Abstract—We present a novel approach to learn and combine multiple input to output mappings. Our system can employ the mappings to find solutions that satisfy multiple task constraints simultaneously. This is done by training a network for each map-ping independently and maintaining all solutions to multivalued mappings. Redundancies are resolved online through dynamic competitions in neural fields. The performance of the approach is demonstrated in the example application of inverse kinematics learning. We show simulation results for the humanoid robot iCub where we trained two networks: One to learn the kinematics of the robot’s arm and one to learn which postures are close to joint limits. We show how our approach can be used to easily i...
Abstract. Planning movements for humanoid robots is still a major challenge due to the very high deg...
Abstract — Learning models of the environment is one of the fundamental tasks of mobile robots since...
Walter JA. PSOM Network: Learning with Few Examples. In: Proceedings 1998 IEEE International Confer...
We present a novel approach to learn and combine multiple input to output mappings. Our system can e...
Abstract — We present a new approach to cope with unknown redundant systems. For this we present i) ...
A fast and efficient inverse kinematics solution is central to robotic planning. Tradi- tionally, al...
Precise sensorimotor mappings between various motor, joint, sensor, and abstract physical spaces are...
Wrede S, Johannfunke M, Lemme A, et al. Interactive Learning of Inverse Kinematics with Nullspace Co...
When transferring knowledge between reinforcement learning agents with different state representatio...
Inverse Kinematics (IK) solves the problem of mapping from the Cartesian space to the joint configur...
Neumann K, Rolf M, Steil JJ, Gienger M. Learning Inverse Kinematics for Pose-Constraint Bi-Manual Mo...
The engineering of humanoid or similar robot systems requires frameworks and architectures that supp...
Learning models of the environment is one of the fundamental tasks of mobile robots since maps are n...
Reinhart F, Steil JJ. Neural learning and dynamical selection of redundant solutions for inverse kin...
This paper presents a neural controller that learns goal-oriented obstacle-avoiding reaction strateg...
Abstract. Planning movements for humanoid robots is still a major challenge due to the very high deg...
Abstract — Learning models of the environment is one of the fundamental tasks of mobile robots since...
Walter JA. PSOM Network: Learning with Few Examples. In: Proceedings 1998 IEEE International Confer...
We present a novel approach to learn and combine multiple input to output mappings. Our system can e...
Abstract — We present a new approach to cope with unknown redundant systems. For this we present i) ...
A fast and efficient inverse kinematics solution is central to robotic planning. Tradi- tionally, al...
Precise sensorimotor mappings between various motor, joint, sensor, and abstract physical spaces are...
Wrede S, Johannfunke M, Lemme A, et al. Interactive Learning of Inverse Kinematics with Nullspace Co...
When transferring knowledge between reinforcement learning agents with different state representatio...
Inverse Kinematics (IK) solves the problem of mapping from the Cartesian space to the joint configur...
Neumann K, Rolf M, Steil JJ, Gienger M. Learning Inverse Kinematics for Pose-Constraint Bi-Manual Mo...
The engineering of humanoid or similar robot systems requires frameworks and architectures that supp...
Learning models of the environment is one of the fundamental tasks of mobile robots since maps are n...
Reinhart F, Steil JJ. Neural learning and dynamical selection of redundant solutions for inverse kin...
This paper presents a neural controller that learns goal-oriented obstacle-avoiding reaction strateg...
Abstract. Planning movements for humanoid robots is still a major challenge due to the very high deg...
Abstract — Learning models of the environment is one of the fundamental tasks of mobile robots since...
Walter JA. PSOM Network: Learning with Few Examples. In: Proceedings 1998 IEEE International Confer...