English

Teaching Vehicles to Anticipate: A Systematic Study on Probabilistic Behavior Prediction Using Large Data Sets

Machine Learning 2020-06-11 v4 Robotics Machine Learning

Abstract

By observing their environment as well as other traffic participants, humans are enabled to drive road vehicles safely. Vehicle passengers, however, perceive a notable difference between non-experienced and experienced drivers. In particular, they may get the impression that the latter ones anticipate what will happen in the next few moments and consider these foresights in their driving behavior. To make the driving style of automated vehicles comparable to the one of human drivers with respect to comfort and perceived safety, the aforementioned anticipation skills need to become a built-in feature of self-driving vehicles. This article provides a systematic comparison of methods and strategies to generate this intention for self-driving cars using machine learning techniques. To implement and test these algorithms we use a large data set collected over more than 30000 km of highway driving and containing approximately 40000 real-world driving situations. We further show that it is possible to classify driving maneuvers upcoming within the next 5 s with an Area Under the ROC Curve (AUC) above 0.92 for all defined maneuver classes. This enables us to predict the lateral position with a prediction horizon of 5 s with a median lateral error of less than 0.21 m.

Keywords

Cite

@article{arxiv.1910.07772,
  title  = {Teaching Vehicles to Anticipate: A Systematic Study on Probabilistic Behavior Prediction Using Large Data Sets},
  author = {Florian Wirthmüller and Julian Schlechtriemen and Jochen Hipp and Manfred Reichert},
  journal= {arXiv preprint arXiv:1910.07772},
  year   = {2020}
}

Comments

the paper has been accepted for publication in IEEE Transcations on Intelligent Transportation Systems (T-ITS) 16 pages 13 figures 12 tables

R2 v1 2026-06-23T11:46:25.441Z