Automation Technology and Mechanical Engineering, Tampere University, FI-33720 Tampere, Finland.
Sensors (Basel). 2023 Apr 4;23(7):3740. doi: 10.3390/s23073740.
This paper studies the effect of reference frame selection in sensor-to-sensor extrinsic calibration when formulated as a motion-based hand-eye calibration problem. As the sensor trajectories typically contain some composition of noise, the aim is to determine which selection strategies work best under which noise conditions. Different reference selection options are tested under varying noise conditions in simulations, and the findings are validated with real data from the KITTI dataset. The study is conducted for four state-of-the-art methods, as well as two proposed cost functions for nonlinear optimization. One of the proposed cost functions incorporates outlier rejection to improve calibration performance and was shown to significantly improve performance in the presence of outliers, and either match or outperform the other algorithms in other noise conditions. However, the performance gain from reference frame selection was deemed larger than that from algorithm selection. In addition, we show that with realistic noise, the reference frame selection method commonly used in the literature, is inferior to other tested options, and that relative error metrics are not reliable for telling which method achieves best calibration performance.
本文研究了在将传感器到传感器外部校准公式化为基于运动的手眼校准问题时参考系选择的效果。由于传感器轨迹通常包含一些噪声成分,因此目的是确定在哪些噪声条件下哪种选择策略效果最好。在模拟中针对不同的噪声条件测试了不同的参考选择选项,并使用 KITTI 数据集的真实数据验证了研究结果。针对四种最先进的方法以及两种用于非线性优化的提出的成本函数进行了研究。提出的成本函数之一包含异常值剔除,以提高校准性能,并且在存在异常值的情况下,该函数表现出显著的性能提升,在其他噪声条件下与其他算法相匹配或表现更优。然而,参考系选择的性能提升被认为大于算法选择的性能提升。此外,我们还表明,在实际噪声情况下,文献中常用的参考系选择方法不如其他经过测试的选项,并且相对误差指标不可靠,无法确定哪种方法能实现最佳的校准性能。