We consider long-term planning problems for autonomous vehicles in complex traffic scenarios where vehicles and pedestrians interact. The decisions of an autonomous vehicle can influence surrounding other participants in these scenarios. Therefore, planning algorithms that preprocess the long-term prediction of other participants restrict freedom in action. In this paper, we process both problems of long-term planning and prediction at the same time. Our approach which we call DDT (Deep Driving Tree) is based on game tree accumulating a short-term prediction. Machine learning techniques are applied to this short-term prediction instead of model-based techniques that depends on domain knowledge. In contrast to Q-learning, this prediction par...
In the context of autonomous driving and road situation awareness, this manuscript introduces a Baye...
This paper presents a method of intention inference of surrounding vehicles' behavior and longi...
This thesis presents a behavior planning algorithm for automated driving in urban environments with ...
We consider long-term planning problems for autonomous vehicles in complex traffic scenarios where v...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
Predicting the states of the surrounding traffic is one of the major problems in automated driving. ...
Autonomous driving decision-making is a challenging task due to the inherent complexity and uncertai...
Autonomous driving is a challenging problem because the autonomous vehicle must understand complex a...
The use of artificial intelligence in systems for autonomous vehicles is growing in popularity [1, 2...
Driving at an unsignalized roundabout is a complex traffic scenario that requires both traffic safet...
Autonomous vehicles operate in highly interactive environments. They share the road with humans and ...
This thesis aims at developing computationally efficient (hence real-time applicable) control strate...
Planning under social interactions with other agents is an essential problem for autonomous driving....
To be able to understand the dynamic driving environment, an autonomous vehicle needs to predict the...
Trajectory planning is essential for self-driving vehicles and has stringent requirements for accura...
In the context of autonomous driving and road situation awareness, this manuscript introduces a Baye...
This paper presents a method of intention inference of surrounding vehicles' behavior and longi...
This thesis presents a behavior planning algorithm for automated driving in urban environments with ...
We consider long-term planning problems for autonomous vehicles in complex traffic scenarios where v...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
Predicting the states of the surrounding traffic is one of the major problems in automated driving. ...
Autonomous driving decision-making is a challenging task due to the inherent complexity and uncertai...
Autonomous driving is a challenging problem because the autonomous vehicle must understand complex a...
The use of artificial intelligence in systems for autonomous vehicles is growing in popularity [1, 2...
Driving at an unsignalized roundabout is a complex traffic scenario that requires both traffic safet...
Autonomous vehicles operate in highly interactive environments. They share the road with humans and ...
This thesis aims at developing computationally efficient (hence real-time applicable) control strate...
Planning under social interactions with other agents is an essential problem for autonomous driving....
To be able to understand the dynamic driving environment, an autonomous vehicle needs to predict the...
Trajectory planning is essential for self-driving vehicles and has stringent requirements for accura...
In the context of autonomous driving and road situation awareness, this manuscript introduces a Baye...
This paper presents a method of intention inference of surrounding vehicles' behavior and longi...
This thesis presents a behavior planning algorithm for automated driving in urban environments with ...