Probabilistic Prediction of Longitudinal Trajectory Considering Driving Heterogeneity with Interpretability
Shuli Wang, Kun Gao, Lanfang Zhang, Yang Liu, Lei Chen

TL;DR
This paper introduces a probabilistic trajectory prediction framework for automated vehicles that accounts for driving behavior heterogeneity, improving prediction accuracy and interpretability in complex traffic scenarios.
Contribution
It combines Mixture Density Networks with driving behavior features and interprets predictions using SHAP, offering personalized and explainable trajectory predictions.
Findings
Significantly improved prediction accuracy over benchmarks.
Incorporating driving behavior features enhances model performance.
Model provides probabilistic and interpretable trajectory forecasts.
Abstract
Automated vehicles are envisioned to navigate safely in complex mixed-traffic scenarios alongside human-driven vehicles. To promise a high degree of safety, accurately predicting the maneuvers of surrounding vehicles and their future positions is a critical task and attracts much attention. However, most existing studies focused on reasoning about positional information based on objective historical trajectories without fully considering the heterogeneity of driving behaviors. Therefore, this study proposes a trajectory prediction framework that combines Mixture Density Networks (MDN) and considers the driving heterogeneity to provide probabilistic and personalized predictions. Specifically, based on a certain length of historical trajectory data, the situation-specific driving preferences of each driver are identified, where key driving behavior feature vectors are extracted to…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic Prediction and Management Techniques · Video Surveillance and Tracking Methods
