Hierarchical Neural Network-Based Prediction Model of Pedestrian Crossing Behavior at Unsignalized Crosswalks

2023-01-0865

04/11/2023

Features
Event
WCX SAE World Congress Experience
Authors Abstract
Content
To enable smooth and low-risk autonomous driving in the presence of other road users, such as cyclists and pedestrians, appropriate predictive safe speed control strategies relying on accurate and robust prediction models should be employed. However, difficulties related to driving scene understanding and a wide variety of features influencing decisions of other road users significantly complexifies prediction tasks and related controls. This paper proposes a hierarchical neural network (NN)-based prediction model of pedestrian crossing behavior, which is aimed to be applied within an autonomous vehicle (AV) safe speed control strategy. Additionally, different single-level prediction models are presented and analyzed as well, to serve as baseline approaches. The hierarchical NN model is designed to predict the probability of pedestrian crossing the crosswalk prior to the vehicle at the high level, and parameters of Gaussian probability distribution of pedestrian entry time to the crosswalk at the low level. On the other hand, the baseline single-level models only provide entry time probability distributions, either in discrete form or in the form of bimodal Gaussian probability distribution. The proposed hierarchical model is validated against the baseline ones for a simplified single-vehicle/single-pedestrian case, where the data obtained through large-scale simulations of a game theory-based pedestrian model and an open-loop driven vehicle are used.
Meta TagsDetails
DOI
https://doi.org/10.4271/2023-01-0865
Pages
11
Citation
Ćorić, M., Skugor, B., Deur, J., Ivanovic, V. et al., "Hierarchical Neural Network-Based Prediction Model of Pedestrian Crossing Behavior at Unsignalized Crosswalks," SAE Technical Paper 2023-01-0865, 2023, https://doi.org/10.4271/2023-01-0865.
Additional Details
Publisher
Published
Apr 11, 2023
Product Code
2023-01-0865
Content Type
Technical Paper
Language
English