LB-R2R-Calib: Accurate and Robust Extrinsic Calibration of Multiple Long Baseline 4D Imaging Radars for V2X

Published: 30 May 2024, Last Modified: 22 Oct 20252024 IEEE International Conference on Robotics and Automation (ICRA)EveryoneCC BY 4.0
Abstract: As a new sensor, 4D radar (x, y, z, velocity) has great potential for V2X, due to its 3D point cloud, direct doppler velocity output, long distance ranging, low-cost, and more importantly, robust perception in all weathers. However, the extrinsic calibration of multiple long baseline 4D radars is rarely researched in V2X, which is the key to fuse multi-radars. The main reasons are three-folds: (1) New sensor. Thus, it is not surprising that little related work can be found. (2)Long baseline and large viewpoint-difference. Current works are mainly focused on unmanned vehicles, which is short baseline and small viewpoint-difference. (3) Sparse, noisy, and very cluttered 4D radar point cloud. Thus, it is challenging to rapidly and accurately locate the target and extract the feature. In this paper, LB-R2R-Calib (Long Baseline Radar to Radar extrinsic Calibration) is proposed to address these problems. The novelties are: (1) A new target is introduced: an eight-quadrant corner reflector enclosed by a foam sphere. The benefit is the target center is a viewpoint-invariant feature. Thus, it is ideal for large viewpoint-difference calibration. (2) Anew feature extraction algorithm is proposed to rapidly locate the target and extract the target center from a very cluttered point cloud, as we observed some important characteristics of4D radar. Experiments with two 4D radars in real environments with four configurations demonstrate our method is highly accurate and robust. (PDF) LB-R2R-Calib: Accurate and Robust Extrinsic Calibration of Multiple Long Baseline 4D Imaging Radars for V2X.
Loading