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ECPC-ICP:一种通过融合路边激光雷达点云和道路特征的六维车辆姿态估计方法。

ECPC-ICP: A 6D Vehicle Pose Estimation Method by Fusing the Roadside Lidar Point Cloud and Road Feature.

作者信息

Gu Bo, Liu Jianxun, Xiong Huiyuan, Li Tongtong, Pan Yuelong

机构信息

School of Intelligent Systems Engineering, Sun Yat-sen University, Guangzhou 510006, China.

Guangdong Provincial Key Laboratory of Fire Science and Technology, Guangzhou 510006, China.

出版信息

Sensors (Basel). 2021 May 17;21(10):3489. doi: 10.3390/s21103489.

DOI:10.3390/s21103489
PMID:34067737
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8156169/
Abstract

In the vehicle pose estimation task based on roadside Lidar in cooperative perception, the measurement distance, angle, and laser resolution directly affect the quality of the target point cloud. For incomplete and sparse point clouds, current methods are either less accurate in correspondences solved by local descriptors or not robust enough due to the reduction of effective boundary points. In response to the above weakness, this paper proposed a registration algorithm Environment Constraint Principal Component-Iterative Closest Point (ECPC-ICP), which integrated road information constraints. The road normal feature was extracted, and the principal component of the vehicle point cloud matrix under the road normal constraint was calculated as the initial pose result. Then, an accurate 6D pose was obtained through point-to-point ICP registration. According to the measurement characteristics of the roadside Lidars, this paper defined the point cloud sparseness description. The existing algorithms were tested on point cloud data with different sparseness. The simulated experimental results showed that the positioning MAE of ECPC-ICP was about 0.5% of the vehicle scale, the orientation MAE was about 0.26°, and the average registration success rate was 95.5%, which demonstrated an improvement in accuracy and robustness compared with current methods. In the real test environment, the positioning MAE was about 2.6% of the vehicle scale, and the average time cost was 53.19 ms, proving the accuracy and effectiveness of ECPC-ICP in practical applications.

摘要

在协同感知中基于路边激光雷达的车辆位姿估计任务中,测量距离、角度和激光分辨率直接影响目标点云的质量。对于不完整和稀疏的点云,当前方法要么在通过局部描述符求解对应关系时精度较低,要么由于有效边界点的减少而不够鲁棒。针对上述不足,本文提出了一种融合道路信息约束的配准算法——环境约束主成分 - 迭代最近点算法(ECPC - ICP)。提取道路法线特征,并计算道路法线约束下车辆点云矩阵的主成分作为初始位姿结果。然后,通过点对点ICP配准获得精确的6D位姿。根据路边激光雷达的测量特性,本文定义了点云稀疏度描述。在具有不同稀疏度的点云数据上对现有算法进行了测试。模拟实验结果表明,ECPC - ICP的定位平均绝对误差约为车辆尺度的0.5%,方向平均绝对误差约为0.26°,平均配准成功率为95.5%,与当前方法相比,在精度和鲁棒性方面有了提升。在实际测试环境中,定位平均绝对误差约为车辆尺度的2.6%,平均时间成本为53.19 ms,证明了ECPC - ICP在实际应用中的准确性和有效性。

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