CGAL 4.8.1 - Point Set Shape Detection
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#include <CGAL/Shape_detection_3/Efficient_RANSAC.h>
A shape detection algorithm using a RANSAC method.
Given a point set in 3D space with unoriented normals, sampled on surfaces, this class enables to detect subsets of connected points lying on the surface of primitive shapes. Each input point is assigned to either none or at most one detected primitive shape. The implementation follows [1].
Traits | a model of EfficientRANSACTraits |
Classes | |
struct | Parameters |
Parameters for the shape detection algorithm. More... | |
Types | |
typedef Traits::Input_range | Input_range |
Model of the concept Range with random access iterators, providing input points and normals through the following two property maps. More... | |
typedef Traits::Point_map | Point_map |
property map to access the location of an input point. | |
typedef Traits::Normal_map | Normal_map |
property map to access the unoriented normal of an input point | |
typedef Shape_base< Traits > | Shape |
shape type. | |
typedef unspecified_type | Shape_range |
An Iterator_range with a bidirectional constant iterator type with value type boost::shared_ptr<Shape> . | |
typedef unspecified_type | Point_index_range |
An Iterator_range with a bidirectional iterator with value type std::size_t as indices into the input data that has not been assigned to a shape. More... | |
Initialization | |
Efficient_RANSAC (Traits t=Traits()) | |
Constructs an empty shape detection engine. | |
~Efficient_RANSAC () | |
Releases all memory allocated by this instances including shapes. | |
const Traits & | traits () const |
Retrieves the traits class. | |
void | set_input (Input_range &input_range, Point_map point_map=Point_map(), Normal_map normal_map=Normal_map()) |
Sets the input data. More... | |
template<class Shape_type > | |
void | add_shape_factory () |
Registers in the detection engine the shape type ShapeType that must inherit from Shape_base . More... | |
bool | preprocess () |
Constructs internal data structures required for the shape detection. More... | |
Memory Management | |
void | clear_shape_factories () |
Removes all shape types registered for detection. | |
void | clear_octrees () |
Frees memory allocated for the internal search structures but keeps the detected shapes. More... | |
void | clear () |
Calls clear_octrees() and removes all detected shapes. More... | |
Detection | |
bool | detect (const Parameters &options=Parameters()) |
Performs the shape detection. More... | |
Access | |
Shape_range | shapes () const |
Returns an Iterator_range with a bidirectional iterator with value type boost::shared_ptr<Shape> over the detected shapes in the order of detection. More... | |
std::size_t | number_of_unassigned_points () |
Number of points not assigned to a shape. | |
Point_index_range | indices_of_unassigned_points () |
Returns an Iterator_range with a bidirectional iterator with value type std::size_t as indices into the input data that has not been assigned to a shape. | |
typedef Traits::Input_range CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::Input_range |
Model of the concept Range
with random access iterators, providing input points and normals through the following two property maps.
typedef unspecified_type CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::Point_index_range |
An Iterator_range
with a bidirectional iterator with value type std::size_t
as indices into the input data that has not been assigned to a shape.
As this range class has no size()
method, the method Efficient_RANSAC::number_of_unassigned_points()
is provided.
void CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::add_shape_factory | ( | ) |
Registers in the detection engine the shape type ShapeType
that must inherit from Shape_base
.
For example, for registering a plane as detectable shape you should call ransac.add_shape_factory< Shape_detection_3::Plane<Traits> >();
. Note that if your call is within a template, you should add the template
keyword just before add_shape_factory
: ransac.template add_shape_factory< Shape_detection_3::Plane<Traits> >();
.
void CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::clear | ( | ) |
Calls clear_octrees()
and removes all detected shapes.
All internal structures are cleaned, including formerly detected shapes. Thus iterators and ranges retrieved through shapes()
and indices_of_unassigned_points()
are invalidated.
void CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::clear_octrees | ( | ) |
Frees memory allocated for the internal search structures but keeps the detected shapes.
It invalidates the range retrieved using unassigned_points()
.
bool CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::detect | ( | const Parameters & | options = Parameters() ) |
Performs the shape detection.
Shape types considered during the detection are those registered using add_shape_factory()
.
true
if shape types have been registered and input data has been set. Otherwise, false
is returned. options | Parameters for shape detection. |
bool CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::preprocess | ( | ) |
Constructs internal data structures required for the shape detection.
These structures only depend on the input data, i.e. the points and normal vectors. This method is called by detect()
, if it was not called before by the user.
void CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::set_input | ( | Input_range & | input_range, |
Point_map | point_map = Point_map() , |
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Normal_map | normal_map = Normal_map() |
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) |
Sets the input data.
The range must stay valid until the detection has been performed and the access to the results is no longer required. The data in the input is reordered by the methods detect()
and preprocess()
. This function first calls clear()
.
input_range | range of input data. |
point_map | property map to access the position of an input point. |
normal_map | property map to access the normal of an input point. |
Shape_range CGAL::Shape_detection_3::Efficient_RANSAC< Traits >::shapes | ( | ) | const |
Returns an Iterator_range
with a bidirectional iterator with value type boost::shared_ptr<Shape>
over the detected shapes in the order of detection.
Depending on the chosen probability for the detection, the shapes are ordered with decreasing size.