Abstract

Road networks are fundamental parts of intelligent transportation and smart cities. With the emergence of crowdsourcing geographic data, road mapping approaches by using crowdsourcing trajectories have been developed. Existing road map inference algorithms from trajectories can extract relatively accurate road networks, however, these algorithms are not robust to different trajectory datasets and the parameter optimization task is tedious and time-consuming. Therefore, we propose an adaptive approach based on trajectory density. The proposed approach contains two stages. Firstly, the density distribution for each trajectory is adaptively estimated by the Gaussian fitting approach and the density peak points are extracted to construct road centerlines corresponding to each trajectory. Secondly, these extracted road centerlines are incrementally merged by the “matching-refinement-merging” process to generate a road network. We compare the proposed approach against four representative methods through trajectory datasets that are completely different in sampling frequency, trajectory density, road density, and noise. The results show that the proposed approach provides better accuracy in terms of precision and integrity and does not require additional parameter adjustment.

Highlights

  • Road networks are a fundamental part of the National Spatial Data Infrastructure (NSDI)

  • Unlike the common method for directly merging GPS trajectories to generate road network, we propose to use trajectory density to estimate road centerlines corresponding to each trajectory firstly and merge the road centerlines to generate road network

  • WORK Based on the assumption that trajectories follow a Gaussian distribution on the road, we propose a two-stage method that extracting road centerlines and generating road network by incrementally merging road centerlines

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Summary

INTRODUCTION

Road networks are a fundamental part of the National Spatial Data Infrastructure (NSDI). With the wide application of positioning systems and Internet technology in decades, crowdsourcing geographic data have been produced in daily life These geographic data have the advantages of large data volume, timeliness, wide-coverage, and low cost, which complement the traditional professional surveying and mapping data. Based on these data, volunteered mapping has been developed. Existing map inference algorithms with trajectories have been able to construct relatively complete road networks after researching for a decade. These algorithms are not adaptive for different trajectory datasets [13], [14].

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