Human Trajectory Prediction via Neural Social Physics

21 Jul 2022  ·  Jiangbei Yue, Dinesh Manocha, He Wang ·

Trajectory prediction has been widely pursued in many fields, and many model-based and model-free methods have been explored. The former include rule-based, geometric or optimization-based models, and the latter are mainly comprised of deep learning approaches. In this paper, we propose a new method combining both methodologies based on a new Neural Differential Equation model. Our new model (Neural Social Physics or NSP) is a deep neural network within which we use an explicit physics model with learnable parameters. The explicit physics model serves as a strong inductive bias in modeling pedestrian behaviors, while the rest of the network provides a strong data-fitting capability in terms of system parameter estimation and dynamics stochasticity modeling. We compare NSP with 15 recent deep learning methods on 6 datasets and improve the state-of-the-art performance by 5.56%-70%. Besides, we show that NSP has better generalizability in predicting plausible trajectories in drastically different scenarios where the density is 2-5 times as high as the testing data. Finally, we show that the physics model in NSP can provide plausible explanations for pedestrian behaviors, as opposed to black-box deep learning. Code is available: https://github.com/realcrane/Human-Trajectory-Prediction-via-Neural-Social-Physics.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Trajectory Prediction ETH/UCY NSP ADE-8/12 0.17 # 2
FDE-8/12 0.24 # 2
Trajectory Prediction Stanford Drone NSP-SFM ADE-8/12 @K = 20 6.52 # 1
FDE-8/12 @K= 20 10.61 # 2

Methods


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