• opencv之投影点云到图像中


    背景:读取一张照片和一张pcd, 根据标定的内参和外参,将点云投影到图像中,用于判断雷达相机外参标定是否准确。

    #include <opencv2/core/core.hpp>
    #include <opencv2/imgproc/imgproc.hpp>
    #include <opencv2/calib3d/calib3d.hpp>
    #include <opencv2/highgui/highgui.hpp>
    
    #include <pcl/point_types.h>
    #include <pcl/point_cloud.h>
    #include <pcl/io/pcd_io.h>
    #include <pcl/filters/filter.h>
    
    #include <iostream>
    
    int main(int argc, char** argv)
    {
      // read a image and a pcd
      cv::Mat image_origin = cv::imread("/media/data/temp/image/0.jpeg");
      pcl::PointCloud<pcl::PointXYZI>::Ptr cloud_origin(new pcl::PointCloud<pcl::PointXYZI>);
      pcl::PointCloud<pcl::PointXYZI>::Ptr cloud_withoutNAN(new pcl::PointCloud<pcl::PointXYZI>);
      pcl::io::loadPCDFile<pcl::PointXYZI> ("/media/liuzhiyang/data/temp/pcd/0.pcd", *cloud_origin);
      std::vector<int> indices;
      pcl::removeNaNFromPointCloud(*cloud_origin, *cloud_withoutNAN, indices);
    
      std::vector<cv::Point3f> pts_3d;
      for (size_t i = 0; i < cloud_withoutNAN->size(); ++i)
      {
        pcl::PointXYZI point_3d = cloud_withoutNAN->points[i];
        if (point_3d.x > 2 && point_3d.x < 3 && point_3d.y > -10 && point_3d.y < 10)
        {
          pts_3d.emplace_back(cv::Point3f(point_3d.x, point_3d.y, point_3d.z));
        }
      }
    
      // using iterator
    
      // read calibration parameter
      double fx = 1.0757955405501191e+03, fy = 1.0762345733674481e+03;
      double cx = 9.6249394948422218e+02, cy = 6.1957628038839391e+02;
      double k1 = -1.1995613777994101e-01, k2 = 8.6245969435724004e-02, k3 = -2.6778267188218002e-02;
      double p1 = 1.0621717082800000e-03, p2 = 5.4033385896265832e-04;
      cv::Mat camera_matrix = (cv::Mat_<double>(3, 3) << fx, 0.0, cx, 0.0, fy, cy, 0.0, 0.0, 1.0);
      cv::Mat distortion_coeff = (cv::Mat_<double>(1, 5) << k1, k2, p1, p2, k3); 
      cv::Mat r_vec = (cv::Mat_<double>(3, 1) << 1.29949179254383, -1.113823535227475, 1.108412921650477);
      cv::Mat t_vec = (cv::Mat_<double>(3, 1) << -0.370740907093656, -0.2397403632299851, -0.0407927826288379);
      
      // project 3d-points into image view
      std::vector<cv::Point2f> pts_2d;
      cv::projectPoints(pts_3d, r_vec, t_vec, camera_matrix, distortion_coeff, pts_2d);
      cv::Mat image_project = image_origin.clone();
      int image_rows = image_origin.rows;
      int image_cols = image_origin.cols;
    
      for (size_t i = 0; i < pts_2d.size(); ++i)
      {
        cv::Point2f point_2d = pts_2d[i];
        if (point_2d.x < 0 || point_2d.x > image_cols || point_2d.y < 0 || point_2d.y > image_rows)
        {
          continue;
        }
        else
        {
          image_project.at<cv::Vec3b>(point_2d.y, point_2d.x)[0] = 0;
          image_project.at<cv::Vec3b>(point_2d.y, point_2d.x)[1] = 0;
          image_project.at<cv::Vec3b>(point_2d.y, point_2d.x)[2] = 255;
        }
        
        if (point_2d.x > 0 && point_2d.x < image_cols && point_2d.y > 0 && point_2d.y < image_rows)
        {
          image_project.at<cv::Vec3b>(point_2d.y, point_2d.x)[0] = 0;
          image_project.at<cv::Vec3b>(point_2d.y, point_2d.x)[1] = 0;
          image_project.at<cv::Vec3b>(point_2d.y, point_2d.x)[2] = 255;
        } 
        else
        {
          continue;
        }  
      }
    
      cv::imshow("origin image", image_origin);
      cv::imshow("project image", image_project);
      cv::imwrite("/media/data/temp/image_origin.jpg", image_origin);
      cv::imwrite("/media/data/temp/image_project.jpg", image_project);
      cv::waitKey(10000);
    
      return 0;
    }
    

    后记:投影部分区域的点云到图像中,不要全部都投。

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  • 原文地址:https://www.cnblogs.com/ChrisCoder/p/10088462.html
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