English

Quantifying and Modeling Driving Styles in Trajectory Forecasting

Robotics 2025-03-10 v1

Abstract

Trajectory forecasting has become a popular deep learning task due to its relevance for scenario simulation for autonomous driving. Specifically, trajectory forecasting predicts the trajectory of a short-horizon future for specific human drivers in a particular traffic scenario. Robust and accurate future predictions can enable autonomous driving planners to optimize for low-risk and predictable outcomes for human drivers around them. Although some work has been done to model driving style in planning and personalized autonomous polices, a gap exists in explicitly modeling human driving styles for trajectory forecasting of human behavior. Human driving style is most certainly a correlating factor to decision making, especially in edge-case scenarios where risk is nontrivial, as justified by the large amount of traffic psychology literature on risky driving. So far, the current real-world datasets for trajectory forecasting lack insight on the variety of represented driving styles. While the datasets may represent real-world distributions of driving styles, we posit that fringe driving style types may also be correlated with edge-case safety scenarios. In this work, we conduct analyses on existing real-world trajectory datasets for driving and dissect these works from the lens of driving styles, which is often intangible and non-standardized.

Keywords

Cite

@article{arxiv.2503.04994,
  title  = {Quantifying and Modeling Driving Styles in Trajectory Forecasting},
  author = {Laura Zheng and Hamidreza Yaghoubi Araghi and Tony Wu and Sandeep Thalapanane and Tianyi Zhou and Ming C. Lin},
  journal= {arXiv preprint arXiv:2503.04994},
  year   = {2025}
}
R2 v1 2026-06-28T22:10:04.586Z