While deep learning has had significant successes in computer vision thanks to the abundance of visual data, collecting sufficiently large real-world datasets for robot learning can be costly. To increase the practicality of these techniques on real robots, we propose a modular deep reinforcement learning method capable of transferring models trained in simulation to a real-world robotic task. We introduce a bottleneck between perception and control, enabling the networks to be trained independently, but then merged and fine-tuned in an end-to-end manner to further improve hand-eye coordination. On a canonical, planar visually-guided robot reaching task a fine-tuned accuracy of 1.6 pixels is achieved, a significant improvement over naive tr...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Humans are remarkable at manipulating unfamiliar objects. For the past decades of robotics, tremendo...
This thesis explores how simulation can be used to create the large amount of data required to teach...
This paper introduces a machine learning based system for controlling a robotic manipulator with vis...
Visual navigation is essential for many applications in robotics, from manipulation, through mobile ...
Grasping unfamiliar objects (unknown during training) based on limited prior knowledge is a challeng...
Grasping objects is a critical but challenging aspect of robotic manipulation. Recent studies have c...
In recent years, deep reinforcement learning has increasingly contributed to the development of robo...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...
Deep learning holds promise for learning complex patterns from data, which is especially useful when...
Deep reinforcement learning (DRL) exhibits a promising approach for controlling humanoid robot loc...
Various approaches have been proposed to learn visuo-motor policies for real-world robotic applicati...
Recently, with the development of Artificial Intelligence and Deep Learning in the field of robotics...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Humans are remarkable at manipulating unfamiliar objects. For the past decades of robotics, tremendo...
This thesis explores how simulation can be used to create the large amount of data required to teach...
This paper introduces a machine learning based system for controlling a robotic manipulator with vis...
Visual navigation is essential for many applications in robotics, from manipulation, through mobile ...
Grasping unfamiliar objects (unknown during training) based on limited prior knowledge is a challeng...
Grasping objects is a critical but challenging aspect of robotic manipulation. Recent studies have c...
In recent years, deep reinforcement learning has increasingly contributed to the development of robo...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...
Deep learning holds promise for learning complex patterns from data, which is especially useful when...
Deep reinforcement learning (DRL) exhibits a promising approach for controlling humanoid robot loc...
Various approaches have been proposed to learn visuo-motor policies for real-world robotic applicati...
Recently, with the development of Artificial Intelligence and Deep Learning in the field of robotics...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...
© 2019 IEEE. The paper is concerned with the autonomous navigation of mobile robot from the current ...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Humans are remarkable at manipulating unfamiliar objects. For the past decades of robotics, tremendo...