点云
计算机科学
稳健性(进化)
惯性测量装置
激光雷达
编码器
云计算
同时定位和映射
实时计算
机器人
人工智能
计算机视觉
作者
Xiang Gao,Qi Wang,Gu Hao,Fang Zhang,Peng Guoqi,Yiwen Si,Xiaofei Li
出处
期刊:IEEE Intelligent Vehicles Symposium
日期:2021-07-11
卷期号:: 881-888
被引量:1
标识
DOI:10.1109/iv48863.2021.9575571
摘要
This paper presents a fully automatic large-scale point cloud mapping system for low-speed self-driving vehicles and robots operating in complicated unstructured environments. The proposed system robustly fuses multiple sensor inputs from IMU, RTK, wheel speed encoder, and LiDAR point clouds into a factor graph to obtain a globally consistent point cloud map. A robust two-stage optimization routine is proposed to tackle the practical issues that arise from real-world environments, such as handling unstable RTK signals, LiDAR degeneracy in structure-less areas, and cooperative mapping tasks. The system has been widely used for over 500 vehicles and 1,000 maps since 2019. We present a comparative evaluation with popular mapping algorithms in terms of accuracy and robustness to various challenging scenes.
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