LiDAR-Based Localization on Highways Using Raw Data and Pole-Like Object Features

Sheng-Cheng Lee, Victor Lu,Chieh-Chih Wang,Wen-Chieh Lin

CVPR Workshops(2023)

引用 0|浏览15
暂无评分
摘要
Poles on highways provide important cues for how a scan should be localized onto a map. However existing point cloud scan matching algorithms do not fully leverage such cues, leading to suboptimal matching accuracy in highway environments. To improve the ability to match in such scenarios, we include pole-like objects for lateral information and add this information to the current matching algorithm. First, we classify the points from the LiDAR sensor using the Random Forests classifier to find the points that represent poles. Each detected pole point will then generate a residual by the distance to the nearest pole in map. The pole residuals are later optimized along with the point-to-distribution residuals proposed in the normal distributions transform (NDT) using a nonlinear least squares optimization to get the localization result. Compared to the baseline (NDT), our proposed method obtains a 34% improvement in accuracy on highway scenes in the localization problem. In addition, our experiment shows that the convergence area is significantly enlarged, increasing the usability of the self-driving car localization algorithm on highway scenarios.
更多
查看译文
关键词
car localization algorithm,current matching algorithm,highway environments,highway scenarios,highway scenes,highways,important cues,lateral information,LiDAR sensor,LiDAR-based localization,localization problem,localization result,matching accuracy,matching algorithms,NDT,nearest pole,nonlinear least squares optimization,normal distributions,point cloud scan,point-to-distribution residuals,pole point,pole residuals,Random Forests classifier
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要