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A manual LiDAR-Camera calibration tool for ROS 2

Project description

ros2_calib

License Python ROS 2 Ruff PySide6 Publish to PyPI

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              ═══════════════════════════════════════════════════════════
                           Manual LiDAR-Camera Calibration Tool          
                          🎯 Precise • 🚀 Fast • 🔧 Interactive
                             >>>  pip install ros2-calib  <<<
              ═══════════════════════════════════════════════════════════

ros2_calib is a manual LiDAR-Camera calibration tool for ROS 2 that provides an intuitive graphical interface for performing precise extrinsic calibration between LiDAR sensors and cameras. Built with PySide6, it operates on recorded rosbag data without requiring a ROS 2 environment. It supports reading /tf_static transforms from rosbags and allows users to quickly calibrate and export the resulting transformation directly into URDF format. Although it is a manual calibration tool, it is faster to use than a target-based calibration method and is more accurate than automatic methods.

Screenshots

Rosbag Loading and Topic Selection

Topic View

TF Tree Visualization and Initial Transform Selection

Transform View

Calibration Interface

Screenshot

Target Link Selection and URDF Export

Node View

Features

  • 🎯 Interactive Calibration: Point-and-click interface for 2D-3D correspondences
  • 🔄 Real-time Visualization: Live point cloud projection with adjustable parameters
  • 🧠 Smart Algorithms: RANSAC-based PnP solver with Scipy least-squares refinement
  • 🌳 TF Tree Integration: Visual transform chain management and URDF export
  • 🧹 Point Cloud Cleaning: Advanced occlusion removal using the RePLAy algorithm
  • 💾 Offline Processing: Works with .mcap rosbag files - no live ROS 2 required
  • ⌨️ Keyboard Shortcuts: ESC to cancel, Backspace to delete, Enter to confirm
  • 🎨 Easy to UI: Organized sections with responsive design

Installation

Prerequisites

  • Tested with Python 3.12.3 and Ubuntu 24.04
  • Compatible rosbag files in .mcap format

Rosbag Requirements

Your rosbag file (.mcap format) should contain the following topics:

Required:

  • Camera topics: /camera/image_raw or /camera/image_rect
    • sensor_msgs/Image
    • sensor_msgs/CompressedImage
  • Camera info: /camera/camera_info (sensor_msgs/CameraInfo)
  • LiDAR topics: /lidar/points or similar (sensor_msgs/PointCloud2)

Optional but Recommended:

  • Transform topics: /tf_static (tf2_msgs/TFMessage)
    • Contains static transformations between sensor frames
    • If not available, you'll need to manually specify initial transforms

Install from PyPI

pip install ros2-calib

Install from Source

# Clone the repository
git clone https://github.com/ika-rwth-aachen/ros2_calib.git
cd ros2_calib

# Create a virtual environment
python -m venv .venv
source ./venv/bin/activate

# Install in development mode
python -m pip install .

Quick Start

  1. Launch the application:

    ros2_calib
    
  2. Load your rosbag: Click "Load Rosbag" and select your .mcap file

  3. Select topics: Choose your image, point cloud, camera info, and TF topics

  4. Set initial transform: Configure the transformation between LiDAR and camera frames

  5. Create correspondences: Click corresponding points in the 2D image and 3D point cloud

  6. Calibrate: Run the calibration algorithm to get precise extrinsic parameters

  7. Export results: View transformation chains and export URDF-ready transforms

Workflow Overview

┌─────────────────┐    ┌─────────────────┐    ┌─────────────────┐    ┌─────────────────┐
│   Load Rosbag   │ -> │  Select Topics  │ -> │ Set Initial TF  │ -> │   Interactive   │
│   (.mcap file)  │    │  (img/pcd/info) │    │  (manual/auto)  │    │  Calibration    │
└─────────────────┘    └─────────────────┘    └─────────────────┘    └─────────────────┘
                                                                             │
┌─────────────────┐    ┌─────────────────┐    ┌─────────────────┐            │
│   Export URDF   │ <- │ Transform Chain │ <- │ View Results &  │ <----------┘
│   Transform     │    │  Visualization  │    │  TF Integration │
└─────────────────┘    └─────────────────┘    └─────────────────┘

Core Architecture

  • main.py: Application entry point with PySide6 QApplication setup
  • main_window.py: Multi-view interface with stacked widget navigation
  • calibration_widget.py: Interactive calibration view with 2D/3D visualization
  • calibration.py: Core mathematical algorithms using OpenCV and Scipy
  • transformation_widget.py: TF tree visualization using NodeGraphQt
  • bag_handler.py: Rosbag processing and message extraction utilities
  • ros_utils.py: Mock ROS 2 message types for offline operation
  • lidar_cleaner.py: Point cloud cleaning based on RePLAy Algorithm (ECCV 2024)

Algorithm Details

Two-Stage Calibration Process

  1. Initial Estimation: OpenCV's solvePnPRansac for robust pose estimation
  2. Refinement: Scipy's least_squares optimization minimizing reprojection error
  3. Quality Assessment: Automatic outlier detection and correspondence validation

Point Cloud Processing

  • Occlusion Removal: RePLAy algorithm removes projective artifacts
  • Intensity-based Coloring: Configurable colormap visualization
  • Real-time Projection: Live updates during manual adjustments

Configuration

The tool automatically handles:

  • Message Format Detection: Supports Image and CompressedImage types
  • Coordinate Frame Resolution: TF tree parsing and path finding
  • Camera Model Integration: Full camera info and distortion support

Development

Code Quality

# Run linter
ruff check

# Format code
ruff format

Contributing

We welcome contributions! Please see our Contributing Guidelines for details.

  1. Fork the repository
  2. Create your feature branch (git checkout -b feature/AmazingFeature)
  3. Commit your changes (git commit -m 'Add some AmazingFeature')
  4. Push to the branch (git push origin feature/AmazingFeature)
  5. Open a Pull Request

Troubleshooting

Common Issues

  • "No topics found": Ensure your .mcap file contains the required sensor topics
  • "TF tree empty": Check that your rosbag includes transform messages
  • Calibration fails: Verify you have at least 4 correspondence points

Getting Help

  • Open an issue for bug reports

License

This project is licensed under the MIT License - see the LICENSE file for details.

Citation

If you use this tool in your research, please cite:

@software{ros2_calib,
  title={ros2\_calib: Manual LiDAR-Camera Calibration Tool},
  author={Till Beemelmanns},
  year={2025},
  url={https://github.com/ika-rwth-aachen/ros2_calib}
}

Acknowledgments

Point Cloud Cleaning Algorithm

We integrate the RePLAy algorithm for removing projective LiDAR artifacts:

@inproceedings{zhu2024replay,
  title={RePLAy: Remove Projective LiDAR Depthmap Artifacts via Exploiting Epipolar Geometry},
  author={Zhu, Shengjie and Ganesan, Girish Chandar and Kumar, Abhinav and Liu, Xiaoming},
  booktitle={ECCV},
  year={2024},
}

Dependencies

  • PySide6 - Cross-platform GUI toolkit
  • OpenCV - Computer vision algorithms
  • NumPy - Numerical computing
  • SciPy - Scientific computing
  • NodeGraphQt - Node graph visualization
  • rosbags - Pure Python rosbag processing

Notice

[!IMPORTANT]
This repository is open-sourced and maintained by the Institute for Automotive Engineering (ika) at RWTH Aachen University.
We cover a wide variety of research topics within our Vehicle Intelligence & Automated Driving domain.
If you would like to learn more about how we can support your automated driving or robotics efforts, feel free to reach out to us!
:email: opensource@ika.rwth-aachen.de

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