In this paper, we use the concept of artificial risk fields to predict how human operators control a vehicle in response to upcoming road situations. A risk field assigns a non-negative risk measure to the state of the system in order to model how close that state is to violating a safety property, such as hitting an obstacle or exiting the road. Using risk fields, we construct a stochastic model of the operator that maps from states to likely actions. We demonstrate our approach on a driving task wherein human subjects are asked to drive a car inside a realistic driving simulator while avoiding obstacles placed on the road. We show that the most likely risk field given the driving data is obtained by solving a convex optimization problem. ...
Understanding adaptive human driving behavior, in particular how drivers manage uncertainty, is of k...
As traffic participation is inherently a risky activity, traffic psychology has generated a great nu...
Real-time safety systems are crucial components of intelligent vehicles. This paper introduces a pre...
Current driving behaviour models are designed for specific scenarios, such as curve driving, obstacl...
Automated cars and driver assistance systems constantly progress in complementing the human user in ...
The prevention of risky situations is one of the main tasks in autonomous driving (AD) and intellige...
We present an approach to assess the risk taken by on-road vehicles within the framework of artifici...
Developing safe automated vehicles that can be proactive, safe, and comfortable in mixed traffic req...
Gibson and Crooks (1938) argued that a ‘field of safe travel’ could qualitatively explain drivers' s...
The article reports a novel method to assess the driving risk level and design a human friendly warn...
Autonomous driving systems have witnessed a significant development during the past years thanks to ...
The interaction between a human driver and an automated driving system may improve when the automati...
Current efforts in Advanced Driver Assistant Systems and Autonomous Driving research target at makin...
<div>Autonomous vehicles have the potential to drastically improve the safety, efficiency and cost o...
Car-following models are an essential part of microscopic traffic simulations. For research regardin...
Understanding adaptive human driving behavior, in particular how drivers manage uncertainty, is of k...
As traffic participation is inherently a risky activity, traffic psychology has generated a great nu...
Real-time safety systems are crucial components of intelligent vehicles. This paper introduces a pre...
Current driving behaviour models are designed for specific scenarios, such as curve driving, obstacl...
Automated cars and driver assistance systems constantly progress in complementing the human user in ...
The prevention of risky situations is one of the main tasks in autonomous driving (AD) and intellige...
We present an approach to assess the risk taken by on-road vehicles within the framework of artifici...
Developing safe automated vehicles that can be proactive, safe, and comfortable in mixed traffic req...
Gibson and Crooks (1938) argued that a ‘field of safe travel’ could qualitatively explain drivers' s...
The article reports a novel method to assess the driving risk level and design a human friendly warn...
Autonomous driving systems have witnessed a significant development during the past years thanks to ...
The interaction between a human driver and an automated driving system may improve when the automati...
Current efforts in Advanced Driver Assistant Systems and Autonomous Driving research target at makin...
<div>Autonomous vehicles have the potential to drastically improve the safety, efficiency and cost o...
Car-following models are an essential part of microscopic traffic simulations. For research regardin...
Understanding adaptive human driving behavior, in particular how drivers manage uncertainty, is of k...
As traffic participation is inherently a risky activity, traffic psychology has generated a great nu...
Real-time safety systems are crucial components of intelligent vehicles. This paper introduces a pre...