Extracting Vehicle Trajectories from Partially Overlapping Roadside Radar

Author:

Schrader Maxwell1ORCID,Hainen Alexander1ORCID,Bittle Joshua1ORCID

Affiliation:

1. Department of Mechanical Engineering, The University of Alabama, Tuscaloosa, AL 35487, USA

Abstract

This work presents a methodology for extracting vehicle trajectories from six partially-overlapping roadside radars through a signalized corridor. The methodology incorporates radar calibration, transformation to the Frenet space, Kalman filtering, short-term prediction, lane-classification, trajectory association, and a covariance intersection-based approach to track fusion. The resulting dataset contains 79,000 fused radar trajectories over a 26-h period, capturing diverse driving scenarios including signalized intersections, merging behavior, and a wide range of speeds. Compared to popular trajectory datasets such as NGSIM and highD, this dataset offers extended temporal coverage, a large number of vehicles, and varied driving conditions. The filtered leader–follower pairs from the dataset provide a substantial number of trajectories suitable for car-following model calibration. The framework and dataset presented in this work has the potential to be leveraged broadly in the study of advanced traffic management systems, autonomous vehicle decision-making, and traffic research.

Funder

Vehicle Technologies Office

Publisher

MDPI AG

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