This thesis proposes a novel automotive safety function that utilizes information about the host vehicle\u27s state and the road ahead to predict and prevent unintended roadway departures. For this purpose predictive threat assessment, decision making and control algorithms are developed. The developed algorithms take into account fundamental limitations in a vehicle\u27s dynamical capabilities while using road information to maintain the vehicle\u27s maneuverability and keep it on the road.Particular attention is given to the threat assessment problem. A threat assessment algorithm that activates interventions when it can be theoretically guaranteed that it is no longer possible for a driver to avoid departing the road or losing vehicle ma...
Traffic accidents cause a huge amount of injuries and fatalities each year. Active safety systems as...
This paper presents a model-based algorithm that estimates how the driver of a vehicle can either st...
This paper presents a probabilistic framework for decision-making in collision avoidance systems, ta...
The active safety systems available on the passenger cars market today, automatically deploy automat...
We consider a model-based threat assessment method, which enables the activation of assisting safety...
We present a threat assessment algorithm for driver assistance systems in which mathematical vehicle...
In this paper, we consider model-based threat assessment methods which rely on vehicle and driver ma...
We propose two model-based threat assessmentmethods for semi-autonomous vehicles, i.e., human-driven...
Thesis: S.M., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2014.Cata...
This paper considers a threat assessment problem in a lane guidance application for semi-autonomous ...
In this paper, we consider model-based threat assessment methods which rely on vehicle and driver ma...
The article reports a novel method to assess the driving risk level and design a human friendly warn...
By either autonomously steering or braking, accidents can be avoided or mitigated by a number of act...
By either autonomously steering or braking, accidents can be avoided or mitigated by a number of act...
We present a model based threat assessment method for semi-autonomous vehicles.Based on the assumpti...
Traffic accidents cause a huge amount of injuries and fatalities each year. Active safety systems as...
This paper presents a model-based algorithm that estimates how the driver of a vehicle can either st...
This paper presents a probabilistic framework for decision-making in collision avoidance systems, ta...
The active safety systems available on the passenger cars market today, automatically deploy automat...
We consider a model-based threat assessment method, which enables the activation of assisting safety...
We present a threat assessment algorithm for driver assistance systems in which mathematical vehicle...
In this paper, we consider model-based threat assessment methods which rely on vehicle and driver ma...
We propose two model-based threat assessmentmethods for semi-autonomous vehicles, i.e., human-driven...
Thesis: S.M., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2014.Cata...
This paper considers a threat assessment problem in a lane guidance application for semi-autonomous ...
In this paper, we consider model-based threat assessment methods which rely on vehicle and driver ma...
The article reports a novel method to assess the driving risk level and design a human friendly warn...
By either autonomously steering or braking, accidents can be avoided or mitigated by a number of act...
By either autonomously steering or braking, accidents can be avoided or mitigated by a number of act...
We present a model based threat assessment method for semi-autonomous vehicles.Based on the assumpti...
Traffic accidents cause a huge amount of injuries and fatalities each year. Active safety systems as...
This paper presents a model-based algorithm that estimates how the driver of a vehicle can either st...
This paper presents a probabilistic framework for decision-making in collision avoidance systems, ta...