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Decoding pedestrian and automated vehicle interactions using immersive virtual reality and interpretable deep learning

To ensure pedestrian-friendly streets in the era of automated vehicles, reassessment of current policies, practices, design, rules and regulations of urban areas is of importance. This study investigates pedestrian crossing behaviour which, as an important element of urban dynamics, is expected to b...

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Published in:Transportation research. Part C, Emerging technologies Emerging technologies, 2021-03, Vol.124, p.102962, Article 102962
Main Authors: Kalatian, Arash, Farooq, Bilal
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description To ensure pedestrian-friendly streets in the era of automated vehicles, reassessment of current policies, practices, design, rules and regulations of urban areas is of importance. This study investigates pedestrian crossing behaviour which, as an important element of urban dynamics, is expected to be affected by the presence of automated vehicles. For this purpose, an interpretable machine learning framework is proposed to explore factors affecting pedestrians’ wait time before crossing mid-block crosswalks in the presence of automated vehicles. To collect rich behavioural data, we developed a dynamic and immersive virtual reality experiment, with 180 participants from a heterogeneous population in 4 different locations in the Greater Toronto Area (GTA). Pedestrian wait time behaviour is then analysed using a data-driven Cox Proportional Hazards (CPH) model, in which the linear combination of the covariates is replaced by a flexible non-linear deep neural network. The proposed model achieved a 5% improvement in goodness of fit, but more importantly, enabled us to incorporate a richer set of covariates. A game theoretic based interpretability method is used to understand the contribution of different covariates to the time pedestrians wait before crossing. Results show that the presence of automated vehicles on roads, wider lane widths, high density on roads, limited sight distance, and lack of walking habits are the main contributing factors to longer wait times. Our study suggested that, to move towards pedestrian-friendly urban areas, educational programs for children, enhanced safety measures for seniors, promotion of active modes of transportation, and revised traffic rules and regulations should be considered. •Utilizing immersive virtual reality for large-scale data collection on pedestrian behaviour.•Proposing a data-driven deep survival model, to analyse pedestrian wait time.•Deep CPH interpretation using SHAP, a modern game theoretic-based approach.•Proposing recommendations for urban areas with automated vehicles.•Narrow lane width, low traffic density, better sight distance cause shorter wait time.
doi_str_mv 10.1016/j.trc.2020.102962
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subjects Deep learning
Model interpretability
Pedestrian crossing behaviour
Pedestrian wait time
Survival analysis
Virtual reality
title Decoding pedestrian and automated vehicle interactions using immersive virtual reality and interpretable deep learning
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