Abstract

Road intersection is an important part of the road network, and it plays a key role in many intelligent transportation applications. Currently, the generation of road maps required expensive field surveying and labor-intensive mapping. With more and more public vehicles equipped with positioning devices, massive trajectory data are available. These trajectory data provides a new way to generate and update urban road networks in real time. Although numerous methods are currently available to reconstruct road maps from GPS trajectories, most of these methods focus on the generation of road segments (i.e., road centerlines or road lanes). Road intersections are simply represented by nodes, the generation of road intersections with detailed structures still remains a challenge. Therefore, this paper proposes a novel method for constructing road intersections from vehicle GPS trajectories. First, the boundaries of road intersections are detected by turning angles clustering. Then, the entrances and exits of each intersection are identified based on a newly developed method. Finally, the detailed geometric structures of intersections are reconstructed based on the detected entrances and exits, and turning rules are further extracted and assigned to each intersection. The experiments on real-world trajectory data show that the proposed method can generate the detailed geometric structures of road intersections as well as the turning rule semantic information successfully.

Highlights

  • The road map is a basic part of geographical information and plays a key role in many intelligent transportation applications

  • Professional road networks are produced in laborintensive ways, which face the problems of long update cycles and the lack of up-to-date semantic information

  • Road intersection is an important part of the road network

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Summary

Introduction

The road map is a basic part of geographical information and plays a key role in many intelligent transportation applications. Professional road networks are produced in laborintensive ways (such as field surveying), which face the problems of long update cycles and the lack of up-to-date semantic information (such as traffic turning rules). These became the most important defects in numerous applications such as Cartography, Location-Based Services (LBS), and other intelligent transportation applications [1], [2]. The recorded GPS trajectories portray numerous geometric and semantic details that are beneficial to construct road networks Under this premise, researchers have made significant attempts to generate road maps [3]–[9], and extract road semantic information such as traffic modes, road levels, speed limits, and turning rules [10]–[12] from GPS trajectories

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