Vehicle trajectory data can reveal naturalistic driving behaviour trends. However, owing to measurement and processing errors, the trajectory data extracted from videos often contain obvious noise. In merging zones, vehicles tend to accelerate and decelerate frequently, leading to poor denoising performance of the linear Kalman filter (KF). To address this issue, this study proposes a new denoising method based on the adaptive Kalman filter, which automatically switches between KF and Unscented KF to accommodate car-following and merging behaviours, respectively. A merging behaviour detection method was designed based on the PELT method and normalized innovation squared (NIS). The F1 score of 92.9% shows the accuracy of behaviour detection....
This study developed a nonlinear family of car-following models that emulate driving behavior in con...
Establishing a symmetrical model of surrounding vehicles and accurately obtaining the driving state ...
Vehicle trajectories from recorded video sequences—acquired by several contemporary methods of digit...
Abstract — This paper will introduce a data collection method that we used in a project on modeling ...
Observation of vehicles kinematics is an important task for many applications in ITS (Intelligent Tr...
Difficulty in obtaining accurate car-following data has traditionally been regarded as a considerabl...
AbstractObservation of vehicles kinematics is an important task for many applications in ITS (Intell...
This paper first reports a data acquisition method that the authors used in a project on modeling dr...
This paper proposes a multi-sensory Joint Adaptive Kalman Filter (JAKF) through extending innovation...
The objective of this thesis is to improve the accuracy of predicting motion trajectory, i.e., speed...
This Ph.D. thesis presents a framework for characterizing drivers by estimating a set of parameters ...
Vehicular trajectories are widely used for car-following (CF) model calibration and validation, as t...
AbstractThis paper modeled speed adjustment behavior of merging vehicles by using video data collect...
For several years, there has been a remarkable increase in efforts to develop an autonomous car. Aut...
This study developed a nonlinear family of car-following models that emulate driving behavior in con...
Establishing a symmetrical model of surrounding vehicles and accurately obtaining the driving state ...
Vehicle trajectories from recorded video sequences—acquired by several contemporary methods of digit...
Abstract — This paper will introduce a data collection method that we used in a project on modeling ...
Observation of vehicles kinematics is an important task for many applications in ITS (Intelligent Tr...
Difficulty in obtaining accurate car-following data has traditionally been regarded as a considerabl...
AbstractObservation of vehicles kinematics is an important task for many applications in ITS (Intell...
This paper first reports a data acquisition method that the authors used in a project on modeling dr...
This paper proposes a multi-sensory Joint Adaptive Kalman Filter (JAKF) through extending innovation...
The objective of this thesis is to improve the accuracy of predicting motion trajectory, i.e., speed...
This Ph.D. thesis presents a framework for characterizing drivers by estimating a set of parameters ...
Vehicular trajectories are widely used for car-following (CF) model calibration and validation, as t...
AbstractThis paper modeled speed adjustment behavior of merging vehicles by using video data collect...
For several years, there has been a remarkable increase in efforts to develop an autonomous car. Aut...
This study developed a nonlinear family of car-following models that emulate driving behavior in con...
Establishing a symmetrical model of surrounding vehicles and accurately obtaining the driving state ...
Vehicle trajectories from recorded video sequences—acquired by several contemporary methods of digit...