L2V2T2Calib: Automatic and Unified Extrinsic Calibration Toolbox for Different 3D LiDAR, Visual Camera and Thermal Camera

Jun Zhang, Yiyao Liu, Mingxing Wen, Yufeng Yue, H. Zhang, Danwei W. Wang
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引用次数: 1

Abstract

Extrinsic calibration between LiDAR-Camera and LiDAR-LiDAR has been researched extensively, because it is the foundation for sensor fusion. Meanwhile, many projects are open-sourced and significantly promote related research. However, limited solutions can unify the calibration between repetitive scanning and non-repetitive scanning 3D LiDAR, sparse and dense 3D LiDAR, visual and thermal camera. Currently, to achieve that, we normally need to use different targets and extract different features for different sensor combinations. Sometimes, human intervention is required to locate the target. It is inconvenient and time-consuming. In this paper, L2V2T2Calib is introduced and open-sourced as a trial to unify the calibration. 1). A four-circular-holes board is adopted for all sensors. The four circle centers can be detected by all the sensors, thus are ideal common features. Previous works also use this target, but the algorithms don’t consider non-repetitive scanning LiDARs, thus cannot be directly applied. 2). To unify the process, an important step is to automatically and robustly detect the target from different types of LiDARs. However, this does not receive enough attention. We propose a method based on template matching. It is simple, but effective and general to different depth sensors. 3). We provide two types of output, minimizing 2D re-projection error (Min2D) and minimizing 3D matching error (Min3D), for different users. And their performance is compared. Extensive experiments conducted in both simulation and real environment demonstrate L2V2T2Calib is accurate, robust, more importantly, unified. The code will be open-sourced to promote related research at: https://github.com/Clothooo/lvt2calib
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L2V2T2Calib:自动和统一的外部校准工具箱,用于不同的3D激光雷达,视觉相机和热像仪
LiDAR-Camera和LiDAR-LiDAR之间的外部标定是传感器融合的基础,因此得到了广泛的研究。同时,许多项目都是开源的,极大地促进了相关研究。然而,有限的解决方案可以统一重复扫描和非重复扫描3D LiDAR,稀疏和密集3D LiDAR,视觉和热像仪之间的校准。目前,为了实现这一目标,我们通常需要针对不同的传感器组合使用不同的目标,提取不同的特征。有时,需要人为干预来定位目标。这既不方便又费时。本文引入并开源了L2V2T2Calib,作为统一标定的尝试。1).所有传感器均采用四圆孔板。四个圆心可以被所有传感器检测到,因此是理想的共同特征。之前的工作也使用了这个目标,但算法没有考虑非重复扫描lidar,因此不能直接应用。2)为了统一这一过程,重要的一步是对不同类型激光雷达的目标进行自动鲁棒检测。然而,这一点并没有得到足够的重视。我们提出了一种基于模板匹配的方法。该方法简单,但对不同的深度传感器具有通用性和有效性。3)针对不同的用户,我们提供了最小化2D重投影误差(Min2D)和最小化3D匹配误差(Min3D)两种类型的输出。并对它们的性能进行比较。在仿真和真实环境中进行的大量实验表明,l2v222calib具有准确、鲁棒性和一致性。代码将被开源,以促进相关研究:https://github.com/Clothooo/lvt2calib
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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