Localization and Mapping Algorithm Based on Lidar-IMU-Camera Fusion

Yibing Zhao;Yuhe Liang;Zhenqiang Ma;Lie Guo;Hexin Zhang
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Abstract

Positioning and mapping technology is a difficult and hot topic in autonomous driving environment sensing systems. In a complex traffic environment, the signal of the Global Navigation Satellite System (GNSS) will be blocked, leading to inaccurate vehicle positioning. To ensure the security of automatic electric campus vehicles, this study is based on the Lightweight and Ground-Optimized Lidar Odometry and Mapping on Variable Terrain (LEGO-LOAM) algorithm with a monocular vision system added. An algorithm framework based on Lidar-IMU-Camera (Lidar means light detection and ranging) fusion was proposed. A lightweight monocular vision odometer model was used, and the LEGO-LOAM system was employed to initialize monocular vision. The visual odometer information was taken as the initial value of the laser odometer. At the back-end opti9mization phase error state, the Kalman filtering fusion algorithm was employed to fuse the visual odometer and LEGO-LOAM system for positioning. The visual word bag model was applied to perform loopback detection. Taking the test results into account, the laser radar loopback detection was further optimized, reducing the accumulated positioning error. The real car experiment results showed that our algorithm could improve the mapping quality and positioning accuracy in the campus environment. The Lidar-IMU-Camera algorithm framework was verified on the Hong Kong city dataset UrbanNav. Compared with the LEGO-LOAM algorithm, the results show that the proposed algorithm can effectively reduce map drift, improve map resolution, and output more accurate driving trajectory information.
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基于激光雷达-IMU-摄像头融合的定位和绘图算法
定位和绘图技术是自动驾驶环境感知系统中的难点和热点。在复杂的交通环境中,全球卫星导航系统(GNSS)的信号会被阻断,导致车辆定位不准确。为确保自动驾驶电动校园车的安全性,本研究基于轻量级和地面优化激光雷达测距和可变地形测绘(LEGO-LOAM)算法,并增加了单目视觉系统。提出了一个基于激光雷达-IMU-摄像头(激光雷达指光探测和测距)融合的算法框架。采用了轻量级单目视觉里程计模型,并利用乐高-LOAM 系统对单目视觉进行初始化。将视觉里程表信息作为激光里程表的初始值。在后端优化阶段的误差状态下,采用卡尔曼滤波融合算法将视觉里程表和乐高-LOAM 系统融合进行定位。应用视觉字袋模型进行回环检测。根据测试结果,进一步优化了激光雷达回环检测,减少了累积定位误差。实车实验结果表明,我们的算法可以提高校园环境中的绘图质量和定位精度。激光雷达-IMU-摄像头算法框架在香港城市数据集 UrbanNav 上得到了验证。结果表明,与 LEGO-LOAM 算法相比,所提出的算法能有效减少地图漂移,提高地图分辨率,并输出更准确的行车轨迹信息。
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Front Cover Contents Advancements and Prospects in Multisensor Fusion for Autonomous Driving Extracting Networkwide Road Segment Location, Direction, and Turning Movement Rules From Global Positioning System Vehicle Trajectory Data for Macrosimulation Decision Making and Control of Autonomous Vehicles Under the Condition of Front Vehicle Sideslip
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