PTrajM: Efficient and Semantic-rich Trajectory Learning with Pretrained Trajectory-Mamba
- URL: http://arxiv.org/abs/2408.04916v1
- Date: Fri, 9 Aug 2024 07:48:51 GMT
- Title: PTrajM: Efficient and Semantic-rich Trajectory Learning with Pretrained Trajectory-Mamba
- Authors: Yan Lin, Yichen Liu, Zeyu Zhou, Haomin Wen, Erwen Zheng, Shengnan Guo, Youfang Lin, Huaiyu Wan,
- Abstract summary: Vehicle trajectories provide crucial movement information for various real-world applications.
It is essential to develop a trajectory learning approach that efficiently extract rich semantic information, including movement and travel purposes.
We propose PTrajM, a novel method of efficient and semantic-rich vehicle trajectory learning.
- Score: 22.622613591771152
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Vehicle trajectories provide crucial movement information for various real-world applications. To better utilize vehicle trajectories, it is essential to develop a trajectory learning approach that can effectively and efficiently extract rich semantic information, including movement behavior and travel purposes, to support accurate downstream applications. However, creating such an approach presents two significant challenges. First, movement behavior are inherently spatio-temporally continuous, making them difficult to extract efficiently from irregular and discrete trajectory points. Second, travel purposes are related to the functionalities of areas and road segments traversed by vehicles. These functionalities are not available from the raw spatio-temporal trajectory features and are hard to extract directly from complex textual features associated with these areas and road segments. To address these challenges, we propose PTrajM, a novel method capable of efficient and semantic-rich vehicle trajectory learning. To support efficient modeling of movement behavior, we introduce Trajectory-Mamba as the learnable model of PTrajM, which effectively extracts continuous movement behavior while being more computationally efficient than existing structures. To facilitate efficient extraction of travel purposes, we propose a travel purpose-aware pre-training procedure, which enables PTrajM to discern the travel purposes of trajectories without additional computational resources during its embedding process. Extensive experiments on two real-world datasets and comparisons with several state-of-the-art trajectory learning methods demonstrate the effectiveness of PTrajM. Code is available at https://anonymous.4open.science/r/PTrajM-C973.
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