This paper presents a probabilistic framework for decision-making in collision avoidance systems, targeting all types of collision scenarios with all types of single road users and objects. Decisions on when and how to assist the driver are made by taking a Bayesian approach to estimate how a collision can be avoided by an autonomous brake intervention, and the probability that the driver will consider the intervention as motivated. The driver model makes it possible to initiate earlier braking when it is estimated that the driver acceptance for interventions is high. The framework and the proposed driver model are evaluated in several scenarios, using authentic tracker data and a differential GPS. It is shown that the driver model can incr...
In this paper, we consider the problem of designing in-vehicle driver-assist systems that warn or ov...
This paper presents a model-based algorithm that estimates how the driver of a vehicle can either st...
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...
This paper is concerned with the problem of decision-making in systems that assist drivers in avoidi...
This paper is concerned with the problem of decision-making in systems that assist drivers in avoidi...
This paper presents a method for estimating how the driver of a vehicle can use steering, braking or...
<p>Road traffic accidents are one of the world’s largest public health problems. In the EU alone, tr...
International audienceModern vehicles embed an increasing number of Advanced Driving Assistance Syst...
International audienceThe article deals with the analysis and interpretation of dynamic scenes typic...
Road traffic accidents are one of the world’s largest public health problems. In the EU alone, traff...
International audienceFor collision avoidance systems to be accepted by human drivers, it is importa...
This thesis is concerned with decision-making in systems that can detect hazardous traffic situation...
International audienceFor collision avoidance systems to be accepted by human drivers, it is importa...
Automated cars and driver assistance systems constantly progress in complementing the human user in ...
In this paper, we consider the problem of designing in-vehicle driver-assist systems that warn or ov...
This paper presents a model-based algorithm that estimates how the driver of a vehicle can either st...
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...
This paper is concerned with the problem of decision-making in systems that assist drivers in avoidi...
This paper is concerned with the problem of decision-making in systems that assist drivers in avoidi...
This paper presents a method for estimating how the driver of a vehicle can use steering, braking or...
<p>Road traffic accidents are one of the world’s largest public health problems. In the EU alone, tr...
International audienceModern vehicles embed an increasing number of Advanced Driving Assistance Syst...
International audienceThe article deals with the analysis and interpretation of dynamic scenes typic...
Road traffic accidents are one of the world’s largest public health problems. In the EU alone, traff...
International audienceFor collision avoidance systems to be accepted by human drivers, it is importa...
This thesis is concerned with decision-making in systems that can detect hazardous traffic situation...
International audienceFor collision avoidance systems to be accepted by human drivers, it is importa...
Automated cars and driver assistance systems constantly progress in complementing the human user in ...
In this paper, we consider the problem of designing in-vehicle driver-assist systems that warn or ov...
This paper presents a model-based algorithm that estimates how the driver of a vehicle can either st...
This paper presents a model-based algorithm that estimates how the driver of a vehicle can either st...