Calibration of Human Driving Behavior and Preference Using Naturalistic Traffic Data
Qi Dai, Di Shen, Jinhong Wang, Suzhou Huang, Dimitar Filev

TL;DR
This paper presents a method to infer human driving preferences from naturalistic traffic data using a state space model and Kalman filter, enabling realistic modeling of mixed traffic behaviors with reduced computational effort.
Contribution
It introduces a computational framework that efficiently estimates driver preferences from real traffic data by simplifying the dynamic decision-making process into static optimization problems.
Findings
The approach accurately fits individual vehicle trajectories.
The inferred utility functions replicate collective traffic patterns.
The method significantly reduces computational complexity.
Abstract
Understanding human driving behaviors quantitatively is critical even in the era when connected and autonomous vehicles and smart infrastructure are becoming ever more prevalent. This is particularly so as that mixed traffic settings, where autonomous vehicles and human driven vehicles co-exist, are expected to persist for quite some time. Towards this end it is necessary that we have a comprehensive modeling framework for decision-making within which human driving preferences can be inferred statistically from observed driving behaviors in realistic and naturalistic traffic settings. Leveraging a recently proposed computational framework for smart vehicles in a smart world using multi-agent based simulation and optimization, we first recapitulate how the forward problem of driving decision-making is modeled as a state space model. We then show how the model can be inverted to estimate…
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Taxonomy
TopicsTraffic control and management · Autonomous Vehicle Technology and Safety · Transportation Planning and Optimization
