Dexterous manipulation enables repositioning of objects and tools within a robot’s hand. When applying dexterous manipulation to unknown objects, exact object models are not available. Instead of relying on models, compliance and tactile feedback can be exploited to adapt to unknown objects. However, compliant hands and tactile sensors add complexity and are themselves difficult to model. Hence, we propose acquiring in-hand manipulation skills through reinforcement learning, which does not require analytic dynamics or kinematics models. In this paper, we show that this approach successfully acquires a tactile manipulation skill using a passively compliant hand. Additionally, we show that the learned tactile skill generalizes to ...
Autonomous dexterous manipulation (i.e., reorienting objects with the fingertips) remains beyond the...
Learning complex behaviors through reinforcement learning is particularly challenging when reward is...
International audienceLearning complex behaviors through reinforcement learning is particularly chal...
Abstract — Dexterous manipulation enables repositioning of objects and tools within a robot’s hand. ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Dexterous robotic manipulation of unknown objects can open the way to novel tasks and applications o...
Industrial manipulators are capable of completing a wide range of tasks. One of these tasks is obje...
We show that a purely tactile dextrous in-hand manipulation task with continuous regrasping, requiri...
We show that a purely tactile dextrous in-hand manipulation task with continuous regrasping, requiri...
Autonomous dexterous manipulation (i.e., reorienting objects with the fingertips) remains beyond the...
Autonomous dexterous manipulation (i.e., reorienting objects with the fingertips) remains beyond the...
Learning complex behaviors through reinforcement learning is particularly challenging when reward is...
International audienceLearning complex behaviors through reinforcement learning is particularly chal...
Abstract — Dexterous manipulation enables repositioning of objects and tools within a robot’s hand. ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Currently, robots display manipulation capabilities that translate into actions such as picking and ...
Dexterous robotic manipulation of unknown objects can open the way to novel tasks and applications o...
Industrial manipulators are capable of completing a wide range of tasks. One of these tasks is obje...
We show that a purely tactile dextrous in-hand manipulation task with continuous regrasping, requiri...
We show that a purely tactile dextrous in-hand manipulation task with continuous regrasping, requiri...
Autonomous dexterous manipulation (i.e., reorienting objects with the fingertips) remains beyond the...
Autonomous dexterous manipulation (i.e., reorienting objects with the fingertips) remains beyond the...
Learning complex behaviors through reinforcement learning is particularly challenging when reward is...
International audienceLearning complex behaviors through reinforcement learning is particularly chal...