This thesis will investigate different robotic manipulation and grasping approaches. It will present an overview of robotic simulation environments, and offer an evaluation of PyBullet, CoppeliaSim, and Gazebo, comparing various features. The thesis further presents a background for current approaches to robotic manipulation and grasping by describing how the robotic movement and grasping can be organized. State-of-the-Art approaches for learning robotic grasping, both using supervised methods and reinforcement learning methods are presented. Two set of experiments will be conducted in PyBullet, illustrating how Deep Reinforcement Learning methods could be applied to train a 7 degrees of freedom robotic arm to grasp objects
International audienceDeep learning has provided new ways of manipulating, processing and analyzing ...
Robotic grasping is a challenging task that has been approached in a variety of ways. Historically g...
While robots are extensively used in factories, our industry hasn't yet been able to prepare them fo...
In this work, we discuss two implementations that predict antipodal grasps for novel objects: A deep...
Robotic manipulation challenges, such as grasping and object manipulation, have been tackled success...
Providing robots with the ability to grasp objects has, despite decades of research, remained a chal...
With the rise of computation power and machine learning techniques, a shift of research interest is ...
In the framework of robotics, Reinforcement Learning (RL) deals with the learning of a task by the ...
We use findings in machine learning, developmental psychology, and neurophysiology to guide a roboti...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Grasping unfamiliar objects (unknown during training) based on limited prior knowledge is a challeng...
This paper introduces a machine learning based system for controlling a robotic manipulator with vis...
This paper focuses on developing a robotic object grasping approach that possesses the ability of se...
Röthling F. Real robot hand grasping using simulation-based optimisation of portable strategies. Bie...
Multi-step manipulation tasks in unstructured environments are extremely challenging for a robot to ...
International audienceDeep learning has provided new ways of manipulating, processing and analyzing ...
Robotic grasping is a challenging task that has been approached in a variety of ways. Historically g...
While robots are extensively used in factories, our industry hasn't yet been able to prepare them fo...
In this work, we discuss two implementations that predict antipodal grasps for novel objects: A deep...
Robotic manipulation challenges, such as grasping and object manipulation, have been tackled success...
Providing robots with the ability to grasp objects has, despite decades of research, remained a chal...
With the rise of computation power and machine learning techniques, a shift of research interest is ...
In the framework of robotics, Reinforcement Learning (RL) deals with the learning of a task by the ...
We use findings in machine learning, developmental psychology, and neurophysiology to guide a roboti...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Grasping unfamiliar objects (unknown during training) based on limited prior knowledge is a challeng...
This paper introduces a machine learning based system for controlling a robotic manipulator with vis...
This paper focuses on developing a robotic object grasping approach that possesses the ability of se...
Röthling F. Real robot hand grasping using simulation-based optimisation of portable strategies. Bie...
Multi-step manipulation tasks in unstructured environments are extremely challenging for a robot to ...
International audienceDeep learning has provided new ways of manipulating, processing and analyzing ...
Robotic grasping is a challenging task that has been approached in a variety of ways. Historically g...
While robots are extensively used in factories, our industry hasn't yet been able to prepare them fo...