Abstract

Abstract. Highly automated driving (HAD) requires maps not only of high spatial precision but also of yet unprecedented actuality. Traditionally small highly specialized fleets of measurement vehicles are used to generate such maps. Nevertheless, for achieving city-wide or even nation-wide coverage, automated map update mechanisms based on very large vehicle fleet data gain importance since highly frequent measurements are only to be obtained using such an approach. Furthermore, the processing of imprecise mass data in contrast to few dedicated highly accurate measurements calls for a high degree of automation. We present a method for the generation of lane-accurate road network maps from vehicle trajectory data (GPS or better). Our approach therefore allows for exploiting today’s connected vehicle fleets for the generation of HAD maps. The presented algorithm is based on elementary building blocks which guarantees useful lane models and uses a Reversible Jump Markov chain Monte Carlo method to explore the models parameters in order to reconstruct the one most likely emitting the input data. The approach is applied to a challenging urban real-world scenario of different trajectory accuracy levels and is evaluated against a LIDAR-based ground truth map.

Highlights

  • Technologies for autonomous vehicles (AV) and advanced driver assistance systems (ADAS) are topics which are intensively investigated by many automotive OEMs and suppliers

  • While a lot of upcoming function of AV and ADAS are heavily related to a high accurate map (HAM) the challenges of map generation become one of the main fields of interest but remain partially unsolved so far

  • This paper presents a new approach for extending a street accurate road network map to a lane accurate one using trajectories of GPS-monitored vehicle fleets

Read more

Summary

STATE OF THE ART

Technologies for autonomous vehicles (AV) and advanced driver assistance systems (ADAS) are topics which are intensively investigated by many automotive OEMs and suppliers. This paper presents a new approach for extending a street accurate road network map to a lane accurate one using trajectories of GPS-monitored vehicle fleets. The paper is organized as follows: Section 2 outlines the state of the art of lane accurate road network generation. Since GPS is publicly available, various approaches for the fully automated derivation of road network graphs from vehicle fleet trajectories have been presented. This section gives an overview of the state of the art of road and lane accurate map construction in 2.1 and 2.2 respectively

Road Accurate Map Construction
Lane Accurate Map Construction
MATHEMATICAL BASICS
Markov chain Monte Carlo Methods
Reversible Jump Markov chain Monte Carlo Methods
APPROACH
Map Construction
Update the cooling function
RESULTS
Input Data
Evaluation
CONCLUSION AND FUTURE WORK
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