Paper
7 August 2024 Transportation mode identification using road-network subgraph representation
Ying Zhang, Xuefeng Guan, Huayi Wu
Author Affiliations +
Proceedings Volume 13224, 4th International Conference on Internet of Things and Smart City (IoTSC 2024); 132241S (2024) https://doi.org/10.1117/12.3034923
Event: 4th International Conference on Internet of Things and Smart City, 2024, Hangzhou, China
Abstract
Transportation mode identification (TMI) is an essential component of intelligent transportation systems, which provides guidance for understanding travel behavior preferences. Existing studies primarily focus on motion attributes of trajectories, neglecting the auxiliary function of urban road-network information in TMI. Inspired by subgraph representation, we propose a novel TMI framework using road-network subgraph representation (TRSS) to tackle this issue. The framework consists of a graph attention network with labeling trick to capture the topology relationship between road segments, and a Bi-LSTM network to encode the motion characteristics. Finally, we combine road-network semantics and motion semantics to jointly train the model. Experiments on two trajectory datasets show that TRSS significantly outperforms existing TMI methods. And ablation analysis demonstrates that road-network subgraph representation can effectively enhance the performance of identifying model.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Ying Zhang, Xuefeng Guan, and Huayi Wu "Transportation mode identification using road-network subgraph representation", Proc. SPIE 13224, 4th International Conference on Internet of Things and Smart City (IoTSC 2024), 132241S (7 August 2024); https://doi.org/10.1117/12.3034923
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KEYWORDS
Roads

Transportation

Motion models

Education and training

Machine learning

Transformers

Deep learning

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