Abstract

With the development of autonomous driving, lane-level maps have attracted significant attention. Since the lane-level road network is an important part of the lane-level map, the efficient, low-cost, and automatic generation of lane-level road networks has become increasingly important. We propose a new method here that generates lane-level road networks using only position information based on an autonomous vehicle and the existing lane-level road networks from the existing road-level professionally surveyed without lane details. This method uses the parallel relationship between the centerline of a lane and the centerline of the corresponding segment. Since the direct point-by-point computation is huge, we propose a method based on a trajectory-similarity-join pruning strategy (TSJ-PS). This method uses a filter-and-verify search framework. First, it performs quick segmentation based on the minimum distance and then uses the similarity of two trajectories to prune the trajectory similarity join. Next, it calculates the centerline trajectory for lanes using the simulation transformation model by the unpruned trajectory points. Finally, we demonstrate the efficiency of the algorithm and generate a lane-level road network via experiments on a real road.

Highlights

  • Intelligent driving technology is developing rapidly in both industry and academia

  • The main contributions of this study can be summarized as follows: (1) A method was developed for generating a lane-level road network employing existing road-level maps as a source, using only position information for a single trajectory; and (2) we propose a segmentation strategy and trajectory-similarity-join pruning strategy (TSJ-PS), which can quickly generate a lane-level road network

  • This study proposed a method for using acquisition trajectories and road centerline shape points to generate a lane-level road network

Read more

Summary

Introduction

Digital maps can help with advanced driver-assistance systems and autonomous driving. Digital maps are used to provide the surrounding information of a vehicle, which facilitates perception applications [5,6] for intelligent driving systems. Due to a lack of lane details, existing electronic navigation maps are not widely used in the development of autonomous driving functions. Compared with road-level maps, lane-level maps contain rich lane data [7], with accuracy ranging from a few meters to the decimeter or even centimeter level under various autonomous vehicle functions [8]. The road network is an important aspect of maps and plays an important role in intelligent driving projects [9]. As a key enabling technology, the generation of lane-level road networks is a topic of research interest

Methods
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call