In this paper, a neural network model has been designed for planning grasps of a cybernetic hand prototype by means of postural synergies. The synergies subspace is derived by means of a joint-to-joint mapping from a human hand set of grasps. A library of motor primitives of the hand in a synergy-based rendering has been built for a number of selected objects and tasks. The requirement of the task in a simplified approach is specified by the type of grasp, such as precision or power. A feedforward neural network has been trained using the grasping data from the library and running the Levenberg-Marquadt algorithm. By combining postural synergies and neural network the nonlinear relationship between the object geometric features and the hand configuration during grasping can be easily found with a good approximation. The experiments have been performed on the DEXMART hand prototype and the results demonstrate that integration of postural synergies and neural network is a promising tool toward simplified and autonomous grasping for artificial hands, such as anthropomorphic robotic hands and prostheses.
F. Ficuciello, G. Palli, C. Melchiorri, B. Siciliano (2013). Postural Synergies and Neural Network for Autonomous Grasping: a Tool for Dextrous Prosthetic and Robotic Hands. Heidelberg : Springer Berlin Heidelberg [10.1007/978-3-642-34546-3_76].
Postural Synergies and Neural Network for Autonomous Grasping: a Tool for Dextrous Prosthetic and Robotic Hands
PALLI, GIANLUCA;MELCHIORRI, CLAUDIO;
2013
Abstract
In this paper, a neural network model has been designed for planning grasps of a cybernetic hand prototype by means of postural synergies. The synergies subspace is derived by means of a joint-to-joint mapping from a human hand set of grasps. A library of motor primitives of the hand in a synergy-based rendering has been built for a number of selected objects and tasks. The requirement of the task in a simplified approach is specified by the type of grasp, such as precision or power. A feedforward neural network has been trained using the grasping data from the library and running the Levenberg-Marquadt algorithm. By combining postural synergies and neural network the nonlinear relationship between the object geometric features and the hand configuration during grasping can be easily found with a good approximation. The experiments have been performed on the DEXMART hand prototype and the results demonstrate that integration of postural synergies and neural network is a promising tool toward simplified and autonomous grasping for artificial hands, such as anthropomorphic robotic hands and prostheses.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.