The use of neural networks and reinforcement learning has become increasingly popular in autonomous vehicle control. However, the opaqueness of the resulting control policies presents a significant barrier to deploying neural network-based control in autonomous vehicles. In this paper, we present a reinforcement learning based approach to autonomous vehicle longitudinal control, where the rule-based safety cages provide enhanced safety for the vehicle as well as weak supervision to the reinforcement learning agent. By guiding the agent to meaningful states and actions, this weak supervision improves the convergence during training and enhances the safety of the final trained policy. This rule-based supervisory controller has the further adv...
In recent years, self-driving vehicles have become a holy grail technology that, once fully develope...
This paper presents a novel model-reference reinforcement learning control method for uncertain auto...
This paper presents a novel model-reference reinforcement learning algorithm for the intelligent tra...
The autonomous driving research area has gained popularity over the past decade, even more with the ...
Deep learning is a promising class of techniques for controlling an autonomous vehicle. However, fun...
Deep learning is a promising class of techniques for controlling an autonomous vehicle. However, fu...
In the past few years, there has been much research in the field of Autonomous Vehicles (AV). If AVs...
In the past few years, there has been much research in the field of Autonomous Vehicles (AV). If AVs...
In recent years, self-driving vehicles have become a holy grail technology that, once fully develope...
Fully automated vehicles have the potential to increase road safety and improve traffic flow by taki...
Autonomous driving systems are crucial complicated cyber–physical systems that combine physical envi...
Deep learning is a promising class of techniques for controlling an autonomous vehicle. However, fun...
Learning-based methods are promising for tackling the inherent nonlinearity and model uncertainty in...
Learning-based methods are promising for tackling the inherent nonlinearity and model uncertainty in...
With the development of artificial intelligence,the field of autonomous driving is also growing.The ...
In recent years, self-driving vehicles have become a holy grail technology that, once fully develope...
This paper presents a novel model-reference reinforcement learning control method for uncertain auto...
This paper presents a novel model-reference reinforcement learning algorithm for the intelligent tra...
The autonomous driving research area has gained popularity over the past decade, even more with the ...
Deep learning is a promising class of techniques for controlling an autonomous vehicle. However, fun...
Deep learning is a promising class of techniques for controlling an autonomous vehicle. However, fu...
In the past few years, there has been much research in the field of Autonomous Vehicles (AV). If AVs...
In the past few years, there has been much research in the field of Autonomous Vehicles (AV). If AVs...
In recent years, self-driving vehicles have become a holy grail technology that, once fully develope...
Fully automated vehicles have the potential to increase road safety and improve traffic flow by taki...
Autonomous driving systems are crucial complicated cyber–physical systems that combine physical envi...
Deep learning is a promising class of techniques for controlling an autonomous vehicle. However, fun...
Learning-based methods are promising for tackling the inherent nonlinearity and model uncertainty in...
Learning-based methods are promising for tackling the inherent nonlinearity and model uncertainty in...
With the development of artificial intelligence,the field of autonomous driving is also growing.The ...
In recent years, self-driving vehicles have become a holy grail technology that, once fully develope...
This paper presents a novel model-reference reinforcement learning control method for uncertain auto...
This paper presents a novel model-reference reinforcement learning algorithm for the intelligent tra...