Abstract
The next generation of Intelligent Transportation Systems (ITS) will strongly rely on a high level of detail and coverage in traffic data acquisition. Beyond aggregated traffic parameters like the flux, mean speed, and density used in macroscopic traffic analysis, a continuous location estimation of individual vehicles on a microscopic scale will be required. On the infrastructure side, several sensor techniques exist today that are able to record the data of individual vehicles at a cross-section, such as static radar detectors, laser scanners, or computer vision systems. In order to record the position data of individual vehicles over longer sections, the use of multiple sensors along the road with suitable synchronization and data fusion methods could be adopted. This paper presents appropriate methods considering realistic scale and accuracy conditions of the original data acquisition. Datasets consisting of a timestamp and a speed for each individual vehicle are used as input data. As a first step, a closed formulation for a sensor offset estimation algorithm with simultaneous vehicle registration is presented. Based on this initial step, the datasets are fused to reconstruct microscopic traffic data using quintic Beziér curves. With the derived trajectories, the dependency of the results on the accuracy of the individual sensors is thoroughly investigated. This method enhances the usability of common cross-section-based sensors by enabling the deriving of non-linear vehicle trajectories without the necessity of precise prior synchronization.
Highlights
As the future of road transportation is being shaped around the idea of autonomous mobility, new methods of data acquisition and processing are being developed
Infrastructure-based Intelligent Transportation Systems (ITS) still need further development to exploit the full potential of the already existing sensors. This especially means increasing the level of detail reached with current ITS techniques, which often only deliver aggregated traffic data consisting of datasets with a time resolution of minutes covering traffic parameters like traffic flux, density, and speed
We present a method of spatio-temporal synchronization of sensors and an appropriate fusion technique to reconstruct microscopic traffic data
Summary
As the future of road transportation is being shaped around the idea of autonomous mobility, new methods of data acquisition and processing are being developed. Infrastructure-based Intelligent Transportation Systems (ITS) still need further development to exploit the full potential of the already existing sensors This especially means increasing the level of detail reached with current ITS techniques, which often only deliver aggregated traffic data consisting of datasets with a time resolution of minutes covering traffic parameters like traffic flux (vehicles/hour), density (vehicles/km), and speed (km/hour). This kind of data is a limiting factor for comprehensive analysis on the interaction between individual vehicles. Traffic data are required on a microscopic scale, which includes the quasi-continuous trajectory of every vehicle on the road
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