TL;DR
This paper introduces an automatic calibration method for aligning a 3D LiDAR with a panoramic camera using a printed chessboard, leveraging reflectance intensity and 3D corner estimation for improved accuracy.
Contribution
It proposes a novel fully automatic calibration approach that combines reflectance intensity with 3D corner estimation and optimization techniques for precise sensor alignment.
Findings
Accurate extrinsic calibration demonstrated on Velodyne HDL-32e and Ladybug3 sensors.
Method achieves high stability and low re-projection error.
Effective corner detection from sparse LiDAR point clouds.
Abstract
This paper presents a novel method for fully automatic and convenient extrinsic calibration of a 3D LiDAR and a panoramic camera with a normally printed chessboard. The proposed method is based on the 3D corner estimation of the chessboard from the sparse point cloud generated by one frame scan of the LiDAR. To estimate the corners, we formulate a full-scale model of the chessboard and fit it to the segmented 3D points of the chessboard. The model is fitted by optimizing the cost function under constraints of correlation between the reflectance intensity of laser and the color of the chessboard's patterns. Powell's method is introduced for resolving the discontinuity problem in optimization. The corners of the fitted model are considered as the 3D corners of the chessboard. Once the corners of the chessboard in the 3D point cloud are estimated, the extrinsic calibration of the two…
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