|
Point Cloud Library (PCL)
1.6.0
|
StatisticalOutlierRemoval uses point neighborhood statistics to filter outlier data. More...
#include <pcl/filters/statistical_outlier_removal.h>


Public Types | |
| typedef boost::shared_ptr < Filter< PointT > > | Ptr |
| typedef boost::shared_ptr < const Filter< PointT > > | ConstPtr |
| typedef PointIndices::Ptr | PointIndicesPtr |
| typedef PointIndices::ConstPtr | PointIndicesConstPtr |
Public Member Functions | |
| StatisticalOutlierRemoval (bool extract_removed_indices=false) | |
| Constructor. More... | |
| void | setMeanK (int nr_k) |
| Set the number of nearest neighbors to use for mean distance estimation. More... | |
| int | getMeanK () |
| Get the number of nearest neighbors to use for mean distance estimation. More... | |
| void | setStddevMulThresh (double stddev_mult) |
| Set the standard deviation multiplier for the distance threshold calculation. More... | |
| double | getStddevMulThresh () |
| Get the standard deviation multiplier for the distance threshold calculation. More... | |
| void | filter (PointCloud &output) |
| void | filter (std::vector< int > &indices) |
| Calls the filtering method and returns the filtered point cloud indices. More... | |
| void | setNegative (bool negative) |
| Set whether the regular conditions for points filtering should apply, or the inverted conditions. More... | |
| bool | getNegative () |
| Get whether the regular conditions for points filtering should apply, or the inverted conditions. More... | |
| void | setKeepOrganized (bool keep_organized) |
| Set whether the filtered points should be kept and set to the value given through setUserFilterValue (default: NaN), or removed from the PointCloud, thus potentially breaking its organized structure. More... | |
| bool | getKeepOrganized () |
| Get whether the filtered points should be kept and set to the value given through setUserFilterValue (default = NaN), or removed from the PointCloud, thus potentially breaking its organized structure. More... | |
| void | setUserFilterValue (float value) |
| Provide a value that the filtered points should be set to instead of removing them. More... | |
| IndicesConstPtr const | getRemovedIndices () |
| Get the point indices being removed. More... | |
| virtual void | setInputCloud (const PointCloudConstPtr &cloud) |
| Provide a pointer to the input dataset. More... | |
| PointCloudConstPtr const | getInputCloud () |
| Get a pointer to the input point cloud dataset. More... | |
| void | setIndices (const IndicesPtr &indices) |
| Provide a pointer to the vector of indices that represents the input data. More... | |
| void | setIndices (const IndicesConstPtr &indices) |
| Provide a pointer to the vector of indices that represents the input data. More... | |
| void | setIndices (const PointIndicesConstPtr &indices) |
| Provide a pointer to the vector of indices that represents the input data. More... | |
| void | setIndices (size_t row_start, size_t col_start, size_t nb_rows, size_t nb_cols) |
| Set the indices for the points laying within an interest region of the point cloud. More... | |
| IndicesPtr const | getIndices () |
| Get a pointer to the vector of indices used. More... | |
| const PointT & | operator[] (size_t pos) |
| Override PointCloud operator[] to shorten code. More... | |
StatisticalOutlierRemoval uses point neighborhood statistics to filter outlier data.
The algorithm iterates through the entire input twice: During the first iteration it will compute the average distance that each point has to its nearest k neighbors. The value of k can be set using setMeanK(). Next, the mean and standard deviation of all these distances are computed in order to determine a distance threshold. The distance threshold will be equal to: mean + stddev_mult * stddev. The multiplier for the standard deviation can be set using setStddevMulThresh(). During the next iteration the points will be classified as inlier or outlier if their average neighbor distance is below or above this threshold respectively.
The neighbors found for each query point will be found amongst ALL points of setInputCloud(), not just those indexed by setIndices(). The setIndices() method only indexes the points that will be iterated through as search query points.
For more information:
Definition at line 81 of file statistical_outlier_removal.h.
|
inherited |
|
inherited |
Definition at line 79 of file pcl_base.h.
|
inherited |
Definition at line 78 of file pcl_base.h.
|
inherited |
|
inline |
Constructor.
| [in] | extract_removed_indices | Set to true if you want to be able to extract the indices of points being removed (default = false). |
Definition at line 93 of file statistical_outlier_removal.h.
|
inlineinherited |
Definition at line 92 of file filter_indices.h.
|
inlineinherited |
Calls the filtering method and returns the filtered point cloud indices.
| [out] | indices | the resultant filtered point cloud indices |
Definition at line 101 of file filter_indices.h.
|
inlineinherited |
Get a pointer to the vector of indices used.
Definition at line 190 of file pcl_base.h.
|
inlineinherited |
Get a pointer to the input point cloud dataset.
Definition at line 107 of file pcl_base.h.
|
inlineinherited |
Get whether the filtered points should be kept and set to the value given through setUserFilterValue (default = NaN), or removed from the PointCloud, thus potentially breaking its organized structure.
Definition at line 145 of file filter_indices.h.
|
inline |
Get the number of nearest neighbors to use for mean distance estimation.
Definition at line 115 of file statistical_outlier_removal.h.
|
inlineinherited |
Get whether the regular conditions for points filtering should apply, or the inverted conditions.
Definition at line 125 of file filter_indices.h.
|
inlineinherited |
Get the point indices being removed.
Definition at line 164 of file filter_indices.h.
|
inline |
Get the standard deviation multiplier for the distance threshold calculation.
The distance threshold will be equal to: mean + stddev_mult * stddev. Points will be classified as inlier or outlier if their average neighbor distance is below or above this threshold respectively.
| [in] | stddev_mult | The standard deviation multiplier. |
Definition at line 137 of file statistical_outlier_removal.h.
|
inlineinherited |
Override PointCloud operator[] to shorten code.
| pos | position in indices_ vector |
Definition at line 197 of file pcl_base.h.
|
inlineinherited |
Provide a pointer to the vector of indices that represents the input data.
| indices | a pointer to the vector of indices that represents the input data. |
Definition at line 113 of file pcl_base.h.
|
inlineinherited |
Provide a pointer to the vector of indices that represents the input data.
| indices | a pointer to the vector of indices that represents the input data. |
Definition at line 124 of file pcl_base.h.
|
inlineinherited |
Provide a pointer to the vector of indices that represents the input data.
| indices | a pointer to the vector of indices that represents the input data. |
Definition at line 135 of file pcl_base.h.
|
inlineinherited |
Set the indices for the points laying within an interest region of the point cloud.
| row_start | the offset on rows |
| col_start | the offset on columns |
| nb_rows | the number of rows to be considered row_start included |
| nb_cols | the number of columns to be considered col_start included |
Definition at line 151 of file pcl_base.h.
|
inlinevirtualinherited |
Provide a pointer to the input dataset.
| cloud | the const boost shared pointer to a PointCloud message |
Reimplemented in pcl::PCA< PointT >.
Definition at line 103 of file pcl_base.h.
|
inlineinherited |
Set whether the filtered points should be kept and set to the value given through setUserFilterValue (default: NaN), or removed from the PointCloud, thus potentially breaking its organized structure.
| [in] | keep_organized | false = remove points (default), true = redefine points, keep structure. |
Definition at line 135 of file filter_indices.h.
|
inline |
Set the number of nearest neighbors to use for mean distance estimation.
| [in] | nr_k | The number of points to use for mean distance estimation. |
Definition at line 106 of file statistical_outlier_removal.h.
|
inlineinherited |
Set whether the regular conditions for points filtering should apply, or the inverted conditions.
| [in] | negative | false = normal filter behavior (default), true = inverted behavior. |
Definition at line 116 of file filter_indices.h.
|
inline |
Set the standard deviation multiplier for the distance threshold calculation.
The distance threshold will be equal to: mean + stddev_mult * stddev. Points will be classified as inlier or outlier if their average neighbor distance is below or above this threshold respectively.
| [in] | stddev_mult | The standard deviation multiplier. |
Definition at line 126 of file statistical_outlier_removal.h.
|
inlineinherited |
Provide a value that the filtered points should be set to instead of removing them.
Used in conjunction with setKeepOrganized ().
| [in] | value | the user given value that the filtered point dimensions should be set to (default = NaN). |
Definition at line 155 of file filter_indices.h.
1.8.4