|
Point Cloud Library (PCL)
1.6.0
|
MEstimatorSampleConsensus represents an implementation of the MSAC (M-estimator SAmple Consensus) algorithm, as described in: "MLESAC: A new robust estimator with application to estimating image geometry", P.H.S. More...
#include <pcl/sample_consensus/msac.h>


Public Types | |
| typedef boost::shared_ptr < SampleConsensus > | Ptr |
| typedef boost::shared_ptr < const SampleConsensus > | ConstPtr |
Public Member Functions | |
| MEstimatorSampleConsensus (const SampleConsensusModelPtr &model) | |
| MSAC (M-estimator SAmple Consensus) main constructor. More... | |
| MEstimatorSampleConsensus (const SampleConsensusModelPtr &model, double threshold) | |
| MSAC (M-estimator SAmple Consensus) main constructor. More... | |
| bool | computeModel (int debug_verbosity_level=0) |
| Compute the actual model and find the inliers. 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... | |
| 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... | |
MEstimatorSampleConsensus represents an implementation of the MSAC (M-estimator SAmple Consensus) algorithm, as described in: "MLESAC: A new robust estimator with application to estimating image geometry", P.H.S.
Torr and A. Zisserman, Computer Vision and Image Understanding, vol 78, 2000.
|
inherited |
|
inherited |
|
inline |
|
inline |
|
virtual |
Compute the actual model and find the inliers.
| debug_verbosity_level | enable/disable on-screen debug information and set the verbosity level |
Implements pcl::SampleConsensus< PointT >.
|
inlineinherited |
|
inlineinherited |
|
inlineinherited |
|
inlineinherited |
|
inlineinherited |
|
inlineinherited |
|
inlineinherited |
|
inlineinherited |
|
inlineinherited |
|
inlineinherited |
1.8.3.1