Title :
Two-axis scanning lidar geometric calibration using intensity imagery and distortion mapping
Author :
Hang Dong ; Anderson, S. ; Barfoot, Timothy D.
Author_Institution :
Autonomous Space Robot. Lab., Univ. of Toronto, Toronto, ON, Canada
Abstract :
Accurate pose estimation relies on high-quality sensor measurements. Due to manufacturing tolerance, every sensor (camera or lidar) needs to be individually calibrated. Feature-based techniques using simple calibration targets (e.g., a checkerboard pattern) have become the dominant approach to camera sensor calibration. Existing lidar calibration methods require a controlled environment (e.g., a space of known dimension) or specific configurations of supporting hardware (e.g., coupled with GPS/IMU). Leveraging recent state estimation developments based on lidar intensity imagery, this paper presents a calibration procedure for a two-axis scanning lidar using only an inexpensive checkerboard calibration target. In addition, the proposed method generalizes a two-axis scanning lidar as an idealized spherical camera with additive measurement distortions. Conceptually, this is not unlike normal camera calibration in which an arbitrary camera is modelled as an idealized projective (pinhole) camera with tangential and radial distortions. The resulting calibration method, we believe, can be readily applied to a variety of two-axis scanning lidars. We present the measurement improvement quantitatively, as well as the impact of calibration on a 1.1-km visual odometry estimate.
Keywords :
calibration; cameras; distance measurement; feature extraction; optical radar; pose estimation; state estimation; additive measurement distortions; camera sensor calibration; distance 1.1 km; distortion mapping; feature-based techniques; high-quality sensor measurements; idealized spherical camera; inexpensive checkerboard calibration target; intensity imagery; lidar intensity imagery; manufacturing tolerance; pose estimation; state estimation; two-axis scanning lidar geometric calibration; visual odometry estimate; Calibration; Cameras; Distortion measurement; Laser radar; Mathematical model; Mirrors; Robot sensing systems;
Conference_Titel :
Robotics and Automation (ICRA), 2013 IEEE International Conference on
Conference_Location :
Karlsruhe
Print_ISBN :
978-1-4673-5641-1
DOI :
10.1109/ICRA.2013.6631093