Realistic traffic simulation is crucial for developing self-driving software in a safe and scalable manner prior to real-world deployment. Typically, imitation learning (IL) is used to learn human-like traffic agents directly from real-world observations collected offline, but without explicit specification of traffic rules, agents trained from IL alone frequently display unrealistic infractions like collisions and driving off the road. This problem is exacerbated in out-of-distribution and long-tail scenarios. On the other hand, reinforcement learning (RL) can train traffic agents to avoid infractions, but using RL alone results in unhuman-like driving behaviors. We propose Reinforcing Traffic Rules (RTR), a holistic closed-loop learning o...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Agents in multi-agent traffic simulation tend to be more dependent on the rules and existing instruc...
Autonomous racing with scaled race cars has gained increasing attention as an effective approach for...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
Traffic simulation has gained a lot of interest for massive safety evaluation of self-driving system...
In this paper, we propose Sparse Imitation Reinforcement Learning (SIRL), a hybrid end-to-end contro...
In the autonomous driving field, fusion of human knowledge into Deep Reinforcement Learning (DRL) is...
The field of Deep Reinforcement Learning has evolved significantly over the last few years. However,...
Deep reinforcement learning (DRL) has been demonstrated to be effective for several complex decision...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
Safely navigating through an urban environment without violating any traffic rules is a crucial perf...
Traffic simulators are used to generate data for learning in intelligent transportation systems (ITS...
Reinforcement learning (RL) is a booming area in artificial intelligence. The applications of RL are...
The last few years marked a substantial development in the domain of Deep Reinforcement Learning. Ho...
Ineffective traffic signal control is one of the major causes of congestion in urban road networks. ...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Agents in multi-agent traffic simulation tend to be more dependent on the rules and existing instruc...
Autonomous racing with scaled race cars has gained increasing attention as an effective approach for...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
Traffic simulation has gained a lot of interest for massive safety evaluation of self-driving system...
In this paper, we propose Sparse Imitation Reinforcement Learning (SIRL), a hybrid end-to-end contro...
In the autonomous driving field, fusion of human knowledge into Deep Reinforcement Learning (DRL) is...
The field of Deep Reinforcement Learning has evolved significantly over the last few years. However,...
Deep reinforcement learning (DRL) has been demonstrated to be effective for several complex decision...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
Safely navigating through an urban environment without violating any traffic rules is a crucial perf...
Traffic simulators are used to generate data for learning in intelligent transportation systems (ITS...
Reinforcement learning (RL) is a booming area in artificial intelligence. The applications of RL are...
The last few years marked a substantial development in the domain of Deep Reinforcement Learning. Ho...
Ineffective traffic signal control is one of the major causes of congestion in urban road networks. ...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
Agents in multi-agent traffic simulation tend to be more dependent on the rules and existing instruc...
Autonomous racing with scaled race cars has gained increasing attention as an effective approach for...