A Data-driven Crowd Simulation Framework Integrating Physics-informed Machine Learning with Navigation Potential Fields
Traditional rule-based physical models are limited by their reliance on singular physical formulas and parameters, making it difficult to effectively tackle the intricate tasks associated with crowd simulation. Recent research has introduced deep learning methods to tackle these issues, but most cur...
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Zusammenfassung: | Traditional rule-based physical models are limited by their reliance on
singular physical formulas and parameters, making it difficult to effectively
tackle the intricate tasks associated with crowd simulation. Recent research
has introduced deep learning methods to tackle these issues, but most current
approaches focus primarily on generating pedestrian trajectories, often lacking
interpretability and failing to provide real-time dynamic simulations.To
address the aforementioned issues, we propose a novel data-driven crowd
simulation framework that integrates Physics-informed Machine Learning (PIML)
with navigation potential fields. Our approach leverages the strengths of both
physical models and PIML. Specifically, we design an innovative
Physics-informed Spatio-temporal Graph Convolutional Network (PI-STGCN) as a
data-driven module to predict pedestrian movement trends based on crowd
spatio-temporal data. Additionally, we construct a physical model of navigation
potential fields based on flow field theory to guide pedestrian movements,
thereby reinforcing physical constraints during the simulation. In our
framework, navigation potential fields are dynamically computed and updated
based on the movement trends predicted by the PI-STGCN, while the updated crowd
dynamics, guided by these fields, subsequently feed back into the PI-STGCN.
Comparative experiments on two publicly available large-scale real-world
datasets across five scenes demonstrate that our proposed framework outperforms
existing rule-based methods in accuracy and fidelity. The similarity between
simulated and actual pedestrian trajectories increases by 10.8%, while the
average error is reduced by 4%. Moreover, our framework exhibits greater
adaptability and better interpretability compared to methods that rely solely
on deep learning for trajectory generation. |
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DOI: | 10.48550/arxiv.2410.16132 |