A Novel Robust Approach for Correspondence-Free Extrinsic Calibration

Xiao Hu1, Daniel Olesen1, Per Knudsen1

  • 1Technical University of Denmark

Details

11:00 - 11:15 | Tue 5 Nov | L1-R1 | TuAT1.1

Session: Calibration and Identification

Abstract

Extrinsic calibration is a necessary step when using heterogeneous sensors for robotics applications. Most existing methods work under the assumption that the prior data correspondence is known. Considering data loss and false measurements, the correspondence may not be accessible in practice. To solve this problem without knowing the correspondence, several probabilistic methods have been proposed. However, an implicit restriction on input data limits their application. Therefore, in this paper, we propose a more stable correspondence-free method with two improvements that can relax the restrictions on inputs and improve the calibration accuracy. The first improvement finds consistent sets from raw inputs using screw invariants, which significantly improve the robustness in case of outliers and data loss. A new optimization method on matrix Lie group is proposed as the second improvement, which demonstrates better accuracy. The experimental results on both numerical and real data show the superiority and robustness of the proposed method.