ()); 00070 std::copy (spfh_indices_set.begin (), spfh_indices_set.end (), spfh_indices_vec.begin ()); 00071 } 00072 else 00073 { 00074 // Special case: When a feature must be computed at every point, there is no need for a neighborhood search 00075 spfh_indices_vec.resize (indices_->size ()); 00076 for (int idx = 0; idx < static_cast<int> (indices_->size ()); ++idx) 00077 spfh_indices_vec[idx] = idx; 00078 } 00079 00080 // Initialize the arrays that will store the SPFH signatures 00081 size_t data_size = spfh_indices_vec.size (); 00082 hist_f1_.setZero (data_size, nr_bins_f1_); 00083 hist_f2_.setZero (data_size, nr_bins_f2_); 00084 hist_f3_.setZero (data_size, nr_bins_f3_); 00085 00086 // Compute SPFH signatures for every point that needs them 00087 00088 #pragma omp parallel for schedule (dynamic, threads_) 00089 for (int i = 0; i < static_cast<int> (spfh_indices_vec.size ()); ++i) 00090 { 00091 // Get the next point index 00092 int p_idx = spfh_indices_vec[i]; 00093 00094 // Find the neighborhood around p_idx 00095 std::vector<int> nn_indices (k_); // \note These resizes are irrelevant for a radiusSearch (). 00096 std::vector<float> nn_dists (k_); 00097 if (this->searchForNeighbors (*surface_, p_idx, search_parameter_, nn_indices, nn_dists) == 0) 00098 continue; 00099 00100 // Estimate the SPFH signature around p_idx 00101 this->computePointSPFHSignature (*surface_, *normals_, p_idx, i, nn_indices, hist_f1_, hist_f2_, hist_f3_); 00102 00103 // Populate a lookup table for converting a point index to its corresponding row in the spfh_hist_* matrices 00104 spfh_hist_lookup[p_idx] = i; 00105 } 00106 00107 // Intialize the array that will store the FPFH signature 00108 int nr_bins = nr_bins_f1_ + nr_bins_f2_ + nr_bins_f3_; 00109 00110 // Iterate over the entire index vector 00111 #pragma omp parallel for schedule (dynamic, threads_) 00112 for (int idx = 0; idx < static_cast<int> (indices_->size ()); ++idx) 00113 { 00114 // Find the indices of point idx's neighbors... 00115 std::vector<int> nn_indices (k_); // \note These resizes are irrelevant for a radiusSearch (). 00116 std::vector<float> nn_dists (k_); 00117 if (!isFinite ((*input_)[(*indices_)[idx]]) || 00118 this->searchForNeighbors ((*indices_)[idx], search_parameter_, nn_indices, nn_dists) == 0) 00119 { 00120 for (int d = 0; d < nr_bins; ++d) 00121 output.points[idx].histogram[d] = std::numeric_limits<float>::quiet_NaN (); 00122 00123 output.is_dense = false; 00124 continue; 00125 } 00126 00127 00128 // ... and remap the nn_indices values so that they represent row indices in the spfh_hist_* matrices 00129 // instead of indices into surface_->points 00130 for (size_t i = 0; i < nn_indices.size (); ++i) 00131 nn_indices[i] = spfh_hist_lookup[nn_indices[i]]; 00132 00133 // Compute the FPFH signature (i.e. compute a weighted combination of local SPFH signatures) ... 00134 Eigen::VectorXf fpfh_histogram = Eigen::VectorXf::Zero (nr_bins); 00135 weightPointSPFHSignature (hist_f1_, hist_f2_, hist_f3_, nn_indices, nn_dists, fpfh_histogram); 00136 00137 // ...and copy it into the output cloud 00138 for (int d = 0; d < nr_bins; ++d) 00139 output.points[idx].histogram[d] = fpfh_histogram[d]; 00140 } 00141 00142 } 00143 00144 #define PCL_INSTANTIATE_FPFHEstimationOMP(T,NT,OutT) template class PCL_EXPORTS pcl::FPFHEstimationOMP<T,NT,OutT>; 00145 00146 #endif // PCL_FEATURES_IMPL_FPFH_OMP_H_ 00147
1.7.6.1