In this work we focus on improving the efficiency and generalisation of learned navigation strategies when transferred from its training environment to previously unseen ones. We present an extension of the residual reinforcement learning framework from the robotic manipulation literature and adapt it to the vast and unstructured environments that mobile robots can operate in. The concept is based on learning a residual control effect to add to a typical sub-optimal classical controller in order to close the performance gap, whilst guiding the exploration process during training for improved data efficiency. We exploit this tight coupling and propose a novel deployment strategy, switching Residual Reactive Navigation (sRRN), which yields ef...
An intelligent mobile robot must be able to autonomously navigate in complex environments, so that i...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
Advancements in robotics and artificial intelligence have paved the way for autonomous agents to per...
Mobile robots that operate in human environments require the ability to safely navigate among humans...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...
Reactive controllers has been widely used in mobile robots since they are able to achieve suc-cessfu...
Autonomous navigation of robots in unknown environments from their current position to a desired tar...
Reactive controllers are widely used in mobile robots because they are able to achieve successful pe...
This paper describes a reinforcement connec-tionist learning mechanism that allows a goal-directed a...
Deep Reinforcement Learning (DRL) has been applied successfully to many robotic applications. Howeve...
Online navigation with known target and unknown obstacles is an interesting problem in mobile roboti...
Residual reinforcement learning (RL) has been proposed as a way to solve challenging robotic tasks b...
In this paper, a control approach based on reinforcement learning is present for a robot to complete...
This thesis is focused on deep reinforcement learning for mobile robot navigation in unstructured en...
An intelligent mobile robot must be able to autonomously navigate in complex environments, so that i...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
Advancements in robotics and artificial intelligence have paved the way for autonomous agents to per...
Mobile robots that operate in human environments require the ability to safely navigate among humans...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
Reinforcement learning is a model-free technique to solve decision-making problems by learning the b...
Reactive controllers has been widely used in mobile robots since they are able to achieve suc-cessfu...
Autonomous navigation of robots in unknown environments from their current position to a desired tar...
Reactive controllers are widely used in mobile robots because they are able to achieve successful pe...
This paper describes a reinforcement connec-tionist learning mechanism that allows a goal-directed a...
Deep Reinforcement Learning (DRL) has been applied successfully to many robotic applications. Howeve...
Online navigation with known target and unknown obstacles is an interesting problem in mobile roboti...
Residual reinforcement learning (RL) has been proposed as a way to solve challenging robotic tasks b...
In this paper, a control approach based on reinforcement learning is present for a robot to complete...
This thesis is focused on deep reinforcement learning for mobile robot navigation in unstructured en...
An intelligent mobile robot must be able to autonomously navigate in complex environments, so that i...
In order to create mobile robots that can autonomously navigate real-world environments, we need gen...
Advancements in robotics and artificial intelligence have paved the way for autonomous agents to per...