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  • PCL超体聚类

    超体聚类是一种图像的分割方法。

    超体(supervoxel)是一种集合,集合的元素是“体”。与体素滤波器中的体类似,其本质是一个个的小方块。与大部分的分割手段不同,超体聚 类的目的并不是分割出某种特定物体,超体是对点云实施过分割(over segmentation),将场景点云化成很多小块,并研究每个小块之间的关系。这种将更小单元合并的分割思路已经出现了有些年份了,在图像分割中,像 素聚类形成超像素,以超像素关系来理解图像已经广为研究。本质上这种方法是对局部的一种总结,纹理,材质,颜色类似的部分会被自动的分割成一块,有利于后 续识别工作。比如对人的识别,如果能将头发,面部,四肢,躯干分开,则能更好的对各种姿态,性别的人进行识别。

    点云和图像不一样,其不存在像素邻接关系。所以,超体聚类之前,必须以八叉树对点云进行划分,获得不同点团之间的邻接关系。与图像相似点云的邻接关系也有很多,如面邻接,线邻接,点邻接。

    超体聚类实际上是一种特殊的区域生长算法,和无限制的生长不同,超体聚类首先需要规律的布置区域生长“晶核”。晶核在空间中实际上是均匀分布的,并指定晶核距离(Rseed)。再指定粒子距离(Rvoxel)。再指定最小晶粒(MOV),过小的晶粒需要融入最近的大晶粒。

    这些基本参数在接下来的参数中会有设置

    #include <pcl/console/parse.h>
    #include <pcl/point_cloud.h>
    #include <pcl/point_types.h>
    #include <pcl/io/pcd_io.h>
    #include <pcl/visualization/pcl_visualizer.h>
    #include <pcl/segmentation/supervoxel_clustering.h>
    
    //VTK include needed for drawing graph lines
    #include <vtkPolyLine.h>
    
    // 数据类型
    typedef pcl::PointXYZRGBA PointT;
    typedef pcl::PointCloud<PointT> PointCloudT;
    typedef pcl::PointNormal PointNT;
    typedef pcl::PointCloud<PointNT> PointNCloudT;
    typedef pcl::PointXYZL PointLT;
    typedef pcl::PointCloud<PointLT> PointLCloudT;
    
    //可视化
    void addSupervoxelConnectionsToViewer (PointT &supervoxel_center,
                                           PointCloudT &adjacent_supervoxel_centers,
                                           std::string supervoxel_name,
                                           boost::shared_ptr<pcl::visualization::PCLVisualizer> & viewer);
    
    
    int
    main (int argc, char ** argv)
    {
    //解析命令行
      if (argc < 2)
      {
        pcl::console::print_error ("Syntax is: %s <pcd-file> 
     "
                                    "--NT Dsables the single cloud transform 
    "
                                    "-v <voxel resolution>
    -s <seed resolution>
    "
                                    "-c <color weight> 
    -z <spatial weight> 
    "
                                    "-n <normal_weight>
    ", argv[0]);
        return (1);
      }
    
      //打开点云
      PointCloudT::Ptr cloud = boost::shared_ptr <PointCloudT> (new PointCloudT ());
      pcl::console::print_highlight ("Loading point cloud...
    ");
      if (pcl::io::loadPCDFile<PointT> (argv[1], *cloud))
      {
        pcl::console::print_error ("Error loading cloud file!
    ");
        return (1);
      }
    
    
      bool disable_transform = pcl::console::find_switch (argc, argv, "--NT");
    
      float voxel_resolution = 0.008f;  //分辨率
      bool voxel_res_specified = pcl::console::find_switch (argc, argv, "-v");
      if (voxel_res_specified)
        pcl::console::parse (argc, argv, "-v", voxel_resolution);
    
      float seed_resolution = 0.1f;
      bool seed_res_specified = pcl::console::find_switch (argc, argv, "-s");
      if (seed_res_specified)
        pcl::console::parse (argc, argv, "-s", seed_resolution);
    
      float color_importance = 0.2f;
      if (pcl::console::find_switch (argc, argv, "-c"))
        pcl::console::parse (argc, argv, "-c", color_importance);
    
      float spatial_importance = 0.4f;
      if (pcl::console::find_switch (argc, argv, "-z"))
        pcl::console::parse (argc, argv, "-z", spatial_importance);
    
      float normal_importance = 1.0f;
      if (pcl::console::find_switch (argc, argv, "-n"))
        pcl::console::parse (argc, argv, "-n", normal_importance);
    
    //如何使用SupervoxelClustering函数
      pcl::SupervoxelClustering<PointT> super (voxel_resolution, seed_resolution);
      if (disable_transform)//如果设置的是参数--NT  就用默认的参数
      super.setUseSingleCameraTransform (false);
      super.setInputCloud (cloud);
      super.setColorImportance (color_importance); //0.2f
      super.setSpatialImportance (spatial_importance); //0.4f
      super.setNormalImportance (normal_importance); //1.0f
    
      std::map <uint32_t, pcl::Supervoxel<PointT>::Ptr > supervoxel_clusters;
    
      pcl::console::print_highlight ("Extracting supervoxels!
    ");
      super.extract (supervoxel_clusters);
      pcl::console::print_info ("Found %d supervoxels
    ", supervoxel_clusters.size ());
    
      boost::shared_ptr<pcl::visualization::PCLVisualizer> viewer (new pcl::visualization::PCLVisualizer ("3D Viewer"));
      viewer->setBackgroundColor (0, 0, 0);
    
      PointCloudT::Ptr voxel_centroid_cloud = super.getVoxelCentroidCloud ();//获得体素中心的点云
      viewer->addPointCloud (voxel_centroid_cloud, "voxel centroids");
      viewer->setPointCloudRenderingProperties (pcl::visualization::PCL_VISUALIZER_POINT_SIZE,2.0, "voxel centroids");     //渲染点云
      viewer->setPointCloudRenderingProperties (pcl::visualization::PCL_VISUALIZER_OPACITY,0.95, "voxel centroids");
    
      PointLCloudT::Ptr labeled_voxel_cloud = super.getLabeledVoxelCloud ();
      viewer->addPointCloud (labeled_voxel_cloud, "labeled voxels");
      viewer->setPointCloudRenderingProperties (pcl::visualization::PCL_VISUALIZER_OPACITY,0.8, "labeled voxels");
    
      PointNCloudT::Ptr sv_normal_cloud = super.makeSupervoxelNormalCloud (supervoxel_clusters);
    
      //We have this disabled so graph is easy to see, uncomment to see supervoxel normals
      //viewer->addPointCloudNormals<PointNormal> (sv_normal_cloud,1,0.05f, "supervoxel_normals");
    
      pcl::console::print_highlight ("Getting supervoxel adjacency
    ");
    
      std::multimap<uint32_t, uint32_t> supervoxel_adjacency;
      super.getSupervoxelAdjacency (supervoxel_adjacency);
      //To make a graph of the supervoxel adjacency, we need to iterate through the supervoxel adjacency multimap
      //为了使整个超体形成衣服图,我们需要遍历超体的每个临近的个体
      std::multimap<uint32_t,uint32_t>::iterator label_itr = supervoxel_adjacency.begin ();
      for ( ; label_itr != supervoxel_adjacency.end (); )
      {
        //First get the label
        uint32_t supervoxel_label = label_itr->first;
        //Now get the supervoxel corresponding to the label
        pcl::Supervoxel<PointT>::Ptr supervoxel = supervoxel_clusters.at (supervoxel_label);
    
        //Now we need to iterate through the adjacent supervoxels and make a point cloud of them
        PointCloudT adjacent_supervoxel_centers;
        std::multimap<uint32_t,uint32_t>::iterator adjacent_itr = supervoxel_adjacency.equal_range (supervoxel_label).first;
        for ( ; adjacent_itr!=supervoxel_adjacency.equal_range (supervoxel_label).second; ++adjacent_itr)
        {
          pcl::Supervoxel<PointT>::Ptr neighbor_supervoxel = supervoxel_clusters.at (adjacent_itr->second);
          adjacent_supervoxel_centers.push_back (neighbor_supervoxel->centroid_);
        }
        //Now we make a name for this polygon
        std::stringstream ss;
        ss << "supervoxel_" << supervoxel_label;
        //This function is shown below, but is beyond the scope of this tutorial - basically it just generates a "star" polygon mesh from the points given
    //从给定的点云中生成一个星型的多边形,
        addSupervoxelConnectionsToViewer (supervoxel->centroid_, adjacent_supervoxel_centers, ss.str (), viewer);
        //Move iterator forward to next label
        label_itr = supervoxel_adjacency.upper_bound (supervoxel_label);
      }
    
      while (!viewer->wasStopped ())
      {
        viewer->spinOnce (100);
      }
      return (0);
    }
    
    //VTK可视化构成的聚类图
    void
    addSupervoxelConnectionsToViewer (PointT &supervoxel_center,
                                      PointCloudT &adjacent_supervoxel_centers,
                                      std::string supervoxel_name,
                                      boost::shared_ptr<pcl::visualization::PCLVisualizer> & viewer)
    {
      vtkSmartPointer<vtkPoints> points = vtkSmartPointer<vtkPoints>::New ();
      vtkSmartPointer<vtkCellArray> cells = vtkSmartPointer<vtkCellArray>::New ();
      vtkSmartPointer<vtkPolyLine> polyLine = vtkSmartPointer<vtkPolyLine>::New ();
    
      //Iterate through all adjacent points, and add a center point to adjacent point pair
      PointCloudT::iterator adjacent_itr = adjacent_supervoxel_centers.begin ();
      for ( ; adjacent_itr != adjacent_supervoxel_centers.end (); ++adjacent_itr)
      {
        points->InsertNextPoint (supervoxel_center.data);
        points->InsertNextPoint (adjacent_itr->data);
      }
      // Create a polydata to store everything in
      vtkSmartPointer<vtkPolyData> polyData = vtkSmartPointer<vtkPolyData>::New ();
      // Add the points to the dataset
      polyData->SetPoints (points);
      polyLine->GetPointIds  ()->SetNumberOfIds(points->GetNumberOfPoints ());
      for(unsigned int i = 0; i < points->GetNumberOfPoints (); i++)
        polyLine->GetPointIds ()->SetId (i,i);
      cells->InsertNextCell (polyLine);
      // Add the lines to the dataset
      polyData->SetLines (cells);
      viewer->addModelFromPolyData (polyData,supervoxel_name);
    }

    可执行文件生成后的图像显示如下

    当然也可以自己设定参数生成自己想要的效果。同时在不同的场景中,使用的参数是十分重要的,

    只是先了解超体的概念,如果想应用到实际的应用中,还需要很多其他的知识 ,所以这里只是基本的学习

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  • 原文地址:https://www.cnblogs.com/li-yao7758258/p/6628175.html
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