4.7 Article

A context-aware pedestrian trajectory prediction framework for automated vehicles

Journal

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.trc.2021.103453

Keywords

Pedestrian trajectory; LSTM; Model interpretability; Virtual reality; Pedestrian crossing behaviour

Funding

  1. Division of Strategic Policy and Innovation (Transportation) at City of Toronto - Canada Research Chair Program [CRC-2017-00038]

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Studying pedestrian behavior in automated urban environments is crucial, and current datasets lack pedestrian perspectives. Virtual reality data can be used as a complementary resource to measure pedestrian behavior in specific conditions. In this study, a context-aware pedestrian trajectory prediction framework is proposed, incorporating pedestrian head orientations and distance to vehicles to predict future pedestrian trajectories.
With the unprecedented shift towards automated urban environments in recent years, a new paradigm is required to study pedestrian behaviour. Studying pedestrian behaviour in futuristic scenarios requires modern data sources that consider both the Automated Vehicle (AV) and pedestrian perspectives. Current open datasets on AVs predominantly fail to account for the latter, as they do not include an adequate number of events and associated details that involve pedestrian and vehicle interactions. To address this issue, we propose using Virtual Reality (VR) data as a complementary resource to current datasets, which can be designed to measure pedestrian behaviour under specific conditions. In this research, we focus on the context-aware pedestrian trajectory prediction framework for automated vehicles at mid-block unsignalized crossings. For this purpose, we develop a novel multi-input network of Long Short-Term Memory (LSTM) and fully connected dense layers. In addition to past trajectories, the proposed framework incorporates pedestrian head orientations and distance to the upcoming vehicles as sequential input data. By merging the sequential data with contextual information of the environment, we train a model to predict the future pedestrian trajectory. Our results show that the prediction error is reduced by considering contextual information extracted from the crossing environment, as well as the addition of time-series behavioural information to the model. To analyse the application of the methods to real AV data, the proposed framework is trained and applied to pedestrian trajectories extracted from an open-access video dataset. Finally, by implementing a game theory-based model interpretability method, we provide detailed insights and propose recommendations to improve the current automated vehicle sensing systems from a pedestrian-oriented point of view.

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