Abstract

High-quality digital road maps are essential prerequisites of location-based services and smart city applications. The massive and accessible GPS trajectory data generated by mobile GPS devices provide a new means through which to generate maps. However, due to the low sampling rate and multi-level disparity problems, automatically generating road maps is challenging and the generated maps cannot yet meet commercial requirements. In this paper, we present a GPS trajectory data-based road tracking algorithm, including an active contour-based road centerline refinement algorithm as the necessary post-processing. First, the low-frequency trajectory data were transferred into a density estimation map representing the roads through a kernel density estimator, for a seeding algorithm to automatically generate the initial points of the road-tracking algorithm. Then, we present a template-matching-based road-direction extraction algorithm for the road trackers to conduct simple correction, based on local density information. Last, we present an active contour-based road centerline refinement algorithm, considering both the geometric information of roads and density information. The generated road map was quantitatively evaluated using maps offered by the OpenStreetMap. Compared to other methods, our approach could produce a higher quality map with fewer zig-zag roads, and therefore more accurately represents reality.

Highlights

  • Published: 1 March 2021With the development of location-based services, digital road maps are increasingly needed, making road network extraction (RNE) an active research topic

  • We propose a GPS trajectory data-based road-tracking algorithm, including an active contour-based road centerline refinement algorithm, to extract smoothed and interconnected road centerlines from low-frequency trajectories

  • (4) We propose an active contour-based road centerline refinement algorithm to conduct further correction of extracted road centerlines

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Summary

Introduction

Published: 1 March 2021With the development of location-based services, digital road maps are increasingly needed, making road network extraction (RNE) an active research topic. Compared to the time-consuming and labor-intensive conventional map survey, various RNE methods were developed based on remote sensing (RS) images [1,2], GPS trajectory [3,4], and light detection and ranging (LiDAR) point-cloud data [5], since the 1970s. These semi-automatic and automatic algorithms lower the cost and shorten the time of producing and updating road maps. Semi-automatic methods, which require human input, generally perform better than automatic methods

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