Generating Trajectories from Implicit Neural Models

Published: 01 Jan 2024, Last Modified: 04 Feb 2025MDM 2024EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Modeling human mobility under uncertain conditions and individual preferences remains a difficult and unsolved problem. Data-driven deep learning approaches require extensive trajectory data for training, while more traditional methods often assume deterministic conditions or simple minimum-cost paths. We propose an implicit neural representation (INR) to learn continuous, latent fields of stochastic traffic properties over space and time. We successfully impute speeds on a road network with hundreds of thousands of edges from only a few hundred vehicles, then illustrate the quality of these representations on a trajectory generation task. A near-shortest-path algorithm weighted by the INR’s predictions produces plausible real-world routing choices, showing potential for applications in route planning and anomaly detection.
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