KdTree represents the base spatial locator class for kd-tree implementations. More...
#include <pcl/kdtree/kdtree.h>
Public Types | |
using | IndicesPtr = shared_ptr< Indices > |
using | IndicesConstPtr = shared_ptr< const Indices > |
using | PointCloud = pcl::PointCloud< PointT > |
using | PointCloudPtr = typename PointCloud::Ptr |
using | PointCloudConstPtr = typename PointCloud::ConstPtr |
using | PointRepresentation = pcl::PointRepresentation< PointT > |
using | PointRepresentationConstPtr = typename PointRepresentation::ConstPtr |
using | Ptr = shared_ptr< KdTree< PointT > > |
using | ConstPtr = shared_ptr< const KdTree< PointT > > |
Public Member Functions | |
KdTree (bool sorted=true) | |
Empty constructor for KdTree. More... |
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virtual void | setInputCloud (const PointCloudConstPtr &cloud, const IndicesConstPtr &indices=IndicesConstPtr()) |
Provide a pointer to the input dataset. More... |
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IndicesConstPtr | getIndices () const |
Get a pointer to the vector of indices used. More... |
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PointCloudConstPtr | getInputCloud () const |
Get a pointer to the input point cloud dataset. More... |
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void | setPointRepresentation (const PointRepresentationConstPtr &point_representation) |
Provide a pointer to the point representation to use to convert points into k-D vectors. More... |
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PointRepresentationConstPtr | getPointRepresentation () const |
Get a pointer to the point representation used when converting points into k-D vectors. More... |
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virtual | ~KdTree () |
Destructor for KdTree. More... |
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virtual int | nearestKSearch (const PointT &p_q, unsigned int k, Indices &k_indices, std::vector< float > &k_sqr_distances) const =0 |
Search for k-nearest neighbors for the given query point. More... |
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virtual int | nearestKSearch (const PointCloud &cloud, int index, unsigned int k, Indices &k_indices, std::vector< float > &k_sqr_distances) const |
Search for k-nearest neighbors for the given query point. More... |
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template<typename PointTDiff > | |
int | nearestKSearchT (const PointTDiff &point, unsigned int k, Indices &k_indices, std::vector< float > &k_sqr_distances) const |
Search for k-nearest neighbors for the given query point. More... |
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virtual int | nearestKSearch (int index, unsigned int k, Indices &k_indices, std::vector< float > &k_sqr_distances) const |
Search for k-nearest neighbors for the given query point (zero-copy). More... |
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virtual int | radiusSearch (const PointT &p_q, double radius, Indices &k_indices, std::vector< float > &k_sqr_distances, unsigned int max_nn=0) const =0 |
Search for all the nearest neighbors of the query point in a given radius. More... |
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virtual int | radiusSearch (const PointCloud &cloud, int index, double radius, Indices &k_indices, std::vector< float > &k_sqr_distances, unsigned int max_nn=0) const |
Search for all the nearest neighbors of the query point in a given radius. More... |
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template<typename PointTDiff > | |
int | radiusSearchT (const PointTDiff &point, double radius, Indices &k_indices, std::vector< float > &k_sqr_distances, unsigned int max_nn=0) const |
Search for all the nearest neighbors of the query point in a given radius. More... |
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virtual int | radiusSearch (int index, double radius, Indices &k_indices, std::vector< float > &k_sqr_distances, unsigned int max_nn=0) const |
Search for all the nearest neighbors of the query point in a given radius (zero-copy). More... |
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virtual void | setEpsilon (float eps) |
Set the search epsilon precision (error bound) for nearest neighbors searches. More... |
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float | getEpsilon () const |
Get the search epsilon precision (error bound) for nearest neighbors searches. More... |
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void | setMinPts (int min_pts) |
Minimum allowed number of k nearest neighbors points that a viable result must contain. More... |
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int | getMinPts () const |
Get the minimum allowed number of k nearest neighbors points that a viable result must contain. More... |
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Protected Member Functions | |
virtual std::string | getName () const =0 |
Class getName method. More... |
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Protected Attributes | |
PointCloudConstPtr | input_ |
The input point cloud dataset containing the points we need to use. More... |
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IndicesConstPtr | indices_ |
A pointer to the vector of point indices to use. More... |
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float | epsilon_ |
Epsilon precision (error bound) for nearest neighbors searches. More... |
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int | min_pts_ |
Minimum allowed number of k nearest neighbors points that a viable result must contain. More... |
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bool | sorted_ |
Return the radius search neighbours sorted. More... |
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PointRepresentationConstPtr | point_representation_ |
For converting different point structures into k-dimensional vectors for nearest-neighbor search. More... |
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KdTree represents the base spatial locator class for kd-tree implementations.
using pcl::KdTree< PointT >::ConstPtr = shared_ptr<const KdTree<PointT> > |
using pcl::KdTree< PointT >::IndicesConstPtr = shared_ptr<const Indices > |
using pcl::KdTree< PointT >::IndicesPtr = shared_ptr<Indices > |
using pcl::KdTree< PointT >::PointCloud = pcl::PointCloud<PointT> |
using pcl::KdTree< PointT >::PointCloudConstPtr = typename PointCloud::ConstPtr |
using pcl::KdTree< PointT >::PointCloudPtr = typename PointCloud::Ptr |
using pcl::KdTree< PointT >::PointRepresentation = pcl::PointRepresentation<PointT> |
using pcl::KdTree< PointT >::PointRepresentationConstPtr = typename PointRepresentation::ConstPtr |
using pcl::KdTree< PointT >::Ptr = shared_ptr<KdTree<PointT> > |
| inline |
| inlinevirtual |
| inline |
| inline |
Get a pointer to the vector of indices used.
Definition at line 93 of file kdtree.h.
Referenced by pcl::extractEuclideanClusters().
| inline |
Get a pointer to the input point cloud dataset.
Definition at line 100 of file kdtree.h.
Referenced by pcl::extractEuclideanClusters().
| inline |
| protectedpure virtual |
Class getName method.
| inline |
| inlinevirtual |
Search for k-nearest neighbors for the given query point.
[in] | cloud | the point cloud data |
[in] | index | a valid index in cloud representing a valid (i.e., finite) query point |
[in] | k | the number of neighbors to search for |
[out] | k_indices | the resultant indices of the neighboring points (must be resized to k a priori!) |
[out] | k_sqr_distances | the resultant squared distances to the neighboring points (must be resized to k a priori!) |
asserts | in debug mode if the index is not between 0 and the maximum number of points |
| pure virtual |
Search for k-nearest neighbors for the given query point.
[in] | p_q | the given query point |
[in] | k | the number of neighbors to search for |
[out] | k_indices | the resultant indices of the neighboring points (must be resized to k a priori!) |
[out] | k_sqr_distances | the resultant squared distances to the neighboring points (must be resized to k a priori!) |
Implemented in pcl::KdTreeFLANN< SceneT >, pcl::KdTreeFLANN< PointTarget >, pcl::KdTreeFLANN< PointT, Dist >, pcl::KdTreeFLANN< PointT >, pcl::KdTreeFLANN< pcl::VFHSignature308 >, pcl::KdTreeFLANN< pcl::PointXYZRGB >, pcl::KdTreeFLANN< pcl::PointXYZLAB >, pcl::KdTreeFLANN< pcl::InterestPoint >, and pcl::KdTreeFLANN< FeatureT >.
Referenced by pcl::KdTree< FeatureT >::nearestKSearch(), and pcl::KdTree< FeatureT >::nearestKSearchT().
| inlinevirtual |
Search for k-nearest neighbors for the given query point (zero-copy).
[in] | index | a valid index representing a valid query point in the dataset given by setInputCloud. If indices were given in setInputCloud, index will be the position in the indices vector. |
[in] | k | the number of neighbors to search for |
[out] | k_indices | the resultant indices of the neighboring points (must be resized to k a priori!) |
[out] | k_sqr_distances | the resultant squared distances to the neighboring points (must be resized to k a priori!) |
asserts | in debug mode if the index is not between 0 and the maximum number of points |
| inline |
Search for k-nearest neighbors for the given query point.
This method accepts a different template parameter for the point type.
[in] | point | the given query point |
[in] | k | the number of neighbors to search for |
[out] | k_indices | the resultant indices of the neighboring points (must be resized to k a priori!) |
[out] | k_sqr_distances | the resultant squared distances to the neighboring points (must be resized to k a priori!) |
Definition at line 172 of file kdtree.h.
Referenced by pcl::getApproximateIndices().
| inlinevirtual |
Search for all the nearest neighbors of the query point in a given radius.
[in] | cloud | the point cloud data |
[in] | index | a valid index in cloud representing a valid (i.e., finite) query point |
[in] | radius | the radius of the sphere bounding all of p_q's neighbors |
[out] | k_indices | the resultant indices of the neighboring points |
[out] | k_sqr_distances | the resultant squared distances to the neighboring points |
[in] | max_nn | if given, bounds the maximum returned neighbors to this value. If max_nn is set to 0 or to a number higher than the number of points in the input cloud, all neighbors in radius will be returned. |
asserts | in debug mode if the index is not between 0 and the maximum number of points |
| pure virtual |
Search for all the nearest neighbors of the query point in a given radius.
[in] | p_q | the given query point |
[in] | radius | the radius of the sphere bounding all of p_q's neighbors |
[out] | k_indices | the resultant indices of the neighboring points |
[out] | k_sqr_distances | the resultant squared distances to the neighboring points |
[in] | max_nn | if given, bounds the maximum returned neighbors to this value. If max_nn is set to 0 or to a number higher than the number of points in the input cloud, all neighbors in radius will be returned. |
Implemented in pcl::KdTreeFLANN< SceneT >, pcl::KdTreeFLANN< PointTarget >, pcl::KdTreeFLANN< PointT, Dist >, pcl::KdTreeFLANN< PointT >, pcl::KdTreeFLANN< pcl::VFHSignature308 >, pcl::KdTreeFLANN< pcl::PointXYZRGB >, pcl::KdTreeFLANN< pcl::PointXYZLAB >, pcl::KdTreeFLANN< pcl::InterestPoint >, and pcl::KdTreeFLANN< FeatureT >.
Referenced by pcl::extractEuclideanClusters(), pcl::KdTree< FeatureT >::radiusSearch(), and pcl::KdTree< FeatureT >::radiusSearchT().
| inlinevirtual |
Search for all the nearest neighbors of the query point in a given radius (zero-copy).
[in] | index | a valid index representing a valid query point in the dataset given by setInputCloud. If indices were given in setInputCloud, index will be the position in the indices vector. |
[in] | radius | the radius of the sphere bounding all of p_q's neighbors |
[out] | k_indices | the resultant indices of the neighboring points |
[out] | k_sqr_distances | the resultant squared distances to the neighboring points |
[in] | max_nn | if given, bounds the maximum returned neighbors to this value. If max_nn is set to 0 or to a number higher than the number of points in the input cloud, all neighbors in radius will be returned. |
asserts | in debug mode if the index is not between 0 and the maximum number of points |
| inline |
Search for all the nearest neighbors of the query point in a given radius.
[in] | point | the given query point |
[in] | radius | the radius of the sphere bounding all of p_q's neighbors |
[out] | k_indices | the resultant indices of the neighboring points |
[out] | k_sqr_distances | the resultant squared distances to the neighboring points |
[in] | max_nn | if given, bounds the maximum returned neighbors to this value. If max_nn is set to 0 or to a number higher than the number of points in the input cloud, all neighbors in radius will be returned. |
| inlinevirtual |
Set the search epsilon precision (error bound) for nearest neighbors searches.
[in] | eps | precision (error bound) for nearest neighbors searches |
Reimplemented in pcl::KdTreeFLANN< PointT, Dist >, pcl::KdTreeFLANN< PointT >, pcl::KdTreeFLANN< pcl::PointXYZRGB >, pcl::KdTreeFLANN< pcl::VFHSignature308 >, pcl::KdTreeFLANN< SceneT >, pcl::KdTreeFLANN< PointTarget >, pcl::KdTreeFLANN< pcl::PointXYZLAB >, pcl::KdTreeFLANN< pcl::InterestPoint >, and pcl::KdTreeFLANN< FeatureT >.
| inlinevirtual |
Provide a pointer to the input dataset.
[in] | cloud | the const boost shared pointer to a PointCloud message |
[in] | indices | the point indices subset that is to be used from cloud - if NULL the whole cloud is used |
Reimplemented in pcl::KdTreeFLANN< PointT, Dist >, pcl::KdTreeFLANN< PointT >, pcl::KdTreeFLANN< pcl::PointXYZRGB >, pcl::KdTreeFLANN< pcl::VFHSignature308 >, pcl::KdTreeFLANN< SceneT >, pcl::KdTreeFLANN< PointTarget >, pcl::KdTreeFLANN< pcl::PointXYZLAB >, pcl::KdTreeFLANN< pcl::InterestPoint >, and pcl::KdTreeFLANN< FeatureT >.
Definition at line 85 of file kdtree.h.
Referenced by pcl::KdTree< FeatureT >::setPointRepresentation().
| inline |
| inline |
Provide a pointer to the point representation to use to convert points into k-D vectors.
[in] | point_representation | the const boost shared pointer to a PointRepresentation |
| protected |
Epsilon precision (error bound) for nearest neighbors searches.
Definition at line 342 of file kdtree.h.
Referenced by pcl::KdTree< FeatureT >::getEpsilon(), and pcl::KdTree< FeatureT >::setEpsilon().
| protected |
A pointer to the vector of point indices to use.
Definition at line 339 of file kdtree.h.
Referenced by pcl::KdTree< FeatureT >::getIndices(), pcl::KdTree< FeatureT >::nearestKSearch(), pcl::KdTree< FeatureT >::radiusSearch(), pcl::KdTree< FeatureT >::setInputCloud(), and pcl::KdTree< FeatureT >::setPointRepresentation().
| protected |
The input point cloud dataset containing the points we need to use.
Definition at line 336 of file kdtree.h.
Referenced by pcl::KdTree< FeatureT >::getInputCloud(), pcl::KdTree< FeatureT >::nearestKSearch(), pcl::KdTree< FeatureT >::radiusSearch(), pcl::KdTree< FeatureT >::setInputCloud(), and pcl::KdTree< FeatureT >::setPointRepresentation().
| protected |
Minimum allowed number of k nearest neighbors points that a viable result must contain.
Definition at line 345 of file kdtree.h.
Referenced by pcl::KdTree< FeatureT >::getMinPts(), and pcl::KdTree< FeatureT >::setMinPts().
| protected |
For converting different point structures into k-dimensional vectors for nearest-neighbor search.
Definition at line 351 of file kdtree.h.
Referenced by pcl::KdTree< FeatureT >::getPointRepresentation(), and pcl::KdTree< FeatureT >::setPointRepresentation().
| protected |
© 2009–2012, Willow Garage, Inc.
© 2012–, Open Perception, Inc.
Licensed under the BSD License.
https://pointclouds.org/documentation/classpcl_1_1_kd_tree.html