This paper introduces a new method to solve tactical decision making problems for highway lane changes. In the system design, reference sets for low level controllers are employed to formulate semantic meaningful actions used by reinforcement learning algorithm. Safety is ensured by preemptively shielding the Markov decision process (MDP) from unsafe actions. This frees the agent to focus on learning how to interact efficiently with the surrounding traffic. By introducing human demonstration with supervised loss as better exploration strategy, the learning process and initial performance are boosted further.\ua0\ua9 2019 IEEE
Over the last two decades, autonomous driving has progressed from science fiction to a real possibil...
Summarization: Lane changes are a vital part of vehicle motions on roads, affecting surrounding vehi...
Semi-autonomous driving innovations aim to bridge the gap to fully autonomous driving by co-operatin...
As an indispensable branch of machine learning (ML), reinforcement learning (RL) plays a prominent r...
Decision-making is critical for lane change in autonomous driving. Reinforcement learning (RL) algor...
International audienceLane change is a crucial vehicle maneuver which needs coordination with surrou...
Autonomous driving technology can significantly improve transportation by saving lives and social co...
Autonomous driving technology can significantly improve transportation by saving lives and social co...
\ua9 2019 IEEE. In this paper, we propose a decision making algorithm intended for automated vehicle...
Following man-made rules in the traditional control method of autonomous driving causes limitations ...
Recent advances in Deep Reinforcement Learning have sparked new interest in many different research ...
Quantifying and encoding occupants’ preferences as an objective function for the tactical decision m...
Autonomous driving decision-making is a challenging task due to the inherent complexity and uncertai...
This paper introduces a method, based on deep reinforcement learning, for automatically generating a...
Autonomous driving is an active field of research in academia and industry. On the way to the ambiti...
Over the last two decades, autonomous driving has progressed from science fiction to a real possibil...
Summarization: Lane changes are a vital part of vehicle motions on roads, affecting surrounding vehi...
Semi-autonomous driving innovations aim to bridge the gap to fully autonomous driving by co-operatin...
As an indispensable branch of machine learning (ML), reinforcement learning (RL) plays a prominent r...
Decision-making is critical for lane change in autonomous driving. Reinforcement learning (RL) algor...
International audienceLane change is a crucial vehicle maneuver which needs coordination with surrou...
Autonomous driving technology can significantly improve transportation by saving lives and social co...
Autonomous driving technology can significantly improve transportation by saving lives and social co...
\ua9 2019 IEEE. In this paper, we propose a decision making algorithm intended for automated vehicle...
Following man-made rules in the traditional control method of autonomous driving causes limitations ...
Recent advances in Deep Reinforcement Learning have sparked new interest in many different research ...
Quantifying and encoding occupants’ preferences as an objective function for the tactical decision m...
Autonomous driving decision-making is a challenging task due to the inherent complexity and uncertai...
This paper introduces a method, based on deep reinforcement learning, for automatically generating a...
Autonomous driving is an active field of research in academia and industry. On the way to the ambiti...
Over the last two decades, autonomous driving has progressed from science fiction to a real possibil...
Summarization: Lane changes are a vital part of vehicle motions on roads, affecting surrounding vehi...
Semi-autonomous driving innovations aim to bridge the gap to fully autonomous driving by co-operatin...