Grasping an object is a task that inherently needs to be treated in a hybrid fashion. The system must decide both where and how to grasp the object. While selecting where to grasp requires learning about the object as a whole, the execution only needs to reactively adapt to the context close to the grasps location. We propose a hierarchical controller that reflects the structure of these two sub-problems, and attempts to learn solutions that work for both. A hybrid architecture is employed by the controller to make use of various machine learning methods that can cope with the large amount of uncertainty inherent to the task. The controllers upper level selects where to grasp the object using a reinforcement learner, while the lower level...
Autonomous robot systems operating in an uncertain environment have to be reactive and adaptive in o...
Abstract — In this work we present a reinforcement learning system for autonomous reaching and grasp...
Abstract — Control-based approaches to grasp synthesis create grasping behavior by sequencing and co...
Grasping an object is a task that inherently needs to be treated in a hybrid fashion. The system mus...
One of the main challenges in the field of robotics is to build machines that can function intellige...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Grasping is an essential component for robotic manipulation and has been investigated for decades. P...
A learning‐based approach to autonomous robot grasping is presented. Pattern recognition techniques ...
Grasping objects in a smooth humanlike motion, instead of the more typical pick-and-place approach, ...
We describe a reactive robotic control system which incorporates aspects of machine learning to impr...
Industrial automation requires robot dexterity to automate many processes such as product assembling...
While robots are extensively used in factories, our industry hasn't yet been able to prepare them fo...
Reactive grasping of objects is an essential capability of autonomous robot manipulation, which is y...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Autonomous robot systems operating in an uncertain environment have to be reactive and adaptive in o...
Abstract — In this work we present a reinforcement learning system for autonomous reaching and grasp...
Abstract — Control-based approaches to grasp synthesis create grasping behavior by sequencing and co...
Grasping an object is a task that inherently needs to be treated in a hybrid fashion. The system mus...
One of the main challenges in the field of robotics is to build machines that can function intellige...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
Grasping is an essential component for robotic manipulation and has been investigated for decades. P...
A learning‐based approach to autonomous robot grasping is presented. Pattern recognition techniques ...
Grasping objects in a smooth humanlike motion, instead of the more typical pick-and-place approach, ...
We describe a reactive robotic control system which incorporates aspects of machine learning to impr...
Industrial automation requires robot dexterity to automate many processes such as product assembling...
While robots are extensively used in factories, our industry hasn't yet been able to prepare them fo...
Reactive grasping of objects is an essential capability of autonomous robot manipulation, which is y...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
Autonomous robot systems operating in an uncertain environment have to be reactive and adaptive in o...
Abstract — In this work we present a reinforcement learning system for autonomous reaching and grasp...
Abstract — Control-based approaches to grasp synthesis create grasping behavior by sequencing and co...