CROON: Automatic Multi-LiDAR Calibration and Refinement Method in Road
Scene
- URL: http://arxiv.org/abs/2203.03182v1
- Date: Mon, 7 Mar 2022 07:36:31 GMT
- Title: CROON: Automatic Multi-LiDAR Calibration and Refinement Method in Road
Scene
- Authors: Pengjin Wei, Guohang Yan, Yikang Li, Kun Fang, Wei Liu, Xinyu Cai, Jie
Yang
- Abstract summary: CROON (automatiC multi-LiDAR CalibratiOn and Refinement method in rOad sceNe) is a two-stage method including rough and refinement calibration.
Results on real-world and simulated data sets demonstrate the reliability and accuracy of our method.
- Score: 15.054452813705112
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sensor-based environmental perception is a crucial part of the autonomous
driving system. In order to get an excellent perception of the surrounding
environment, an intelligent system would configure multiple LiDARs (3D Light
Detection and Ranging) to cover the distant and near space of the car. The
precision of perception relies on the quality of sensor calibration. This
research aims at developing an accurate, automatic, and robust calibration
strategy for multiple LiDAR systems in the general road scene. We thus propose
CROON (automatiC multi-LiDAR CalibratiOn and Refinement method in rOad sceNe),
a two-stage method including rough and refinement calibration. The first stage
can calibrate the sensor from an arbitrary initial pose, and the second stage
is able to precisely calibrate the sensor iteratively. Specifically, CROON
utilize the nature characteristics of road scene so that it is independent and
easy to apply in large-scale conditions. Experimental results on real-world and
simulated data sets demonstrate the reliability and accuracy of our method. All
the related data sets and codes are open-sourced on the Github website
https://github.com/OpenCalib/LiDAR2LiDAR.
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