Models and methods are presented which enable a humanoid robot to learn reusable, adaptive grasping skills. Mechanisms and principles in human grasp behavior are studied. The findings are used to develop a grasp representation capable of retaining specific motion characteristics and of adapting to different objects and tasks. Based on the representation a framework is proposed which enables the robot to observe human grasping, learn grasp representations, and infer executable grasping actions
A learning‐based approach to autonomous robot grasping is presented. Pattern recognition techniques ...
Humans often learn to manipulate objects by observing other people. In much the same way, robots ca...
This paper addresses the problem of obtaining the required motions for a humanoid robot to perform g...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
Röthling F. Real robot hand grasping using simulation-based optimisation of portable strategies. Bie...
Multi-fingered robot grasping is a challenging problem that is difficult to tackle using hand-coded...
In the future, robots will enter our everyday lives to help us with various tasks. For a complete in...
This thesis addresses the question of how to teach dynamic motor skills to synthetic humanoids. A ge...
Abstract — We address the problem of representations for anthropomorphic robot hands and their suita...
In the context of object interaction and manipulation, one characteristic of a robust grasp is its a...
Existing grasping mechanisms focus on executing accurate grasps which are not always suitable for th...
In this work, a supervised learning strategy has been applied in conjunction with a control strategy...
This paper presents an efficient method to decide robust grasps given new objects using example-base...
Equipping robots with complex capabilities still requires a great amount of effort. In this work, a ...
This thesis will investigate different robotic manipulation and grasping approaches. It will present...
A learning‐based approach to autonomous robot grasping is presented. Pattern recognition techniques ...
Humans often learn to manipulate objects by observing other people. In much the same way, robots ca...
This paper addresses the problem of obtaining the required motions for a humanoid robot to perform g...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
Röthling F. Real robot hand grasping using simulation-based optimisation of portable strategies. Bie...
Multi-fingered robot grasping is a challenging problem that is difficult to tackle using hand-coded...
In the future, robots will enter our everyday lives to help us with various tasks. For a complete in...
This thesis addresses the question of how to teach dynamic motor skills to synthetic humanoids. A ge...
Abstract — We address the problem of representations for anthropomorphic robot hands and their suita...
In the context of object interaction and manipulation, one characteristic of a robust grasp is its a...
Existing grasping mechanisms focus on executing accurate grasps which are not always suitable for th...
In this work, a supervised learning strategy has been applied in conjunction with a control strategy...
This paper presents an efficient method to decide robust grasps given new objects using example-base...
Equipping robots with complex capabilities still requires a great amount of effort. In this work, a ...
This thesis will investigate different robotic manipulation and grasping approaches. It will present...
A learning‐based approach to autonomous robot grasping is presented. Pattern recognition techniques ...
Humans often learn to manipulate objects by observing other people. In much the same way, robots ca...
This paper addresses the problem of obtaining the required motions for a humanoid robot to perform g...