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Cyclist trajectory prediction using bidirectional recurrent neural networks

conference contribution
posted on 2018-01-01, 00:00 authored by K Saleh, Mohammed Hossny, Saeid Nahavandi
Predicting a long-term horizon of vulnerable road users’ trajectories such as cyclists become an inevitable task for a reliable operation of highly and fully automated vehicles. In the literature, this problem is often tackled using linear dynamics-based approaches based on recursive Bayesian filters. These approaches are usually challenged when it comes to predicting long-term horizon of trajectories (more than 1 sec). Additionally, they also have difficulties in predicting non-linear motions such as maneuvers done by cyclists in traffic environments. In this work, we are proposing two novel models based on deep stacked recurrent neural networks for the task of cyclists trajectories prediction to overcome some of the aforementioned challenges. Our proposed predictive models have achieved robust prediction results when evaluated on a real-life cyclist trajectories dataset collected using vehicle-based sensors in the urban traffic environment. Furthermore, our proposed models have outperformed other traditional approaches with an improvement of more than 50% in mean error score averaged over all the predicted cyclists’ trajectories.

History

Event

Australian Computer Society. Conference (31st : 2018 : Wellington, N.Z.)

Volume

11320

Pagination

284 - 295

Publisher

Springer

Location

Wellington, N.Z.

Place of publication

Cham, Switzerland

Start date

2018-12-11

End date

2018-12-14

ISSN

0302-9743

eISSN

1611-3349

ISBN-13

9783030039905

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2018, Springer Nature Switzerland AG

Editor/Contributor(s)

T Mitrovic, B Xue, X Li

Title of proceedings

AI 2018 : Proceedings of the 31st Australian Joint Conference on Artificial Intelligence 2018