Lane-changing behaviour detection is a critical aspect of driving safety and traffic management. This study focuses on detecting sudden lane changes as a subset of abnormal driving behaviours. By analyzing the characteristics of abrupt lane changes, the aim is to develop effective data-driven unsupervised machine learning (ML) methods for their detection and classification. Three unsupervised ML models, namely Isolation Forest, Local Outlier Factor, and Robust Covariance are evaluated and compared using a dataset of lane-change events. The results show that the Isolation Forest and Local Outlier Factor models outperform the Robust Covariance model, with the Local Outlier Factor model excelling in precision and overall accuracy, achieving th...
Lane-changing is a routine yet a complex driving task that has several negative impacts on both traf...
This study aims at \u27predicting\u27 the occurrence of lane-change related freeway crashes using th...
This study aims at \u27predicting\u27 the occurrence of lane-change related freeway crashes using th...
Predicting lane-changing behaviour is an integral part of lane-changing decision models and has a si...
Driving is a complex activity which requires constant care and attention. Intelligent Advance Driver...
Detection of lane-change behaviour is critical to driving safety, especially on highways. In this pa...
In the presented work we compare machine learning techniques in the context of lane change behavior ...
Accurately detecting and predicting lane change (LC)processes can help autonomous vehicles better un...
Accurate detection and prediction of the lane-change (LC) processes can help autonomous vehicles bet...
Inferring driver maneuvers is a fundamental issue in Advanced Driver Assistance Systems (ADAS), whic...
Today's trucks are becoming more and more safe due to the use of an Advanced Driver Assistance Syste...
To develop safe automated driving functions, knowing road-user’s lane change behaviour is critical. ...
To develop safe automated driving functions, knowing road-user’s lane change behaviour is critical. ...
This research focuses primary on recognition of lane-change behaviors using support vector machines ...
Driving behavior is considered as a unique driving habit of each driver and has a significant impact...
Lane-changing is a routine yet a complex driving task that has several negative impacts on both traf...
This study aims at \u27predicting\u27 the occurrence of lane-change related freeway crashes using th...
This study aims at \u27predicting\u27 the occurrence of lane-change related freeway crashes using th...
Predicting lane-changing behaviour is an integral part of lane-changing decision models and has a si...
Driving is a complex activity which requires constant care and attention. Intelligent Advance Driver...
Detection of lane-change behaviour is critical to driving safety, especially on highways. In this pa...
In the presented work we compare machine learning techniques in the context of lane change behavior ...
Accurately detecting and predicting lane change (LC)processes can help autonomous vehicles better un...
Accurate detection and prediction of the lane-change (LC) processes can help autonomous vehicles bet...
Inferring driver maneuvers is a fundamental issue in Advanced Driver Assistance Systems (ADAS), whic...
Today's trucks are becoming more and more safe due to the use of an Advanced Driver Assistance Syste...
To develop safe automated driving functions, knowing road-user’s lane change behaviour is critical. ...
To develop safe automated driving functions, knowing road-user’s lane change behaviour is critical. ...
This research focuses primary on recognition of lane-change behaviors using support vector machines ...
Driving behavior is considered as a unique driving habit of each driver and has a significant impact...
Lane-changing is a routine yet a complex driving task that has several negative impacts on both traf...
This study aims at \u27predicting\u27 the occurrence of lane-change related freeway crashes using th...
This study aims at \u27predicting\u27 the occurrence of lane-change related freeway crashes using th...