Abstract Deep reinforcement learning has achieved some remarkable results in self‐driving. There is quite a lot of work to do in the area of autonomous driving with high real‐time requirements because of the inefficiency of reinforcement learning in exploring large continuous motion spaces. A deep imitation reinforcement learning (DIRL) framework is presented to learn control policies of self‐driving vehicles, which is based on a deep deterministic policy gradient algorithm (DDPG) by vision. The DIRL framework comprises two components, the perception module and the control module, using imitation learning (IL) and DDPG, respectively. The perception module employs the IL network as an encoder which processes an image into a low‐dimensional f...
We demonstrate the first application of deep reinforcement learning to autonomous driving. From rand...
Deep learning techniques have shown success in learning from raw high dimensional data in various a...
The applications of deep reinforcement learning to racing games so far struggled to reach a performa...
We propose a scheme for training a computerized agent to perform complex human tasks such as highway...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
In this project, an RGB camera will be used as data input to explore an end-to-end method based on v...
Autonomous vehicles (AVs) have been developed for many years. Perception, decision making, path plan...
Autonomous urban driving navigation is still an open problem and has ample room for improvement in u...
The state-of-the-art decision and planning approaches for autonomous vehicles have moved away from m...
Autonomous cars must be capable to operate in various conditions and learn from unforeseen scenario...
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...
Deep learning techniques have shown success in learning from raw high dimensional data in various a...
The applications of deep reinforcement learning to racing games so far struggled to reach a performa...
We propose a scheme for training a computerized agent to perform complex human tasks such as highway...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
With the implementation of reinforcement learning (RL) algorithms, current state-of-art autonomous v...
In this project, an RGB camera will be used as data input to explore an end-to-end method based on v...
Autonomous vehicles (AVs) have been developed for many years. Perception, decision making, path plan...
Autonomous urban driving navigation is still an open problem and has ample room for improvement in u...
The state-of-the-art decision and planning approaches for autonomous vehicles have moved away from m...
Autonomous cars must be capable to operate in various conditions and learn from unforeseen scenario...
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...
Deep learning techniques have shown success in learning from raw high dimensional data in various a...
The applications of deep reinforcement learning to racing games so far struggled to reach a performa...