Enregistré dans:
Détails bibliographiques
Auteurs principaux: De Cristofaro, Francesco, Hofbaur, Felix, Yang, Aixi, Eichberger, Arno
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2507.08365
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866918088905064448
author De Cristofaro, Francesco
Hofbaur, Felix
Yang, Aixi
Eichberger, Arno
author_facet De Cristofaro, Francesco
Hofbaur, Felix
Yang, Aixi
Eichberger, Arno
contents Lane changes of preceding vehicles have a great impact on the motion planning of automated vehicles especially in complex traffic situations. Predicting them would benefit the public in terms of safety and efficiency. While many research efforts have been made in this direction, few concentrated on predicting maneuvers within a set time interval compared to predicting at a set prediction time. In addition, there exist a lack of comparisons between different architectures to try to determine the best performing one and to assess how to correctly choose the input for such models. In this paper the structure of an LSTM, a CNN and a Transformer network are described and implemented to predict the intention of human drivers to perform a lane change. We show how the data was prepared starting from a publicly available dataset (highD), which features were used, how the networks were designed and finally we compare the results of the three networks with different configurations of input data. We found that transformer networks performed better than the other networks and was less affected by overfitting. The accuracy of the method spanned from $82.79\%$ to $96.73\%$ for different input configurations and showed overall good performances considering also precision and recall.
format Preprint
id arxiv_https___arxiv_org_abs_2507_08365
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Prediction of Lane Change Intentions of Human Drivers using an LSTM, a CNN and a Transformer
De Cristofaro, Francesco
Hofbaur, Felix
Yang, Aixi
Eichberger, Arno
Machine Learning
Lane changes of preceding vehicles have a great impact on the motion planning of automated vehicles especially in complex traffic situations. Predicting them would benefit the public in terms of safety and efficiency. While many research efforts have been made in this direction, few concentrated on predicting maneuvers within a set time interval compared to predicting at a set prediction time. In addition, there exist a lack of comparisons between different architectures to try to determine the best performing one and to assess how to correctly choose the input for such models. In this paper the structure of an LSTM, a CNN and a Transformer network are described and implemented to predict the intention of human drivers to perform a lane change. We show how the data was prepared starting from a publicly available dataset (highD), which features were used, how the networks were designed and finally we compare the results of the three networks with different configurations of input data. We found that transformer networks performed better than the other networks and was less affected by overfitting. The accuracy of the method spanned from $82.79\%$ to $96.73\%$ for different input configurations and showed overall good performances considering also precision and recall.
title Prediction of Lane Change Intentions of Human Drivers using an LSTM, a CNN and a Transformer
topic Machine Learning
url https://arxiv.org/abs/2507.08365