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Social Physics Informed Diffusion Model for Crowd Simulation

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Crowd simulation holds crucial applications in various domains, such as urban planning, architectural design, and traffic arrangement. In recent years, physics-informed machine learning methods have achieved state-of-the-art performance in crowd simulation but fail to model the heterogeneity and multi-modality of human movement comprehensively. In this paper, we propose a social physics-informed diffusion model named SPDiff to mitigate the above gap. SPDiff takes both the interactive and historical information of crowds in the current timeframe to reverse the diffusion process, thereby generating the distribution of pedestrian movement in the subsequent timeframe. Inspired by the well-known social physics model, i.e., Social Force, regarding crowd dynamics, we design a crowd interaction module to guide the denoising process and further enhance this module with the equivariant properties of crowd interactions. To mitigate error accumulation in long-term simulations, we propose a multi-frame rollout training algorithm for diffusion modeling. Experiments conducted on two real-world datasets demonstrate the superior performance of SPDiff in terms of macroscopic and microscopic evaluation metrics. Code and appendix are available at https://github.com/tsinghua-fib-lab/SPDiff.

Hongyi Chen, Jingtao Ding, Yong Li, Yue Wang, Xiao-Ping Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Trajectory PredictionETH
MAE0.4692
11
Pedestrian trajectory predictionGC
MAE0.9116
10
Pedestrian trajectory predictionUCY
MAE1.876
10
Crowd SimulationHotel
MMD0.109
9
Crowd behavior generationZARA1 (test)
FDE1.1244
9
Crowd SimulationETH
MMD0.2221
9
Crowd SimulationGC
MAE0.9116
9
Crowd SimulationUCY
MAE1.876
9
Trajectory PredictionGC
MMD0.0092
9
Trajectory PredictionUCY
MMD0.0671
9
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