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首页> 外文期刊>Kybernetes: The International Journal of Systems & Cybernetics >A biocybernetic method to learn hand grasping posture
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A biocybernetic method to learn hand grasping posture

机译:一种生物手相学方法来学习手握姿势

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摘要

In this paper, a biocybernetic method to learn hand grasping posture definition with few knowledge about the task is proposed. The developed model is composed of two stages. The first is dedicated to the fingers inverse kinematics learning in order to locally define a single finger posture given its desired fingertip position. This motor function is fulfilled by a modular neural network architecture that tackles the discontinuity problem of inverse kinematics function (called Fingers Configuration Neural Network (FCNN)). Following the concept of direct associative learning, a second neural model is used to search the space of hand configuration and optimize it according to an evaluative function based on the results of the FCNN. Simulation results show good learning of grasping posture determination of various object types, with different numbers of fingers involved and different contact configurations.
机译:在本文中,提出了一种生物神经网络方法,用于学习对任务的了解很少的手握姿势定义。开发的模型包括两个阶段。第一个专用于手指逆向运动学学习,以便在给定其所需指尖位置的情况下局部定义单个手指的姿势。通过解决逆运动学功能的不连续性问题的模块化神经网络架构(称为手指配置神经网络(FCNN))来实现此运动功能。遵循直接联想学习的概念,使用第二个神经模型来搜索手形空间,并根据基于FCNN结果的评估函数对手形空间进行优化。仿真结果表明,在涉及不同数量的手指和不同的接触配置的情况下,可以很好地学习各种物体类型的抓握姿势。

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