SOC-PHCVSYApr 29, 2025

Floating Car Observers in Intelligent Transportation Systems: Detection Modeling and Temporal Insights

arXiv:2505.02845v11 citationsh-index: 4
Originality Incremental advance
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This work addresses traffic state estimation and monitoring for transportation systems, presenting incremental improvements through novel modeling and emulation techniques.

The paper tackles the problem of modeling Floating Car Observers (FCOs) with onboard sensors to detect traffic participants in Intelligent Transportation Systems, showing that at a 20% penetration rate, FCOs using LiDAR can identify 65% of vehicles and data-driven methods recover over 80% of previously detected vehicles with minimal positional deviations.

Floating Car Observers (FCOs) extend traditional Floating Car Data (FCD) by integrating onboard sensors to detect and localize other traffic participants, providing richer and more detailed traffic data. In this work, we explore various modeling approaches for FCO detections within microscopic traffic simulations to evaluate their potential for Intelligent Transportation System (ITS) applications. These approaches range from 2D raytracing to high-fidelity co-simulations that emulate real-world sensors and integrate 3D object detection algorithms to closely replicate FCO detections. Additionally, we introduce a neural network-based emulation technique that effectively approximates the results of high-fidelity co-simulations. This approach captures the unique characteristics of FCO detections while offering a fast and scalable solution for modeling. Using this emulation method, we investigate the impact of FCO data in a digital twin of a traffic network modeled in SUMO. Results demonstrate that even at a 20% penetration rate, FCOs using LiDAR-based detections can identify 65% of vehicles across various intersections and traffic demand scenarios. Further potential emerges when temporal insights are integrated, enabling the recovery of previously detected but currently unseen vehicles. By employing data-driven methods, we recover over 80% of these vehicles with minimal positional deviations. These findings underscore the potential of FCOs for ITS, particularly in enhancing traffic state estimation and monitoring under varying penetration rates and traffic conditions.

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