Vilaplana J Molina, Coronado J Lopez
Department of Systems Engineering and Automatics, Polytechnic University of Cartagena, Campus Muralla del Mar., C/Dr Fleming S/N. 30202, Cartagena, Murcia, Spain.
Neural Netw. 2006 Jan;19(1):12-30. doi: 10.1016/j.neunet.2005.07.014. Epub 2005 Nov 21.
In this paper a neural network model for spatio-temporal coordination of hand gesture during prehension is proposed. The model includes a simplified control strategy for whole hand shaping during grasping tasks, that provides a realistic coordination among fingers. This strategy uses the increasing evidence that supports the view of a synergistic control of whole fingers during prehension. In this control scheme, only two parameters are needed to define the evolution of hand shape during the task performance. The proposal involves the design and development of a Library of Hand Gestures consisting of motor primitives for finger pre-shaping of an anthropomorphic dextrous hand. Through computer simulations, we show how neural dynamics of the model leads to simulated grasping movements with human-like kinematic features. The model can provide clear-cut predictions for experimental evaluation at both the behavioural and neural levels as well as a neural control system for a dextrous robotic hand.
本文提出了一种用于抓握过程中手部姿势时空协调的神经网络模型。该模型包括一种用于抓握任务期间整只手塑形的简化控制策略,该策略能在手指间实现逼真的协调。此策略利用了越来越多的证据,这些证据支持在抓握过程中对整根手指进行协同控制的观点。在这种控制方案中,只需两个参数就能定义任务执行过程中手部形状的演变。该提议涉及设计和开发一个手势库,该库由用于拟人灵巧手手指预塑形的运动原语组成。通过计算机模拟,我们展示了该模型的神经动力学如何导致具有类人运动学特征的模拟抓握动作。该模型可为行为和神经层面的实验评估提供明确的预测,同时也可为灵巧机器人手提供一个神经控制系统。