Visual navigation is essential for many applications in robotics, from manipulation, through mobile robotics to automated driving. Deep reinforcement learning (DRL) provides an elegant map-free approach integrating image processing, localization, and planning in one module, which can be trained and therefore optimized for a given environment. However, to date, DRL-based visual navigation was validated exclusively in simulation, where the simulator provides information that is not available in the real world, e.g., the robot's position or segmentation masks. This precludes the use of the learned policy on a real robot. Therefore, we present a novel approach that enables a direct deployment of the trained policy on real robots. We have design...
Navigating complex indoor environments requires a deep understanding of the space the robotic agent ...
Model-free reinforcement learning has recently been shown to be effective at learning navigation pol...
Model-free reinforcement learning has recently been shown to be effective at learning navigation pol...
Navigation is the fundamental capability of mobile robots which allows them to move fromone point to...
Navigation is the fundamental capability of mobile robots which allows them to move fromone point to...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
In this paper, a Deep Reinforcement Learning (DRL)-based approach for learning mobile cleaning robot...
A study is presented on visual navigation of wheeled mobile robots (WMR) using deep reinforcement le...
Deep reinforcement learning (RL) has been successfully applied to a variety of game-like environment...
This paper presents a spatial navigation task on a mobile robot by employing a deep reinforcement le...
Autonomous indoor navigation requires an elab- orated and accurate algorithmic stack, able to guide ...
Autonomous indoor navigation requires an elab- orated and accurate algorithmic stack, able to guide ...
In this contribution, we present our research line on Deep Reinforcement Learning approaches for rob...
It is extremely difficult to teach robots the skills that humans take for granted. Understanding the...
Navigating complex indoor environments requires a deep understanding of the space the robotic agent ...
Model-free reinforcement learning has recently been shown to be effective at learning navigation pol...
Model-free reinforcement learning has recently been shown to be effective at learning navigation pol...
Navigation is the fundamental capability of mobile robots which allows them to move fromone point to...
Navigation is the fundamental capability of mobile robots which allows them to move fromone point to...
Reliable indoor navigation in the presence of dynamic obstacles is an essential capability for mobil...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
In this paper, a Deep Reinforcement Learning (DRL)-based approach for learning mobile cleaning robot...
A study is presented on visual navigation of wheeled mobile robots (WMR) using deep reinforcement le...
Deep reinforcement learning (RL) has been successfully applied to a variety of game-like environment...
This paper presents a spatial navigation task on a mobile robot by employing a deep reinforcement le...
Autonomous indoor navigation requires an elab- orated and accurate algorithmic stack, able to guide ...
Autonomous indoor navigation requires an elab- orated and accurate algorithmic stack, able to guide ...
In this contribution, we present our research line on Deep Reinforcement Learning approaches for rob...
It is extremely difficult to teach robots the skills that humans take for granted. Understanding the...
Navigating complex indoor environments requires a deep understanding of the space the robotic agent ...
Model-free reinforcement learning has recently been shown to be effective at learning navigation pol...
Model-free reinforcement learning has recently been shown to be effective at learning navigation pol...