This paper introduces a machine learning based system for controlling a robotic manipulator with visual perception only. The capability to autonomously learn robot controllers solely from raw-pixel images and without any prior knowledge of configuration is shown for the first time. We build upon the success of recent deep reinforcement learning and develop a system for learning target reaching with a three-joint robot manipulator using external visual observation. A Deep Q Network (DQN) was demonstrated to perform target reaching after training in simulation. Transferring the network to real hardware and real observation in a naive approach failed, but experiments show that the network works when replacing camera images with synthetic image...
With the growing trend of autonomous machines, the combination of supervised and unsupervised machin...
Path planning for robotic manipulators has proven to be a challenging issue in industrial applicatio...
In this work, we discuss two implementations that predict antipodal grasps for novel objects: A deep...
This paper introduces a machine learning based system for controlling a robotic manipulator with vis...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...
Grasping unfamiliar objects (unknown during training) based on limited prior knowledge is a challeng...
Industrial robot manipulators are widely used for repetitive applications that require high precisi...
This paper focuses on developing a robotic object grasping approach that possesses the ability of se...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...
While deep learning has had significant successes in computer vision thanks to the abundance of visu...
Grasping objects is a critical but challenging aspect of robotic manipulation. Recent studies have c...
Recently, with the development of Artificial Intelligence and Deep Learning in the field of robotics...
In recent years, deep reinforcement learning has increasingly contributed to the development of robo...
Robotic manipulation challenges, such as grasping and object manipulation, have been tackled success...
International audienceDeep learning has provided new ways of manipulating, processing and analyzing ...
With the growing trend of autonomous machines, the combination of supervised and unsupervised machin...
Path planning for robotic manipulators has proven to be a challenging issue in industrial applicatio...
In this work, we discuss two implementations that predict antipodal grasps for novel objects: A deep...
This paper introduces a machine learning based system for controlling a robotic manipulator with vis...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...
Grasping unfamiliar objects (unknown during training) based on limited prior knowledge is a challeng...
Industrial robot manipulators are widely used for repetitive applications that require high precisi...
This paper focuses on developing a robotic object grasping approach that possesses the ability of se...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...
While deep learning has had significant successes in computer vision thanks to the abundance of visu...
Grasping objects is a critical but challenging aspect of robotic manipulation. Recent studies have c...
Recently, with the development of Artificial Intelligence and Deep Learning in the field of robotics...
In recent years, deep reinforcement learning has increasingly contributed to the development of robo...
Robotic manipulation challenges, such as grasping and object manipulation, have been tackled success...
International audienceDeep learning has provided new ways of manipulating, processing and analyzing ...
With the growing trend of autonomous machines, the combination of supervised and unsupervised machin...
Path planning for robotic manipulators has proven to be a challenging issue in industrial applicatio...
In this work, we discuss two implementations that predict antipodal grasps for novel objects: A deep...