Transferable Pedestrian Motion Prediction Models at Intersections
Author(s)
Shen, Macheng; Habibi, Golnaz; How, Jonathan P.
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© 2018 IEEE. One desirable capability of autonomous cars is to accurately predict the pedestrian motion near intersections for safe and efficient trajectory planning. We are interested in developing transfer learning algorithms that can be trained on the pedestrian trajectories collected at one intersection and yet still provide accurate predictions of the trajectories at another, previously unseen intersection. We first discussed the feature selection for transferable pedestrian motion models in general. Following this discussion, we developed one transferable pedestrian motion prediction algorithm based on Inverse Reinforcement Learning (IRL) that infers pedestrian intentions and predicts future trajectories based on observed trajectory. We evaluated our algorithm at three intersections. We used the accuracy of augmented semi-nonnegative sparse coding (ASNSC), trained and tested at the same intersection as a baseline. The result shows that the proposed algorithm improves the baseline accuracy by a statistically significant percentage in both non-transfer task and transfer task.
Date issued
2019-09Department
Massachusetts Institute of Technology. Department of Mechanical Engineering; Massachusetts Institute of Technology. Aerospace Controls Laboratory; Massachusetts Institute of Technology. Department of Aeronautics and AstronauticsPublisher
Institute of Electrical and Electronics Engineers (IEEE)
Citation
Shen, Macheng, Habibi, Golnaz and How, Jonathan P. 2019. "Transferable Pedestrian Motion Prediction Models at Intersections."
Version: Author's final manuscript