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Point Cloud Library (PCL)
1.5.1
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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: extract_clusters.h 4702 2012-02-23 09:39:33Z gedikli $ 00037 * 00038 */ 00039 00040 #ifndef PCL_EXTRACT_CLUSTERS_H_ 00041 #define PCL_EXTRACT_CLUSTERS_H_ 00042 00043 #include <pcl/pcl_base.h> 00044 00045 #include "pcl/search/pcl_search.h" 00046 00047 namespace pcl 00048 { 00050 00060 template <typename PointT> void 00061 extractEuclideanClusters ( 00062 const PointCloud<PointT> &cloud, const boost::shared_ptr<search::Search<PointT> > &tree, 00063 float tolerance, std::vector<PointIndices> &clusters, 00064 unsigned int min_pts_per_cluster = 1, unsigned int max_pts_per_cluster = (std::numeric_limits<int>::max) ()); 00065 00067 00078 template <typename PointT> void 00079 extractEuclideanClusters ( 00080 const PointCloud<PointT> &cloud, const std::vector<int> &indices, 00081 const boost::shared_ptr<search::Search<PointT> > &tree, float tolerance, std::vector<PointIndices> &clusters, 00082 unsigned int min_pts_per_cluster = 1, unsigned int max_pts_per_cluster = (std::numeric_limits<int>::max) ()); 00083 00085 00098 template <typename PointT, typename Normal> void 00099 extractEuclideanClusters ( 00100 const PointCloud<PointT> &cloud, const PointCloud<Normal> &normals, 00101 float tolerance, const boost::shared_ptr<KdTree<PointT> > &tree, 00102 std::vector<PointIndices> &clusters, double eps_angle, 00103 unsigned int min_pts_per_cluster = 1, 00104 unsigned int max_pts_per_cluster = (std::numeric_limits<int>::max) ()) 00105 { 00106 if (tree->getInputCloud ()->points.size () != cloud.points.size ()) 00107 { 00108 PCL_ERROR ("[pcl::extractEuclideanClusters] Tree built for a different point cloud dataset (%lu) than the input cloud (%lu)!\n", (unsigned long)tree->getInputCloud ()->points.size (), (unsigned long)cloud.points.size ()); 00109 return; 00110 } 00111 if (cloud.points.size () != normals.points.size ()) 00112 { 00113 PCL_ERROR ("[pcl::extractEuclideanClusters] Number of points in the input point cloud (%lu) different than normals (%lu)!\n", (unsigned long)cloud.points.size (), (unsigned long)normals.points.size ()); 00114 return; 00115 } 00116 00117 // Create a bool vector of processed point indices, and initialize it to false 00118 std::vector<bool> processed (cloud.points.size (), false); 00119 00120 std::vector<int> nn_indices; 00121 std::vector<float> nn_distances; 00122 // Process all points in the indices vector 00123 for (size_t i = 0; i < cloud.points.size (); ++i) 00124 { 00125 if (processed[i]) 00126 continue; 00127 00128 std::vector<unsigned int> seed_queue; 00129 int sq_idx = 0; 00130 seed_queue.push_back (i); 00131 00132 processed[i] = true; 00133 00134 while (sq_idx < (int)seed_queue.size ()) 00135 { 00136 // Search for sq_idx 00137 if (!tree->radiusSearch (seed_queue[sq_idx], tolerance, nn_indices, nn_distances)) 00138 { 00139 sq_idx++; 00140 continue; 00141 } 00142 00143 for (size_t j = 1; j < nn_indices.size (); ++j) // nn_indices[0] should be sq_idx 00144 { 00145 if (processed[nn_indices[j]]) // Has this point been processed before ? 00146 continue; 00147 00148 //processed[nn_indices[j]] = true; 00149 // [-1;1] 00150 double dot_p = normals.points[i].normal[0] * normals.points[nn_indices[j]].normal[0] + 00151 normals.points[i].normal[1] * normals.points[nn_indices[j]].normal[1] + 00152 normals.points[i].normal[2] * normals.points[nn_indices[j]].normal[2]; 00153 if ( fabs (acos (dot_p)) < eps_angle ) 00154 { 00155 processed[nn_indices[j]] = true; 00156 seed_queue.push_back (nn_indices[j]); 00157 } 00158 } 00159 00160 sq_idx++; 00161 } 00162 00163 // If this queue is satisfactory, add to the clusters 00164 if (seed_queue.size () >= min_pts_per_cluster && seed_queue.size () <= max_pts_per_cluster) 00165 { 00166 pcl::PointIndices r; 00167 r.indices.resize (seed_queue.size ()); 00168 for (size_t j = 0; j < seed_queue.size (); ++j) 00169 r.indices[j] = seed_queue[j]; 00170 00171 std::sort (r.indices.begin (), r.indices.end ()); 00172 r.indices.erase (std::unique (r.indices.begin (), r.indices.end ()), r.indices.end ()); 00173 00174 r.header = cloud.header; 00175 clusters.push_back (r); // We could avoid a copy by working directly in the vector 00176 } 00177 } 00178 } 00179 00180 00182 00196 template <typename PointT, typename Normal> 00197 void extractEuclideanClusters ( 00198 const PointCloud<PointT> &cloud, const PointCloud<Normal> &normals, 00199 const std::vector<int> &indices, const boost::shared_ptr<KdTree<PointT> > &tree, 00200 float tolerance, std::vector<PointIndices> &clusters, double eps_angle, 00201 unsigned int min_pts_per_cluster = 1, 00202 unsigned int max_pts_per_cluster = (std::numeric_limits<int>::max) ()) 00203 { 00204 // \note If the tree was created over <cloud, indices>, we guarantee a 1-1 mapping between what the tree returns 00205 //and indices[i] 00206 if (tree->getInputCloud ()->points.size () != cloud.points.size ()) 00207 { 00208 PCL_ERROR ("[pcl::extractEuclideanClusters] Tree built for a different point cloud dataset (%lu) than the input cloud (%lu)!\n", (unsigned long)tree->getInputCloud ()->points.size (), (unsigned long)cloud.points.size ()); 00209 return; 00210 } 00211 if (tree->getIndices ()->size () != indices.size ()) 00212 { 00213 PCL_ERROR ("[pcl::extractEuclideanClusters] Tree built for a different set of indices (%lu) than the input set (%lu)!\n", (unsigned long)tree->getIndices ()->size (), (unsigned long)indices.size ()); 00214 return; 00215 } 00216 if (cloud.points.size () != normals.points.size ()) 00217 { 00218 PCL_ERROR ("[pcl::extractEuclideanClusters] Number of points in the input point cloud (%lu) different than normals (%lu)!\n", (unsigned long)cloud.points.size (), (unsigned long)normals.points.size ()); 00219 return; 00220 } 00221 // Create a bool vector of processed point indices, and initialize it to false 00222 std::vector<bool> processed (indices.size (), false); 00223 00224 std::vector<int> nn_indices; 00225 std::vector<float> nn_distances; 00226 // Process all points in the indices vector 00227 for (size_t i = 0; i < indices.size (); ++i) 00228 { 00229 if (processed[i]) 00230 continue; 00231 00232 std::vector<int> seed_queue; 00233 int sq_idx = 0; 00234 seed_queue.push_back (i); 00235 00236 processed[i] = true; 00237 00238 while (sq_idx < (int)seed_queue.size ()) 00239 { 00240 // Search for sq_idx 00241 if (!tree->radiusSearch (seed_queue[sq_idx], tolerance, nn_indices, nn_distances)) 00242 { 00243 sq_idx++; 00244 continue; 00245 } 00246 00247 for (size_t j = 1; j < nn_indices.size (); ++j) // nn_indices[0] should be sq_idx 00248 { 00249 if (processed[nn_indices[j]]) // Has this point been processed before ? 00250 continue; 00251 00252 //processed[nn_indices[j]] = true; 00253 // [-1;1] 00254 double dot_p = 00255 normals.points[indices[i]].normal[0] * normals.points[indices[nn_indices[j]]].normal[0] + 00256 normals.points[indices[i]].normal[1] * normals.points[indices[nn_indices[j]]].normal[1] + 00257 normals.points[indices[i]].normal[2] * normals.points[indices[nn_indices[j]]].normal[2]; 00258 if ( fabs (acos (dot_p)) < eps_angle ) 00259 { 00260 processed[nn_indices[j]] = true; 00261 seed_queue.push_back (nn_indices[j]); 00262 } 00263 } 00264 00265 sq_idx++; 00266 } 00267 00268 // If this queue is satisfactory, add to the clusters 00269 if (seed_queue.size () >= min_pts_per_cluster && seed_queue.size () <= max_pts_per_cluster) 00270 { 00271 pcl::PointIndices r; 00272 r.indices.resize (seed_queue.size ()); 00273 for (size_t j = 0; j < seed_queue.size (); ++j) 00274 r.indices[j] = indices[seed_queue[j]]; 00275 00276 std::sort (r.indices.begin (), r.indices.end ()); 00277 r.indices.erase (std::unique (r.indices.begin (), r.indices.end ()), r.indices.end ()); 00278 00279 r.header = cloud.header; 00280 clusters.push_back (r); 00281 } 00282 } 00283 } 00284 00288 00292 template <typename PointT> 00293 class EuclideanClusterExtraction: public PCLBase<PointT> 00294 { 00295 typedef PCLBase<PointT> BasePCLBase; 00296 00297 public: 00298 typedef pcl::PointCloud<PointT> PointCloud; 00299 typedef typename PointCloud::Ptr PointCloudPtr; 00300 typedef typename PointCloud::ConstPtr PointCloudConstPtr; 00301 00302 typedef typename pcl::search::Search<PointT> KdTree; 00303 typedef typename pcl::search::Search<PointT>::Ptr KdTreePtr; 00304 00305 typedef PointIndices::Ptr PointIndicesPtr; 00306 typedef PointIndices::ConstPtr PointIndicesConstPtr; 00307 00309 00310 EuclideanClusterExtraction () : tree_ (), min_pts_per_cluster_ (1), 00311 max_pts_per_cluster_ (std::numeric_limits<int>::max ()) 00312 {}; 00313 00317 inline void setSearchMethod (const KdTreePtr &tree) { tree_ = tree; } 00318 00322 inline KdTreePtr getSearchMethod () { return (tree_); } 00323 00327 inline void setClusterTolerance (double tolerance) { cluster_tolerance_ = tolerance; } 00328 00330 inline double getClusterTolerance () { return (cluster_tolerance_); } 00331 00335 inline void setMinClusterSize (int min_cluster_size) { min_pts_per_cluster_ = min_cluster_size; } 00336 00338 inline int getMinClusterSize () { return (min_pts_per_cluster_); } 00339 00343 inline void setMaxClusterSize (int max_cluster_size) { max_pts_per_cluster_ = max_cluster_size; } 00344 00346 inline int getMaxClusterSize () { return (max_pts_per_cluster_); } 00347 00351 void extract (std::vector<PointIndices> &clusters); 00352 00353 protected: 00354 // Members derived from the base class 00355 using BasePCLBase::input_; 00356 using BasePCLBase::indices_; 00357 using BasePCLBase::initCompute; 00358 using BasePCLBase::deinitCompute; 00359 00361 KdTreePtr tree_; 00362 00364 double cluster_tolerance_; 00365 00367 int min_pts_per_cluster_; 00368 00370 int max_pts_per_cluster_; 00371 00373 virtual std::string getClassName () const { return ("EuclideanClusterExtraction"); } 00374 00375 }; 00376 00380 inline bool 00381 comparePointClusters (const pcl::PointIndices &a, const pcl::PointIndices &b) 00382 { 00383 return (a.indices.size () < b.indices.size ()); 00384 } 00385 } 00386 00387 #endif //#ifndef PCL_EXTRACT_CLUSTERS_H_
1.8.0