Multi Camera Calibration

Overview

Multi Camera Calibration

  1. 'modules/camera_calibration/app/camera_calibration.cpp' is for calculating extrinsic parameter of each individual cameras.
  2. 'modules/camera_calibration/app/HandEyeCalibration.cpp' is the implmentation of multi-camera hand-eye calibration algorithm.

Usage

  1. Pre-calibrate the intrinsic parameters of each camera with arbitary open-sourced methods, e.g. rosrun camera_calibration cameracalibrator.py ...
  2. Use modified config file (e.g parameter/AGV_calib/extrinsic_17023550.xml), change the input path, pattern size, number of corners, number of images to be extrinsically calibrated and intrinsics. Select the options of using pre-computed camera model or not, and moving cameras or calibration target.
  3. Run: ./camera_calibration settingFilePath SavePath, rename the TrajectoryByCV.txt as you wish.
  4. Formulate the captured trajectory from tracking system as timestamp tx ty tz qx qy qz qw into file TrajectoryByGT.txt:
     double timestamp; // second
     double tx ty tz; // give the position
     double qx qy qz qw; // give the orientation in quaternion format
    
  5. Modify the config file (e.g parameter/multi_extrinsic_handeye.yaml).
     int NumOfMeasures; // How many measurements will be used for calibration
     bool UseMultiCam; // Use our proposed method or existing single hand-eye/robot-world algorithms
     bool HandeyeSolver; // Type of Solver: Shah[0] Li[1]
    
  6. Run: ./handeye_camera_calibration settingFilePath GTFilePath_1 TrajectoryFile_1 GTFilePath_2 TrajectoryFile_2 ...

Video

[Experiments Video](coming soon)

References

[1] Yifu Wang*, Wenqing Jiang*, Kun Huang, S oren Schwertfeger and Laurent Kneip. "Accurate calibration ofmulti-perspective cameras from a generalization of the hand-eye constraint" , 2022 IEEE International conference on robotics and automation (ICRA).

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