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A Novel and Simplified Extrinsic Calibration of 2D Laser Rangefinder and Depth Camera

Wei Zhou, Hailun Chen, Zhenlin Jin, Qiyang Zuo, Yaohui G. Xu, Kai He

Year
2022
Citations
2
Access
Open access

Abstract

It is too difficult to directly obtain the correspondence features between the two-dimensional (2D) laser-range-finder (LRF) scan point and camera depth point cloud, which leads to a cumbersome calibration process and low calibration accuracy. To address the problem, we propose a calibration method to construct point-line constraint relations between 2D LRF and depth camera observational features by using a specific calibration board. Through the observation of two different poses, we construct the hyperstatic equations group based on point-line constraints and solve the coordinate transformation parameters of 2D LRF and depth camera by the least square (LSQ) method. According to the calibration error and threshold, the number of observation and the observation pose are adjusted adaptively. After experimental verification and comparison with existing methods, the method proposed in this paper easily and efficiently solves the problem of the joint calibration of the 2D LRF and depth camera, and well meets the application requirements of multi-sensor fusion for mobile robots.

Keywords

CalibrationComputer visionArtificial intelligenceComputer sciencePoint cloudConstruct (python library)Rigid transformationConstraint (computer-aided design)Transformation (genetics)Point (geometry)

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