The Swarm Intelligence Freeway-Urban Trajectories (SWIFTraj) Dataset -- Part II: A Graph-Based Approach for Trajectory Connection
arXiv cs.RO / 4/28/2026
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Key Points
- The paper introduces Part II of the SWIFTraj dataset series, focusing on a graph-based method to connect long-distance vehicle trajectories captured by a UAV swarm.
- SWIFTraj enables continuous trajectories over long distances (over 4.5 km) by linking tracks across consecutive UAV videos, covering an integrated traffic network of freeways plus connected urban roads.
- The method builds an undirected graph to model flexible UAV layouts and uses an automatic time-alignment procedure that minimizes trajectory matching cost to estimate optimal time offsets between videos.
- Vehicle identity association across videos is performed via a Hungarian-algorithm-based matching table, and experiments (simulated and real-world) show time alignment error within three frames (~0.1 s) and vehicle matching F1 around 0.99.
- The reported results validate the approach’s effectiveness for UAV-based trajectory connection and support the dataset’s potential for scalable large-scale vehicle trajectory collection.
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