Distributed Acoustic Sensing for Urban Traffic Monitoring: Spatio-Temporal Attention in Recurrent Neural Networks
arXiv cs.LG / 3/17/2026
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Key Points
- The study reports a real-world DAS-based traffic monitoring experiment conducted in Granada, Spain, where vehicles cross a fiber deployed perpendicular to the roadway.
- It integrates spatial and temporal attention mechanisms within recurrent neural networks to model intra- and inter-event dependencies and assess their impact on recognition performance, parameter efficiency, and interpretability.
- The results show that appropriately placed attention modules improve accuracy while maintaining manageable model complexity, and attention heatmaps provide interpretable insights by highlighting informative spatial locations and temporal segments.
- The SA-bi-TA configuration demonstrates spatial transferability, enabling traffic event recognition at unseen sensing locations with only moderate performance degradation, supporting scalable deployment in heterogeneous urban sensing conditions.
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