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Point Cloud Library (PCL)
1.8.1
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SampleConsensus represents the base class. More...
#include <pcl/sample_consensus/sac.h>
Public Types | |
| typedef boost::shared_ptr< SampleConsensus > | Ptr |
| typedef boost::shared_ptr< const SampleConsensus > | ConstPtr |
Public Member Functions | |
| SampleConsensus (const SampleConsensusModelPtr &model, bool random=false) | |
| Constructor for base SAC. More... | |
| SampleConsensus (const SampleConsensusModelPtr &model, double threshold, bool random=false) | |
| Constructor for base SAC. More... | |
| void | setSampleConsensusModel (const SampleConsensusModelPtr &model) |
| Set the Sample Consensus model to use. More... | |
| SampleConsensusModelPtr | getSampleConsensusModel () const |
| Get the Sample Consensus model used. More... | |
| virtual | ~SampleConsensus () |
| Destructor for base SAC. More... | |
| void | setDistanceThreshold (double threshold) |
| Set the distance to model threshold. More... | |
| double | getDistanceThreshold () |
| Get the distance to model threshold, as set by the user. More... | |
| void | setMaxIterations (int max_iterations) |
| Set the maximum number of iterations. More... | |
| int | getMaxIterations () |
| Get the maximum number of iterations, as set by the user. More... | |
| void | setProbability (double probability) |
| Set the desired probability of choosing at least one sample free from outliers. More... | |
| double | getProbability () |
| Obtain the probability of choosing at least one sample free from outliers, as set by the user. More... | |
| virtual bool | computeModel (int debug_verbosity_level=0)=0 |
| Compute the actual model. More... | |
| virtual bool | refineModel (const double sigma=3.0, const unsigned int max_iterations=1000) |
| Refine the model found. More... | |
| void | getRandomSamples (const boost::shared_ptr< std::vector< int > > &indices, size_t nr_samples, std::set< int > &indices_subset) |
| Get a set of randomly selected indices. More... | |
| void | getModel (std::vector< int > &model) |
| Return the best model found so far. More... | |
| void | getInliers (std::vector< int > &inliers) |
| Return the best set of inliers found so far for this model. More... | |
| void | getModelCoefficients (Eigen::VectorXf &model_coefficients) |
| Return the model coefficients of the best model found so far. More... | |
Protected Member Functions | |
| double | rnd () |
| Boost-based random number generator. More... | |
Protected Attributes | |
| SampleConsensusModelPtr | sac_model_ |
| The underlying data model used (i.e. More... | |
| std::vector< int > | model_ |
| The model found after the last computeModel () as point cloud indices. More... | |
| std::vector< int > | inliers_ |
| The indices of the points that were chosen as inliers after the last computeModel () call. More... | |
| Eigen::VectorXf | model_coefficients_ |
| The coefficients of our model computed directly from the model found. More... | |
| double | probability_ |
| Desired probability of choosing at least one sample free from outliers. More... | |
| int | iterations_ |
| Total number of internal loop iterations that we've done so far. More... | |
| double | threshold_ |
| Distance to model threshold. More... | |
| int | max_iterations_ |
| Maximum number of iterations before giving up. More... | |
| boost::mt19937 | rng_alg_ |
| Boost-based random number generator algorithm. More... | |
| boost::shared_ptr< boost::uniform_01< boost::mt19937 > > | rng_ |
| Boost-based random number generator distribution. More... | |
SampleConsensus represents the base class.
All sample consensus methods must inherit from this class.
| typedef boost::shared_ptr<const SampleConsensus> pcl::SampleConsensus< T >::ConstPtr |
| typedef boost::shared_ptr<SampleConsensus> pcl::SampleConsensus< T >::Ptr |
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Compute the actual model.
Pure virtual.
Implemented in pcl::MaximumLikelihoodSampleConsensus< PointT >, pcl::RandomizedMEstimatorSampleConsensus< PointT >, pcl::RandomizedRandomSampleConsensus< PointT >, pcl::MEstimatorSampleConsensus< PointT >, pcl::LeastMedianSquares< PointT >, pcl::ProgressiveSampleConsensus< PointT >, and pcl::RandomSampleConsensus< PointT >.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getProbability().
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Return the model coefficients of the best model found so far.
| [out] | model_coefficients | the resultant model coefficients, as documented in Module sample_consensus |
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Refine the model found.
This loops over the model coefficients and optimizes them together with the set of inliers, until the change in the set of inliers is minimal.
| [in] | sigma | standard deviation multiplier for considering a sample as inlier (Mahalanobis distance) |
| [in] | max_iterations | the maxim number of iterations to try to refine in case the inliers keep on changing |
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Boost-based random number generator.
Definition at line 341 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getRandomSamples().
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The indices of the points that were chosen as inliers after the last computeModel () call.
Definition at line 316 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getInliers(), and pcl::SampleConsensus< WeightSACPointType >::refineModel().
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Maximum number of iterations before giving up.
Definition at line 331 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getMaxIterations(), and pcl::SampleConsensus< WeightSACPointType >::setMaxIterations().
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The model found after the last computeModel () as point cloud indices.
Definition at line 313 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getModel().
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The coefficients of our model computed directly from the model found.
Definition at line 319 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getModelCoefficients(), and pcl::SampleConsensus< WeightSACPointType >::refineModel().
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Desired probability of choosing at least one sample free from outliers.
Definition at line 322 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getProbability(), and pcl::SampleConsensus< WeightSACPointType >::setProbability().
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Boost-based random number generator distribution.
Definition at line 337 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::SampleConsensus().
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The underlying data model used (i.e.
what is it that we attempt to search for).
Definition at line 310 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getSampleConsensusModel(), pcl::SampleConsensus< WeightSACPointType >::refineModel(), and pcl::SampleConsensus< WeightSACPointType >::setSampleConsensusModel().
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Distance to model threshold.
Definition at line 328 of file sac.h.
Referenced by pcl::SampleConsensus< WeightSACPointType >::getDistanceThreshold(), pcl::SampleConsensus< WeightSACPointType >::refineModel(), and pcl::SampleConsensus< WeightSACPointType >::setDistanceThreshold().