We have made the spatial-temporal calibration section of the paper available as open-source, along with a simple example to aid the reader in comprehending the concept of CCA. Furthermore, we have shared code for conducting real-world data experiments.
- numpy==1.21.2
- scipy==1.10.1
- matplotlib==3.5.3
pip3 install -r requirements.txt
-
We provide a simple example for reference:
python3 simple_example.py
-
Real data experiment:
python3 real_data_experiments.py
In real data, our data format is as follows:
vel_x, vel_y, vel_z, timestamp
Note: The real velocity data we provide has been preliminarily time-aligned using brute force search methods.
If our work inspires your research or some part of the codes are useful for your work, please cite our paper: Spatio-Temporal Calibration for Omni-Directional Vehicle-Mounted Event Cameras
@ARTICLE{10404026,
author={Li, Xiao and Zhou, Yi and Guo, Ruibin and Peng, Xin and Zhou, Zongtan and Lu, Huimin},
journal={IEEE Robotics and Automation Letters},
title={Spatio-Temporal Calibration for Omni-Directional Vehicle-Mounted Event Cameras},
year={2024},
volume={9},
number={3},
pages={2311-2318},
keywords={Calibration;Cameras;Correlation;Trajectory;Sensors;Robot vision systems;Task analysis;Calibration and identification;SLAM;event-based vision},
doi={10.1109/LRA.2024.3355765}}
If you have any questions or opinions, feel free to raise them by creating an 'issue' in this repository, or contact us via [email protected] or [email protected]