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  • Filter

    PassThrough

    perform a simple filtering along a specified dimension – that is, cut off values that outside a given user range.

    VoxelGrid

    对点云进行三维体素划分,然后对点云进行下采样,即每个体素内的所有点通过其质心代替。

    StatisticalOutlierRemoval

    /** rief @b StatisticalOutlierRemoval uses point neighborhood statistics to filter outlier data.
    * details 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.
    * <br>
    * 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.
    * <br><br>
    * For more information:
    * - R. B. Rusu, Z. C. Marton, N. Blodow, M. Dolha, and M. Beetz.
    * Towards 3D Point Cloud Based Object Maps for Household Environments
    * Robotics and Autonomous Systems Journal (Special Issue on Semantic Knowledge), 2008.
    * <br><br>
    * Usage example:
    * code
    * pcl::StatisticalOutlierRemoval<PointType> sorfilter (true); // Initializing with true will allow us to extract the removed indices
    * sorfilter.setInputCloud (cloud_in);
    * sorfilter.setMeanK (8);
    * sorfilter.setStddevMulThresh (1.0);
    * sorfilter.filter (*cloud_out);
    * // The resulting cloud_out contains all points of cloud_in that have an average distance to their 8 nearest neighbors that is below the computed threshold
    * // Using a standard deviation multiplier of 1.0 and assuming the average distances are normally distributed there is a 84.1% chance that a point will be an inlier
    * indices_rem = sorfilter.getRemovedIndices ();
    * // The indices_rem array indexes all points of cloud_in that are outliers
    * endcode
    * author Radu Bogdan Rusu
    * ingroup filters
    */

     ProjectInliers

     uses a model and a set of inlier indices from a PointCloud to project them into a separate PointCloud

    // Create a set of planar coefficients with X=Y=0,Z=1
      pcl::ModelCoefficients::Ptr coefficients (new pcl::ModelCoefficients ());
      coefficients->values.resize (4);
      coefficients->values[0] = coefficients->values[1] = 0;
      coefficients->values[2] = 1.0;
      coefficients->values[3] = 0;
    
      // Create the filtering object
      pcl::ProjectInliers<pcl::PointXYZ> proj;
      proj.setModelType (pcl::SACMODEL_PLANE);
      proj.setInputCloud (cloud);
      proj.setModelCoefficients (coefficients);
      proj.filter (*cloud_projected);

     ExtractIndices

    抽取点云中指定索引的点集

     1   pcl::ModelCoefficients::Ptr coefficients (new pcl::ModelCoefficients ());
     2   pcl::PointIndices::Ptr inliers (new pcl::PointIndices ());
     3 // Create the segmentation object
     4   pcl::SACSegmentation<pcl::PointXYZ> seg;
     5   // Optional
     6   seg.setOptimizeCoefficients (true);
     7   // Mandatory
     8   seg.setModelType (pcl::SACMODEL_PLANE);
     9   seg.setMethodType (pcl::SAC_RANSAC);
    10   seg.setMaxIterations (1000);
    11   seg.setDistanceThreshold (0.01);
    12 // Segment the largest planar component from the remaining cloud
    13     seg.setInputCloud (cloud_filtered);
    14     seg.segment (*inliers, *coefficients);
    15 
    16 // Create the filtering object
    17   pcl::ExtractIndices<pcl::PointXYZ> extract;
    18 // Extract the inliers
    19     extract.setInputCloud (cloud_filtered);
    20     extract.setIndices (inliers);
    21     extract.setNegative (false);
    22     extract.filter (*cloud_p);
    View Code

     RadiusOutlierRemoval

    filter removes all indices in it’s input cloud that don’t have at least specified number of neighbors within a certain radius.

    ConditionalRemoval

    根据指定的条件进行滤波

     1 // build the condition
     2         pcl::ConditionAnd<pcl::PointXYZ>::Ptr range_cond(new pcl::ConditionAnd<pcl::PointXYZ>());
     3         range_cond->addComparison(pcl::FieldComparison<pcl::PointXYZ>::ConstPtr(new
     4         pcl::FieldComparison<pcl::PointXYZ>("z", pcl::ComparisonOps::GT, 0.0)));
     5         range_cond->addComparison(pcl::FieldComparison<pcl::PointXYZ>::ConstPtr(new
     6         pcl::FieldComparison<pcl::PointXYZ>("z", pcl::ComparisonOps::LT, 0.8)));
     7         // build the filter
     8         pcl::ConditionalRemoval<pcl::PointXYZ> condrem;
     9         condrem.setCondition(range_cond);
    10         condrem.setInputCloud(cloud);
    11         condrem.setKeepOrganized(true);
    12         // apply filter
    13         condrem.filter(*cloud_filtered);
    View Code
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  • 原文地址:https://www.cnblogs.com/larry-xia/p/11004613.html
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