Point Cloud Library (PCL) 1.12.1
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sac_model_cone.h
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38
39#pragma once
40
41#include <pcl/sample_consensus/sac_model.h>
42#include <pcl/sample_consensus/model_types.h>
44
45namespace pcl
46{
47 /** \brief @b SampleConsensusModelCone defines a model for 3D cone segmentation.
48 * The model coefficients are defined as:
49 * <ul>
50 * <li><b>apex.x</b> : the X coordinate of cone's apex
51 * <li><b>apex.y</b> : the Y coordinate of cone's apex
52 * <li><b>apex.z</b> : the Z coordinate of cone's apex
53 * <li><b>axis_direction.x</b> : the X coordinate of the cone's axis direction
54 * <li><b>axis_direction.y</b> : the Y coordinate of the cone's axis direction
55 * <li><b>axis_direction.z</b> : the Z coordinate of the cone's axis direction
56 * <li><b>opening_angle</b> : the cone's opening angle
57 * </ul>
58 * \author Stefan Schrandt
59 * \ingroup sample_consensus
60 */
61 template <typename PointT, typename PointNT>
63 {
64 public:
66 using SampleConsensusModel<PointT>::input_;
70 using SampleConsensusModelFromNormals<PointT, PointNT>::normals_;
73
77
78 using Ptr = shared_ptr<SampleConsensusModelCone<PointT, PointNT> >;
79 using ConstPtr = shared_ptr<const SampleConsensusModelCone<PointT, PointNT>>;
80
81 /** \brief Constructor for base SampleConsensusModelCone.
82 * \param[in] cloud the input point cloud dataset
83 * \param[in] random if true set the random seed to the current time, else set to 12345 (default: false)
84 */
85 SampleConsensusModelCone (const PointCloudConstPtr &cloud, bool random = false)
86 : SampleConsensusModel<PointT> (cloud, random)
87 , SampleConsensusModelFromNormals<PointT, PointNT> ()
88 , axis_ (Eigen::Vector3f::Zero ())
89 , eps_angle_ (0)
90 , min_angle_ (-std::numeric_limits<double>::max ())
91 , max_angle_ (std::numeric_limits<double>::max ())
92 {
93 model_name_ = "SampleConsensusModelCone";
94 sample_size_ = 3;
95 model_size_ = 7;
96 }
97
98 /** \brief Constructor for base SampleConsensusModelCone.
99 * \param[in] cloud the input point cloud dataset
100 * \param[in] indices a vector of point indices to be used from \a cloud
101 * \param[in] random if true set the random seed to the current time, else set to 12345 (default: false)
102 */
104 const Indices &indices,
105 bool random = false)
106 : SampleConsensusModel<PointT> (cloud, indices, random)
107 , SampleConsensusModelFromNormals<PointT, PointNT> ()
108 , axis_ (Eigen::Vector3f::Zero ())
109 , eps_angle_ (0)
110 , min_angle_ (-std::numeric_limits<double>::max ())
111 , max_angle_ (std::numeric_limits<double>::max ())
112 {
113 model_name_ = "SampleConsensusModelCone";
114 sample_size_ = 3;
115 model_size_ = 7;
116 }
117
118 /** \brief Copy constructor.
119 * \param[in] source the model to copy into this
120 */
122 SampleConsensusModel<PointT> (),
123 SampleConsensusModelFromNormals<PointT, PointNT> (),
124 eps_angle_ (), min_angle_ (), max_angle_ ()
125 {
126 *this = source;
127 model_name_ = "SampleConsensusModelCone";
128 }
129
130 /** \brief Empty destructor */
132
133 /** \brief Copy constructor.
134 * \param[in] source the model to copy into this
135 */
138 {
141 axis_ = source.axis_;
142 eps_angle_ = source.eps_angle_;
143 min_angle_ = source.min_angle_;
144 max_angle_ = source.max_angle_;
145 return (*this);
146 }
147
148 /** \brief Set the angle epsilon (delta) threshold.
149 * \param[in] ea the maximum allowed difference between the cone's axis and the given axis.
150 */
151 inline void
152 setEpsAngle (double ea) { eps_angle_ = ea; }
153
154 /** \brief Get the angle epsilon (delta) threshold. */
155 inline double
156 getEpsAngle () const { return (eps_angle_); }
157
158 /** \brief Set the axis along which we need to search for a cone direction.
159 * \param[in] ax the axis along which we need to search for a cone direction
160 */
161 inline void
162 setAxis (const Eigen::Vector3f &ax) { axis_ = ax; }
163
164 /** \brief Get the axis along which we need to search for a cone direction. */
165 inline Eigen::Vector3f
166 getAxis () const { return (axis_); }
167
168 /** \brief Set the minimum and maximum allowable opening angle for a cone model
169 * given from a user.
170 * \param[in] min_angle the minimum allowable opening angle of a cone model
171 * \param[in] max_angle the maximum allowable opening angle of a cone model
172 */
173 inline void
174 setMinMaxOpeningAngle (const double &min_angle, const double &max_angle)
175 {
176 min_angle_ = min_angle;
177 max_angle_ = max_angle;
178 }
179
180 /** \brief Get the opening angle which we need minimum to validate a cone model.
181 * \param[out] min_angle the minimum allowable opening angle of a cone model
182 * \param[out] max_angle the maximum allowable opening angle of a cone model
183 */
184 inline void
185 getMinMaxOpeningAngle (double &min_angle, double &max_angle) const
186 {
187 min_angle = min_angle_;
188 max_angle = max_angle_;
189 }
190
191 /** \brief Check whether the given index samples can form a valid cone model, compute the model coefficients
192 * from these samples and store them in model_coefficients. The cone coefficients are: apex,
193 * axis_direction, opening_angle.
194 * \param[in] samples the point indices found as possible good candidates for creating a valid model
195 * \param[out] model_coefficients the resultant model coefficients
196 */
197 bool
198 computeModelCoefficients (const Indices &samples,
199 Eigen::VectorXf &model_coefficients) const override;
200
201 /** \brief Compute all distances from the cloud data to a given cone model.
202 * \param[in] model_coefficients the coefficients of a cone model that we need to compute distances to
203 * \param[out] distances the resultant estimated distances
204 */
205 void
206 getDistancesToModel (const Eigen::VectorXf &model_coefficients,
207 std::vector<double> &distances) const override;
208
209 /** \brief Select all the points which respect the given model coefficients as inliers.
210 * \param[in] model_coefficients the coefficients of a cone model that we need to compute distances to
211 * \param[in] threshold a maximum admissible distance threshold for determining the inliers from the outliers
212 * \param[out] inliers the resultant model inliers
213 */
214 void
215 selectWithinDistance (const Eigen::VectorXf &model_coefficients,
216 const double threshold,
217 Indices &inliers) override;
218
219 /** \brief Count all the points which respect the given model coefficients as inliers.
220 *
221 * \param[in] model_coefficients the coefficients of a model that we need to compute distances to
222 * \param[in] threshold maximum admissible distance threshold for determining the inliers from the outliers
223 * \return the resultant number of inliers
224 */
225 std::size_t
226 countWithinDistance (const Eigen::VectorXf &model_coefficients,
227 const double threshold) const override;
228
229
230 /** \brief Recompute the cone coefficients using the given inlier set and return them to the user.
231 * @note: these are the coefficients of the cone model after refinement (e.g. after SVD)
232 * \param[in] inliers the data inliers found as supporting the model
233 * \param[in] model_coefficients the initial guess for the optimization
234 * \param[out] optimized_coefficients the resultant recomputed coefficients after non-linear optimization
235 */
236 void
237 optimizeModelCoefficients (const Indices &inliers,
238 const Eigen::VectorXf &model_coefficients,
239 Eigen::VectorXf &optimized_coefficients) const override;
240
241
242 /** \brief Create a new point cloud with inliers projected onto the cone model.
243 * \param[in] inliers the data inliers that we want to project on the cone model
244 * \param[in] model_coefficients the coefficients of a cone model
245 * \param[out] projected_points the resultant projected points
246 * \param[in] copy_data_fields set to true if we need to copy the other data fields
247 */
248 void
249 projectPoints (const Indices &inliers,
250 const Eigen::VectorXf &model_coefficients,
251 PointCloud &projected_points,
252 bool copy_data_fields = true) const override;
253
254 /** \brief Verify whether a subset of indices verifies the given cone model coefficients.
255 * \param[in] indices the data indices that need to be tested against the cone model
256 * \param[in] model_coefficients the cone model coefficients
257 * \param[in] threshold a maximum admissible distance threshold for determining the inliers from the outliers
258 */
259 bool
260 doSamplesVerifyModel (const std::set<index_t> &indices,
261 const Eigen::VectorXf &model_coefficients,
262 const double threshold) const override;
263
264 /** \brief Return a unique id for this model (SACMODEL_CONE). */
265 inline pcl::SacModel
266 getModelType () const override { return (SACMODEL_CONE); }
267
268 protected:
271
272 /** \brief Get the distance from a point to a line (represented by a point and a direction)
273 * \param[in] pt a point
274 * \param[in] model_coefficients the line coefficients (a point on the line, line direction)
275 */
276 double
277 pointToAxisDistance (const Eigen::Vector4f &pt, const Eigen::VectorXf &model_coefficients) const;
278
279 /** \brief Check whether a model is valid given the user constraints.
280 * \param[in] model_coefficients the set of model coefficients
281 */
282 bool
283 isModelValid (const Eigen::VectorXf &model_coefficients) const override;
284
285 /** \brief Check if a sample of indices results in a good sample of points
286 * indices. Pure virtual.
287 * \param[in] samples the resultant index samples
288 */
289 bool
290 isSampleGood (const Indices &samples) const override;
291
292 private:
293 /** \brief The axis along which we need to search for a cone direction. */
294 Eigen::Vector3f axis_;
295
296 /** \brief The maximum allowed difference between the cone direction and the given axis. */
297 double eps_angle_;
298
299 /** \brief The minimum and maximum allowed opening angles of valid cone model. */
300 double min_angle_;
301 double max_angle_;
302
303 /** \brief Functor for the optimization function */
304 struct OptimizationFunctor : pcl::Functor<float>
305 {
306 /** Functor constructor
307 * \param[in] indices the indices of data points to evaluate
308 * \param[in] estimator pointer to the estimator object
309 */
310 OptimizationFunctor (const pcl::SampleConsensusModelCone<PointT, PointNT> *model, const Indices& indices) :
311 pcl::Functor<float> (indices.size ()), model_ (model), indices_ (indices) {}
312
313 /** Cost function to be minimized
314 * \param[in] x variables array
315 * \param[out] fvec resultant functions evaluations
316 * \return 0
317 */
318 int
319 operator() (const Eigen::VectorXf &x, Eigen::VectorXf &fvec) const
320 {
321 Eigen::Vector4f apex (x[0], x[1], x[2], 0);
322 Eigen::Vector4f axis_dir (x[3], x[4], x[5], 0);
323 float opening_angle = x[6];
324
325 float apexdotdir = apex.dot (axis_dir);
326 float dirdotdir = 1.0f / axis_dir.dot (axis_dir);
327
328 for (int i = 0; i < values (); ++i)
329 {
330 // dist = f - r
331 Eigen::Vector4f pt = (*model_->input_)[indices_[i]].getVector4fMap();
332 pt[3] = 0;
333
334 // Calculate the point's projection on the cone axis
335 float k = (pt.dot (axis_dir) - apexdotdir) * dirdotdir;
336 Eigen::Vector4f pt_proj = apex + k * axis_dir;
337
338 // Calculate the actual radius of the cone at the level of the projected point
339 Eigen::Vector4f height = apex-pt_proj;
340 float actual_cone_radius = tanf (opening_angle) * height.norm ();
341
342 fvec[i] = static_cast<float> (pcl::sqrPointToLineDistance (pt, apex, axis_dir) - actual_cone_radius * actual_cone_radius);
343 }
344 return (0);
345 }
346
347 const pcl::SampleConsensusModelCone<PointT, PointNT> *model_;
348 const Indices &indices_;
349 };
350 };
351}
352
353#ifdef PCL_NO_PRECOMPILE
354#include <pcl/sample_consensus/impl/sac_model_cone.hpp>
355#endif
PointCloud represents the base class in PCL for storing collections of 3D points.
SampleConsensusModelCone defines a model for 3D cone segmentation.
void optimizeModelCoefficients(const Indices &inliers, const Eigen::VectorXf &model_coefficients, Eigen::VectorXf &optimized_coefficients) const override
Recompute the cone coefficients using the given inlier set and return them to the user.
void setAxis(const Eigen::Vector3f &ax)
Set the axis along which we need to search for a cone direction.
SampleConsensusModelCone(const PointCloudConstPtr &cloud, const Indices &indices, bool random=false)
Constructor for base SampleConsensusModelCone.
SampleConsensusModelCone(const SampleConsensusModelCone &source)
Copy constructor.
typename SampleConsensusModel< PointT >::PointCloudConstPtr PointCloudConstPtr
void projectPoints(const Indices &inliers, const Eigen::VectorXf &model_coefficients, PointCloud &projected_points, bool copy_data_fields=true) const override
Create a new point cloud with inliers projected onto the cone model.
pcl::SacModel getModelType() const override
Return a unique id for this model (SACMODEL_CONE).
void getDistancesToModel(const Eigen::VectorXf &model_coefficients, std::vector< double > &distances) const override
Compute all distances from the cloud data to a given cone model.
void selectWithinDistance(const Eigen::VectorXf &model_coefficients, const double threshold, Indices &inliers) override
Select all the points which respect the given model coefficients as inliers.
bool isSampleGood(const Indices &samples) const override
Check if a sample of indices results in a good sample of points indices.
bool computeModelCoefficients(const Indices &samples, Eigen::VectorXf &model_coefficients) const override
Check whether the given index samples can form a valid cone model, compute the model coefficients fro...
bool isModelValid(const Eigen::VectorXf &model_coefficients) const override
Check whether a model is valid given the user constraints.
~SampleConsensusModelCone()
Empty destructor.
SampleConsensusModelCone & operator=(const SampleConsensusModelCone &source)
Copy constructor.
Eigen::Vector3f getAxis() const
Get the axis along which we need to search for a cone direction.
double pointToAxisDistance(const Eigen::Vector4f &pt, const Eigen::VectorXf &model_coefficients) const
Get the distance from a point to a line (represented by a point and a direction).
void setEpsAngle(double ea)
Set the angle epsilon (delta) threshold.
void getMinMaxOpeningAngle(double &min_angle, double &max_angle) const
Get the opening angle which we need minimum to validate a cone model.
double getEpsAngle() const
Get the angle epsilon (delta) threshold.
bool doSamplesVerifyModel(const std::set< index_t > &indices, const Eigen::VectorXf &model_coefficients, const double threshold) const override
Verify whether a subset of indices verifies the given cone model coefficients.
typename SampleConsensusModel< PointT >::PointCloud PointCloud
shared_ptr< SampleConsensusModelCone< PointT, PointNT > > Ptr
void setMinMaxOpeningAngle(const double &min_angle, const double &max_angle)
Set the minimum and maximum allowable opening angle for a cone model given from a user.
SampleConsensusModelCone(const PointCloudConstPtr &cloud, bool random=false)
Constructor for base SampleConsensusModelCone.
typename SampleConsensusModel< PointT >::PointCloudPtr PointCloudPtr
shared_ptr< const SampleConsensusModelCone< PointT, PointNT > > ConstPtr
std::size_t countWithinDistance(const Eigen::VectorXf &model_coefficients, const double threshold) const override
Count all the points which respect the given model coefficients as inliers.
PointCloudNConstPtr normals_
A pointer to the input dataset that contains the point normals of the XYZ dataset.
Definition sac_model.h:670
SampleConsensusModelFromNormals()
Empty constructor for base SampleConsensusModelFromNormals.
Definition sac_model.h:621
double normal_distance_weight_
The relative weight (between 0 and 1) to give to the angular distance (0 to pi/2) between point norma...
Definition sac_model.h:665
SampleConsensusModel represents the base model class.
Definition sac_model.h:70
double radius_min_
The minimum and maximum radius limits for the model.
Definition sac_model.h:564
unsigned int sample_size_
The size of a sample from which the model is computed.
Definition sac_model.h:588
typename PointCloud::ConstPtr PointCloudConstPtr
Definition sac_model.h:73
pcl::PointCloud< PointT > PointCloud
Definition sac_model.h:72
IndicesPtr indices_
A pointer to the vector of point indices to use.
Definition sac_model.h:556
PointCloudConstPtr input_
A boost shared pointer to the point cloud data array.
Definition sac_model.h:553
SampleConsensusModel(bool random=false)
Empty constructor for base SampleConsensusModel.
Definition sac_model.h:84
std::string model_name_
The model name.
Definition sac_model.h:550
unsigned int model_size_
The number of coefficients in the model.
Definition sac_model.h:591
typename PointCloud::Ptr PointCloudPtr
Definition sac_model.h:74
std::vector< double > error_sqr_dists_
A vector holding the distances to the computed model.
Definition sac_model.h:585
Define standard C methods to do distance calculations.
double sqrPointToLineDistance(const Eigen::Vector4f &pt, const Eigen::Vector4f &line_pt, const Eigen::Vector4f &line_dir)
Get the square distance from a point to a line (represented by a point and a direction).
Definition distances.h:75
Definition bfgs.h:10
IndicesAllocator<> Indices
Type used for indices in PCL.
Definition types.h:133
@ SACMODEL_CONE
Definition model_types.h:53
Base functor all the models that need non linear optimization must define their own one and implement...
Definition sac_model.h:679