While there have been advancements in autonomous driving control and traffic simulation, there have been little to no works exploring the unification of both with deep learning. Works in both areas seem to focus on entirely different exclusive problems, yet traffic and driving have inherent semantic relations in the real world. In this paper, we present a generalizable distillation-style method for traffic-informed imitation learning that directly optimizes a autonomous driving policy for the overall benefit of faster traffic flow and lower energy consumption. We capitalize on improving the arbitrarily defined supervision of speed control in imitation learning systems, as most driving research focus on perception and steering. Moreover, our...
This thesis presents two learning based approaches to solve the autonomous driving problem: end-to-e...
The field of Deep Reinforcement Learning has evolved significantly over the last few years. However,...
Realistic traffic simulation is crucial for developing self-driving software in a safe and scalable ...
Autonomous racing with scaled race cars has gained increasing attention as an effective approach for...
More research attention has recently been given to end-to-end autonomous driving technologies where ...
Thesis (Ph.D.)--University of Washington, 2022With an emphasis on longitudinal driving, this dissert...
High-fidelity driving simulators immerse a driver in a highly realistic virtual environment for the ...
In this work, we present a rigorous end-to-end control strategy for autonomous vehicles aimed at min...
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...
Conditional imitation learning (CIL) trains deep neural networks, in an end-to-end manner, to mimic ...
Traffic simulation has gained a lot of interest for massive safety evaluation of self-driving system...
An accurate model of the environment and the dynamic agents acting in it offers great potential for ...
The ability of a vehicle to navigate safely through any environment relies on its driver having an a...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
This thesis presents two learning based approaches to solve the autonomous driving problem: end-to-e...
The field of Deep Reinforcement Learning has evolved significantly over the last few years. However,...
Realistic traffic simulation is crucial for developing self-driving software in a safe and scalable ...
Autonomous racing with scaled race cars has gained increasing attention as an effective approach for...
More research attention has recently been given to end-to-end autonomous driving technologies where ...
Thesis (Ph.D.)--University of Washington, 2022With an emphasis on longitudinal driving, this dissert...
High-fidelity driving simulators immerse a driver in a highly realistic virtual environment for the ...
In this work, we present a rigorous end-to-end control strategy for autonomous vehicles aimed at min...
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...
Conditional imitation learning (CIL) trains deep neural networks, in an end-to-end manner, to mimic ...
Traffic simulation has gained a lot of interest for massive safety evaluation of self-driving system...
An accurate model of the environment and the dynamic agents acting in it offers great potential for ...
The ability of a vehicle to navigate safely through any environment relies on its driver having an a...
In this thesis, we will be investigating the current landscape of state-of-the-art methods using dee...
This thesis presents two learning based approaches to solve the autonomous driving problem: end-to-e...
The field of Deep Reinforcement Learning has evolved significantly over the last few years. However,...
Realistic traffic simulation is crucial for developing self-driving software in a safe and scalable ...