This paper presents an uncontrolled intersection-passing algorithm with an integrated approach of stochastic model-predictive control and prediction uncertainty estimation for autonomous vehicles. The proposed algorithm is designed to utilize information from sensors mounted on the autonomous vehicle and high-definition intersection maps. The proposed algorithm is composed of two modules, namely target state prediction and a motion planner. The target state prediction module has predicted the future behavior of intersection-approaching vehicles based on human driving data. The recursive covariance estimator has been utilized to estimate the prediction uncertainty for each approaching vehicle. The desired driving mode has been determined bas...
It is generally accepted that an anticipatory driving style can yield a substantial contribution to ...
Abstract — We present a motion planning framework for autonomous on-road driving considering both th...
This paper describes design, vehicle implementation and validation of a motion planning and control ...
\u3cp\u3eWe investigate the problem of coordinating human-driven vehicles in road intersections with...
Self-driving vehicles have attracted a lot of interest due to their potential to significantly reduc...
Motivated by Connected and Automated Vehicle (CAV) technologies, this paper proposes a data-driven o...
Model predictive control is a very popular control scheme in a wide range of fields including driver...
Stochastic Model Predictive Control has proved to be an efficient method to plan trajectories in unc...
Automated driving strategies are capable to improve safety, efficiency and comfort of traffic. To re...
In this paper, we consider the trajectory planning of an autonomous vehicle to cross an intersection...
Autonomous driving in urban environments requires safe control policies that account for the non-de...
The automation of road intersections has significant potential to improve traffic throughput and eff...
ABSTRACTMODEL PREDICTIVE CONTROL FOR ON-ROAD AUTONOMOUS DRIVING by RUSHANTH SAI GANESH THATI JEEVANA...
This thesis aims at developing computationally efficient (hence real-time applicable) control strate...
In this thesis, we consider the trajectory planning of an autonomous vehicle to cross an intersectio...
It is generally accepted that an anticipatory driving style can yield a substantial contribution to ...
Abstract — We present a motion planning framework for autonomous on-road driving considering both th...
This paper describes design, vehicle implementation and validation of a motion planning and control ...
\u3cp\u3eWe investigate the problem of coordinating human-driven vehicles in road intersections with...
Self-driving vehicles have attracted a lot of interest due to their potential to significantly reduc...
Motivated by Connected and Automated Vehicle (CAV) technologies, this paper proposes a data-driven o...
Model predictive control is a very popular control scheme in a wide range of fields including driver...
Stochastic Model Predictive Control has proved to be an efficient method to plan trajectories in unc...
Automated driving strategies are capable to improve safety, efficiency and comfort of traffic. To re...
In this paper, we consider the trajectory planning of an autonomous vehicle to cross an intersection...
Autonomous driving in urban environments requires safe control policies that account for the non-de...
The automation of road intersections has significant potential to improve traffic throughput and eff...
ABSTRACTMODEL PREDICTIVE CONTROL FOR ON-ROAD AUTONOMOUS DRIVING by RUSHANTH SAI GANESH THATI JEEVANA...
This thesis aims at developing computationally efficient (hence real-time applicable) control strate...
In this thesis, we consider the trajectory planning of an autonomous vehicle to cross an intersectio...
It is generally accepted that an anticipatory driving style can yield a substantial contribution to ...
Abstract — We present a motion planning framework for autonomous on-road driving considering both th...
This paper describes design, vehicle implementation and validation of a motion planning and control ...