Department of Mechanical Engineering, The Hong Kong Polytechnic University, Hong Kong, China.
Interdisciplinary Division of Aeronautical and Aviation Engineering, The Hong Kong Polytechnic University, Hong Kong, China.
Sensors (Basel). 2018 Nov 14;18(11):3928. doi: 10.3390/s18113928.
Robust and lane-level positioning is essential for autonomous vehicles. As an irreplaceable sensor, Light detection and ranging (LiDAR) can provide continuous and high-frequency pose estimation by means of mapping, on condition that enough environment features are available. The error of mapping can accumulate over time. Therefore, LiDAR is usually integrated with other sensors. In diverse urban scenarios, the environment feature availability relies heavily on the traffic (moving and static objects) and the degree of urbanization. Common LiDAR-based simultaneous localization and mapping (SLAM) demonstrations tend to be studied in light traffic and less urbanized area. However, its performance can be severely challenged in deep urbanized cities, such as Hong Kong, Tokyo, and New York with dense traffic and tall buildings. This paper proposes to analyze the performance of standalone NDT-based graph SLAM and its reliability estimation in diverse urban scenarios to further evaluate the relationship between the performance of LiDAR-based SLAM and scenario conditions. The normal distribution transform (NDT) is employed to calculate the transformation between frames of point clouds. Then, the LiDAR odometry is performed based on the calculated continuous transformation. The state-of-the-art graph-based optimization is used to integrate the LiDAR odometry measurements to implement optimization. The 3D building models are generated and the definition of the degree of urbanization based on Skyplot is proposed. Experiments are implemented in different scenarios with different degrees of urbanization and traffic conditions. The results show that the performance of the LiDAR-based SLAM using NDT is strongly related to the traffic condition and degree of urbanization. The best performance is achieved in the sparse area with normal traffic and the worse performance is obtained in dense urban area with 3D positioning error (summation of horizontal and vertical) gradients of 0.024 m/s and 0.189 m/s, respectively. The analyzed results can be a comprehensive benchmark for evaluating the performance of standalone NDT-based graph SLAM in diverse scenarios which is significant for multi-sensor fusion of autonomous vehicle.
鲁棒且车道级别的定位对于自动驾驶汽车至关重要。作为一种不可或缺的传感器,激光雷达(LiDAR)可以通过映射提供连续且高频的位姿估计,前提是有足够的环境特征。但是,映射误差会随时间累积。因此,LiDAR 通常与其他传感器集成。在不同的城市场景中,环境特征的可用性严重依赖于交通(移动和静止物体)和城市化程度。常见的基于 LiDAR 的同时定位与建图(SLAM)演示往往在交通量较小且城市化程度较低的区域进行研究。然而,其性能在交通密集且高楼林立的深度城市化城市(如香港、东京和纽约)中可能会受到严重挑战。本文旨在分析不同城市场景下独立 NDT 图 SLAM 的性能及其可靠性估计,以进一步评估基于 LiDAR 的 SLAM 性能与场景条件之间的关系。正态分布变换(NDT)用于计算点云帧之间的变换。然后,基于计算出的连续变换执行 LiDAR 里程计。采用最先进的基于图的优化方法来整合 LiDAR 里程计测量值以实现优化。生成 3D 建筑物模型,并提出了基于 Skyplot 的城市化程度定义。在具有不同城市化程度和交通条件的不同场景中进行实验。结果表明,基于 NDT 的 LiDAR 基于 SLAM 的性能与交通条件和城市化程度密切相关。在交通正常且稀疏的区域性能最佳,在城市化程度高且 3D 定位误差(水平和垂直方向的总和)梯度分别为 0.024 m/s 和 0.189 m/s 的密集城区性能最差。分析结果可为评估独立 NDT 图 SLAM 在不同场景下的性能提供全面基准,这对于自动驾驶汽车的多传感器融合具有重要意义。