JVLDLoc:基于视觉-激光雷达约束和方向先验的驾驶场景定位联合优化

Longrui Dong, Gang Zeng
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引用次数: 0

摘要

移动代理在环境中定位自身的能力是自动驾驶等新兴应用的基本需求。许多现有的基于多个传感器的方法仍然存在漂移问题。我们提出了一种融合图像先验点和消失点的方案,该方案可以建立一个仅受旋转约束的能量项,称为方向投影误差。然后,我们将这些方向先验嵌入到视觉激光雷达SLAM系统中,该系统在后端以紧密耦合的方式集成了相机和激光雷达测量。具体而言,该方法生成扫描约束的视觉重投影误差和指向隐式移动最小二乘(IMLS)曲面,并在全局寻优时与方向投影误差共同求解。在KITTI、KITTI-360和Oxford Radar Robotcar上的实验表明,我们的定位误差和绝对位姿误差(APE)都比之前的地图低,验证了我们的方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
JVLDLoc: a Joint Optimization of Visual-LiDAR Constraints and Direction Priors for Localization in Driving Scenario
The ability for a moving agent to localize itself in environment is the basic demand for emerging applications, such as autonomous driving, etc. Many existing methods based on multiple sensors still suffer from drift. We propose a scheme that fuses map prior and vanishing points from images, which can establish an energy term that is only constrained on rotation, called the direction projection error. Then we embed these direction priors into a visual-LiDAR SLAM system that integrates camera and LiDAR measurements in a tightly-coupled way at backend. Specifically, our method generates visual reprojection error and point to Implicit Moving Least Square(IMLS) surface of scan constraints, and solves them jointly along with direction projection error at global optimization. Experiments on KITTI, KITTI-360 and Oxford Radar Robotcar show that we achieve lower localization error or Absolute Pose Error (APE) than prior map, which validates our method is effective.
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