PLMTrajRec: A Scalable and Generalizable Trajectory Recovery Method with Pre-trained Language Models
–Neural Information Processing Systems
Spatiotemporal trajectory data is crucial for various traffic-related applications. However, issues such as device malfunctions and network instability often result in sparse trajectories that lose detailed movement information compared to their dense counterparts. Recovering missing points in sparse trajectories is thus essential. Despite recent progress, three challenges remain. First, the lack of large-scale dense trajectory datasets hinders the training of a trajectory recovery model. Second, the varying spatiotemporal correlations in sparse trajectories make it hard to generalize across different sampling intervals.
Neural Information Processing Systems
Jun-13-2026, 19:21:22 GMT
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