Recalibrating the KITTI Dataset Camera Setup for Improved Odometry Accuracy

Igor Cvisic, Ivan Marković, Ivan Petrović
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引用次数: 13

Abstract

Over the last decade, one of the most relevant public datasets for evaluating odometry accuracy is the KITTI dataset. Beside the quality and rich sensor setup, its success is also due to the online evaluation tool, which enables researchers to bench-mark and compare algorithms. The results are evaluated on the test subset solely, without any knowledge about the ground truth, yielding unbiased, overfit free and therefore relevant validation for robot localization based on cameras, 3D laser or combination of both. However, as any sensor setup, it requires prior calibration and rectified stereo images are provided, introducing dependence on the default calibration parameters. Given that, a natural question arises if a better set of calibration parameters can be found that would yield higher odometry accuracy. In this paper, we propose a new approach for one shot calibration of the KITTI dataset multiple camera setup. The approach yields better calibration parameters, both in the sense of lower calibration reprojection errors and lower visual odometry error. We conducted experiments where we show for three different odometry algorithms, namely SOFT2, ORB-SLAM2 and VISO2, that odometry accuracy is significantly improved with the pro-posed calibration parameters. Moreover, our odometry, SOFT2, in conjunction with the proposed calibration method achieved the highest accuracy on the official KITTI scoreboard with 0.53% translational and 0.0009 deg/m rotational error, outperforming even 3D laser-based methods.
重新校准KITTI数据集相机设置以提高里程计精度
在过去十年中,评估里程计精度最相关的公共数据集之一是KITTI数据集。除了高质量和丰富的传感器设置外,它的成功还归功于在线评估工具,该工具使研究人员能够对算法进行基准测试和比较。结果仅在测试子集上进行评估,而不需要了解任何关于基础真相的知识,从而为基于相机,3D激光或两者结合的机器人定位产生无偏,无过拟合的相关验证。然而,作为任何传感器设置,它需要事先校准和校正立体图像提供,引入对默认校准参数的依赖。鉴于此,如果能找到一组更好的校准参数,从而产生更高的里程计精度,那么自然会出现问题。本文提出了一种针对KITTI数据集多摄像机设置的单镜头标定新方法。该方法在较低的校准重投影误差和较低的视觉里程计误差的意义上产生了较好的校准参数。实验结果表明,在SOFT2、ORB-SLAM2和VISO2三种不同的测程算法下,采用所提出的标定参数可以显著提高测程精度。此外,我们的里程计SOFT2与所提出的校准方法相结合,在KITTI官方计分板上实现了最高的精度,平移误差为0.53%,旋转误差为0.0009度/米,甚至优于基于3D激光的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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