We propose a scheme for training a computerized agent to perform complex human tasks such as highway steering. The scheme is designed to follow a natural learning process whereby a human instructor teaches a computerized trainee. It enables leveraging the weak supervision abilities of a (human) instructor, who, while unable to perform well herself at the required task, can provide coherent and learnable instantaneous reward signals to the computerized trainee. The learning process consists of three supervised elements followed by reinforcement learning. The supervised learning stages are: (i) supervised imitation learning; (ii) supervised reward induction; and (iii) supervised safety module construction. We implemented this scheme using dee...
The goal of this thesis is a creation of an autonomous agent that can control a vehicle. The agent u...
Autonomous car racing is a major challenge in robotics. It raises fundamental problems for classical...
The applications of deep reinforcement learning to racing games so far struggled to reach a performa...
Autonomous cars must be capable to operate in various conditions and learn from unforeseen scenario...
Abstract Deep reinforcement learning has achieved some remarkable results in self‐driving. There is ...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
Autonomous vehicles (AVs) have been developed for many years. Perception, decision making, path plan...
With the rapid development of autonomous driving and artificial intelligence technology, end-to-end ...
We demonstrate the first application of deep reinforcement learning to autonomous driving. From rand...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
Using reinforcement learning as a part of a Guidance, Navigation and Control (GNC) system is a relat...
Abstract Deep reinforcement learning is poised to be a revolutionised step towards newer possibiliti...
In this work, we combine Curriculum Learning with Deep Reinforcement Learning to learn without any p...
Autonomous driving is an active field of research in academia and industry. On the way to the ambiti...
The goal of this thesis is a creation of an autonomous agent that can control a vehicle. The agent u...
Autonomous car racing is a major challenge in robotics. It raises fundamental problems for classical...
The applications of deep reinforcement learning to racing games so far struggled to reach a performa...
Autonomous cars must be capable to operate in various conditions and learn from unforeseen scenario...
Abstract Deep reinforcement learning has achieved some remarkable results in self‐driving. There is ...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
It is crucial for robots to autonomously steer in complex environments safely without colliding with...
Autonomous vehicles (AVs) have been developed for many years. Perception, decision making, path plan...
With the rapid development of autonomous driving and artificial intelligence technology, end-to-end ...
We demonstrate the first application of deep reinforcement learning to autonomous driving. From rand...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
Using reinforcement learning as a part of a Guidance, Navigation and Control (GNC) system is a relat...
Abstract Deep reinforcement learning is poised to be a revolutionised step towards newer possibiliti...
In this work, we combine Curriculum Learning with Deep Reinforcement Learning to learn without any p...
Autonomous driving is an active field of research in academia and industry. On the way to the ambiti...
The goal of this thesis is a creation of an autonomous agent that can control a vehicle. The agent u...
Autonomous car racing is a major challenge in robotics. It raises fundamental problems for classical...
The applications of deep reinforcement learning to racing games so far struggled to reach a performa...