TL;DR
STDDN is a physics-guided deep learning framework that improves crowd simulation accuracy and efficiency by integrating macroscopic fluid dynamics principles with microscopic trajectory modeling.
Contribution
The paper introduces a novel framework combining fluid dynamics constraints with neural ODEs for more stable and efficient crowd simulation.
Findings
Outperforms state-of-the-art methods on four real-world datasets.
Achieves significant reduction in inference latency.
Effectively models long-term crowd dynamics with physical regularization.
Abstract
Accurate crowd simulation is crucial for public safety management, emergency evacuation planning, and intelligent transportation systems. However, existing methods, which typically model crowds as a collection of independent individual trajectories, are limited in their ability to capture macroscopic physical laws. This microscopic approach often leads to error accumulation and compromises simulation stability. Furthermore, deep learning-driven methods tend to suffer from low inference efficiency and high computational overhead, making them impractical for large-scale, efficient simulations. To address these challenges, we propose the Spatio-Temporal Decoupled Differential Equation Network (STDDN), a novel framework that guides microscopic trajectory prediction with macroscopic physics. We innovatively introduce the continuity equation from fluid dynamics as a strong physical…
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