A nonparametric neural network trained on high-precision lab trajectories simulates pedestrian collision avoidance with one obstacle from any direction.
Prediction of Pedestrian Speed with Artificial Neural Networks
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abstract
Pedestrian behaviours tend to depend on the type of facility. Therefore accurate predictions of pedestrians movements in complex geometries (including corridor, bottleneck or intersection) are difficult to achieve for classical models with few parameters. Artificial neural networks have multiple parameters and are able to identify various types of patterns. They could be a suitable alternative for forecasts. We aim in this paper to present first steps testing this approach. We compare estimations of pedestrian speed with a classical model and a neural network for combinations of corridor and bottleneck experiments. The results show that the neural network is able to differentiate the two geometries and to improve the estimation of pedestrian speeds when the geometries are mixed.
fields
physics.soc-ph 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Data-driven simulation of pedestrian collision avoidance with a nonparametric neural network
A nonparametric neural network trained on high-precision lab trajectories simulates pedestrian collision avoidance with one obstacle from any direction.