In this paper, we present an affordance learning system for robotic grasping. The system involves three important aspects: the affordance memory, synergy-based exploration, and a grasping control strategy using local sensor feedback. The affordance memory is modeled with a modified growing neural gas network that allows affordances to be learned quickly from a small dataset of human grasping and object features. After being trained offline, the affordance memory is used in the system to generate online motor commands for reaching and grasping control of the robot. When grasping new objects, the system can explore various grasp postures efficiently in the low dimensional synergy space because the synergies automatically avoid abnormal postur...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
Abstract — We present a method for learning object grasp affordance models in 3D from experience, an...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
In this paper, we present an affordance learning system for robotic grasping. The system involves th...
This paper describes a prototype robot grasping system that uses human grasping synergies and a self...
This paper describes a prototype robot grasping system that uses human grasping synergies and a self...
A system is described which takes synergies extracted from human grasp experiments and maps these on...
A system is described which takes synergies extracted from human grasp experiments and maps these on...
2018-07-18Robots can plan and accomplish various tasks in unknown environments by understanding the ...
Service robots are expected to autonomously and efficiently work in human-centric environments. For ...
Service robots are expected to autonomously and efficiently work in human-centric environments. For ...
Service robots are expected to autonomously and efficiently work in human-centric environments. For ...
One of the fundamental enabling mechanisms of human and animal intelligence, and equally, one of the...
One of the fundamental enabling mechanisms of human and animal intelligence, and equally, one of the...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
Abstract — We present a method for learning object grasp affordance models in 3D from experience, an...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
In this paper, we present an affordance learning system for robotic grasping. The system involves th...
This paper describes a prototype robot grasping system that uses human grasping synergies and a self...
This paper describes a prototype robot grasping system that uses human grasping synergies and a self...
A system is described which takes synergies extracted from human grasp experiments and maps these on...
A system is described which takes synergies extracted from human grasp experiments and maps these on...
2018-07-18Robots can plan and accomplish various tasks in unknown environments by understanding the ...
Service robots are expected to autonomously and efficiently work in human-centric environments. For ...
Service robots are expected to autonomously and efficiently work in human-centric environments. For ...
Service robots are expected to autonomously and efficiently work in human-centric environments. For ...
One of the fundamental enabling mechanisms of human and animal intelligence, and equally, one of the...
One of the fundamental enabling mechanisms of human and animal intelligence, and equally, one of the...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...
Abstract — We present a method for learning object grasp affordance models in 3D from experience, an...
We develop means of learning and representing object grasp affordances probabilistically. By grasp a...