In the context of object interaction and manipulation, one characteristic of a robust grasp is its ability to comply with external perturbations applied to the grasped object while still maintaining the grasp. In this work we introduce an approach for grasp adaptation which learns a statistical model to adapt hand posture solely based on the perceived contact between the object and fingers. Using a multi-step learning procedure, the model dataset is built by first demonstrating an initial hand posture, which is then physically corrected by a human teacher pressing on the fingertips, exploiting compliance in the robot hand. The learner then replays the resulting sequence of hand postures, to generate a dataset of posture-contact pairs that a...
Abstract — Generalising dexterous grasps to novel objects is an open problem. We show how to learn g...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Abstract — To perform robust grasping, a multi-fingered robotic hand should be able to adapt its gra...
To perform robust grasping, a multi-fingered robotic hand should be able to adapt its grasping confi...
Performing manipulation tasks interactively in real environments requires a high degree of accuracy ...
For humans, the process of grasping an object relies heavily on rich tactile feedback. Most recent r...
This paper presents an efficient method to decide robust grasps given new objects using example-base...
As technology continues to evolve, robots are becoming an intrinsic part of our lives. While robots ...
Dexterous manipulation enables repositioning of objects and tools within a robot’s hand. When apply...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Our aim is to predict the stability of a grasp from the perceptions available to a robot before atte...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Abstract — Generalising dexterous grasps to novel objects is an open problem. We show how to learn g...
Abstract — Generalising dexterous grasps to novel objects is an open problem. We show how to learn g...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Abstract — To perform robust grasping, a multi-fingered robotic hand should be able to adapt its gra...
To perform robust grasping, a multi-fingered robotic hand should be able to adapt its grasping confi...
Performing manipulation tasks interactively in real environments requires a high degree of accuracy ...
For humans, the process of grasping an object relies heavily on rich tactile feedback. Most recent r...
This paper presents an efficient method to decide robust grasps given new objects using example-base...
As technology continues to evolve, robots are becoming an intrinsic part of our lives. While robots ...
Dexterous manipulation enables repositioning of objects and tools within a robot’s hand. When apply...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Our aim is to predict the stability of a grasp from the perceptions available to a robot before atte...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Abstract — Generalising dexterous grasps to novel objects is an open problem. We show how to learn g...
Abstract — Generalising dexterous grasps to novel objects is an open problem. We show how to learn g...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...
Generalising dexterous grasps to novel objects is an open problem. We show how to learn grasps for h...