The pcl_sample_consensus library holds SAmple Consensus (SAC) methods like RANSAC and models like planes and cylinders. These can be combined freely in order to detect specific models and their parameters in point clouds.
Some of the models implemented in this library include: lines, planes, cylinders, and spheres. Plane fitting is often applied to the task of detecting common indoor surfaces, such as walls, floors, and table tops. Other models can be used to detect and segment objects with common geometric structures (e.g., fitting a cylinder model to a mug).
The following models are supported:
The following list describes the robust sample consensus estimators implemented:
By default, if you're not familiar with most of the above estimators and how they operate, use RANSAC to test your hypotheses.
Classes | |
class | pcl::LeastMedianSquares< PointT > |
LeastMedianSquares represents an implementation of the LMedS (Least Median of Squares) algorithm. More... |
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class | pcl::MaximumLikelihoodSampleConsensus< PointT > |
MaximumLikelihoodSampleConsensus represents an implementation of the MLESAC (Maximum Likelihood Estimator SAmple Consensus) algorithm, as described in: "MLESAC: A new robust estimator with application to estimating image geometry", P.H.S. More... |
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class | pcl::MEstimatorSampleConsensus< PointT > |
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... |
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class | pcl::ProgressiveSampleConsensus< PointT > |
ProgressiveSampleConsensus represents an implementation of the PROSAC (PROgressive SAmple Consensus) algorithm, as described in: "Matching with PROSAC – Progressive Sample Consensus", Chum, O. More... |
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class | pcl::RandomSampleConsensus< PointT > |
RandomSampleConsensus represents an implementation of the RANSAC (RANdom SAmple Consensus) algorithm, as described in: "Random Sample Consensus: A Paradigm for Model Fitting with Applications to Image Analysis and Automated Cartography", Martin A. More... |
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class | pcl::RandomizedMEstimatorSampleConsensus< PointT > |
RandomizedMEstimatorSampleConsensus represents an implementation of the RMSAC (Randomized M-estimator SAmple Consensus) algorithm, which basically adds a Td,d test (see RandomizedRandomSampleConsensus) to an MSAC estimator (see MEstimatorSampleConsensus). More... |
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class | pcl::RandomizedRandomSampleConsensus< PointT > |
RandomizedRandomSampleConsensus represents an implementation of the RRANSAC (Randomized RANdom SAmple Consensus), as described in "Randomized RANSAC with Td,d test", O. More... |
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class | pcl::SampleConsensus< T > |
SampleConsensus represents the base class. More... |
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class | pcl::SampleConsensusModel< PointT > |
SampleConsensusModel represents the base model class. More... |
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class | pcl::SampleConsensusModelFromNormals< PointT, PointNT > |
SampleConsensusModelFromNormals represents the base model class for models that require the use of surface normals for estimation. More... |
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class | pcl::SampleConsensusModelCircle2D< PointT > |
SampleConsensusModelCircle2D defines a model for 2D circle segmentation on the X-Y plane. More... |
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class | pcl::SampleConsensusModelCircle3D< PointT > |
SampleConsensusModelCircle3D defines a model for 3D circle segmentation. More... |
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class | pcl::SampleConsensusModelCone< PointT, PointNT > |
SampleConsensusModelCone defines a model for 3D cone segmentation. More... |
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class | pcl::SampleConsensusModelCylinder< PointT, PointNT > |
SampleConsensusModelCylinder defines a model for 3D cylinder segmentation. More... |
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class | pcl::SampleConsensusModelLine< PointT > |
SampleConsensusModelLine defines a model for 3D line segmentation. More... |
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class | pcl::SampleConsensusModelNormalParallelPlane< PointT, PointNT > |
SampleConsensusModelNormalParallelPlane defines a model for 3D plane segmentation using additional surface normal constraints. More... |
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class | pcl::SampleConsensusModelNormalPlane< PointT, PointNT > |
SampleConsensusModelNormalPlane defines a model for 3D plane segmentation using additional surface normal constraints. More... |
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class | pcl::SampleConsensusModelNormalSphere< PointT, PointNT > |
SampleConsensusModelNormalSphere defines a model for 3D sphere segmentation using additional surface normal constraints. More... |
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class | pcl::SampleConsensusModelParallelLine< PointT > |
SampleConsensusModelParallelLine defines a model for 3D line segmentation using additional angular constraints. More... |
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class | pcl::SampleConsensusModelParallelPlane< PointT > |
SampleConsensusModelParallelPlane defines a model for 3D plane segmentation using additional angular constraints. More... |
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class | pcl::SampleConsensusModelPerpendicularPlane< PointT > |
SampleConsensusModelPerpendicularPlane defines a model for 3D plane segmentation using additional angular constraints. More... |
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class | pcl::SampleConsensusModelPlane< PointT > |
SampleConsensusModelPlane defines a model for 3D plane segmentation. More... |
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class | pcl::SampleConsensusModelRegistration< PointT > |
SampleConsensusModelRegistration defines a model for Point-To-Point registration outlier rejection. More... |
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class | pcl::SampleConsensusModelRegistration2D< PointT > |
SampleConsensusModelRegistration2D defines a model for Point-To-Point registration outlier rejection using distances between 2D pixels. More... |
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class | pcl::SampleConsensusModelSphere< PointT > |
SampleConsensusModelSphere defines a model for 3D sphere segmentation. More... |
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class | pcl::SampleConsensusModelStick< PointT > |
SampleConsensusModelStick defines a model for 3D stick segmentation. More... |
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Functions | |
template<typename Point > | |
double | pcl::pointToPlaneDistanceSigned (const Point &p, double a, double b, double c, double d) |
Get the distance from a point to a plane (signed) defined by ax+by+cz+d=0. More... |
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template<typename Point > | |
double | pcl::pointToPlaneDistanceSigned (const Point &p, const Eigen::Vector4f &plane_coefficients) |
Get the distance from a point to a plane (signed) defined by ax+by+cz+d=0. More... |
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template<typename Point > | |
double | pcl::pointToPlaneDistance (const Point &p, double a, double b, double c, double d) |
Get the distance from a point to a plane (unsigned) defined by ax+by+cz+d=0. More... |
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template<typename Point > | |
double | pcl::pointToPlaneDistance (const Point &p, const Eigen::Vector4f &plane_coefficients) |
Get the distance from a point to a plane (unsigned) defined by ax+by+cz+d=0. More... |
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| inline |
#include <pcl/sample_consensus/sac_model_plane.h>
Get the distance from a point to a plane (unsigned) defined by ax+by+cz+d=0.
p | a point |
plane_coefficients | the normalized coefficients (a, b, c, d) of a plane |
Definition at line 125 of file sac_model_plane.h.
References pcl::pointToPlaneDistanceSigned().
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#include <pcl/sample_consensus/sac_model_plane.h>
Get the distance from a point to a plane (unsigned) defined by ax+by+cz+d=0.
p | a point |
a | the normalized a coefficient of a plane |
b | the normalized b coefficient of a plane |
c | the normalized c coefficient of a plane |
d | the normalized d coefficient of a plane |
Definition at line 114 of file sac_model_plane.h.
References pcl::pointToPlaneDistanceSigned().
Referenced by pcl::registration::FPCSInitialAlignment< PointSource, PointTarget, pcl::Normal, float >::selectBase().
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#include <pcl/sample_consensus/sac_model_plane.h>
Get the distance from a point to a plane (signed) defined by ax+by+cz+d=0.
p | a point |
plane_coefficients | the normalized coefficients (a, b, c, d) of a plane |
Definition at line 100 of file sac_model_plane.h.
| inline |
#include <pcl/sample_consensus/sac_model_plane.h>
Get the distance from a point to a plane (signed) defined by ax+by+cz+d=0.
p | a point |
a | the normalized a coefficient of a plane |
b | the normalized b coefficient of a plane |
c | the normalized c coefficient of a plane |
d | the normalized d coefficient of a plane |
Definition at line 89 of file sac_model_plane.h.
Referenced by pcl::pointToPlaneDistance(), and pcl::ExtractPolygonalPrismData< PointT >::segment().
© 2009–2012, Willow Garage, Inc.
© 2012–, Open Perception, Inc.
Licensed under the BSD License.
https://pointclouds.org/documentation/group__sample__consensus.html