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论文标题 Brain-machine interface control of a manipulator using small-world neural network and shared control strategy
作者列表 Li,T; Hong, J; Zhang, JH*;Guo, F.
第一作者 Li,T
类别 期刊文章
期刊名称 Journal of Neuroscience Methods
会议名称
卷号、期、页码 224:26-38
年度 2014
地点
SCI检索号 AB5T
EI检索号
隶属方向
简介 The improvement of the resolution of brain signal and the ability to control external device has been the most important goal in BMI research field. This paper describes a non-invasive brain-actuated manipulator experiment, which defined a paradigm for the motion control of a serial manipulator based on motor imagery and shared control. The techniques of component selection, spatial filtering and classification of motor imagery were involved. Small-world neural network (SWNN) was used to classify five brain states. To verify the effectiveness of the proposed classifier, we replace the SWNN classifier by a radial basis function (RBF) networks neural network, a standard multi-layered feed-forward backpropagation network (SMN) and a multi-SVM classifier, with the same features for the classification. The results also indicate that the proposed classifier achieves a 3.83% improvement over the best results of other classifiers. We proposed a shared control method consisting of two control patterns to expand the control of BMI from the software angle. The job of path building for reaching the 'end' point was designated as an assessment task. We recorded all paths contributed by subjects and picked up relevant parameters as evaluation coefficients. With the assistance of two control patterns and series of machine learning algorithms, the proposed BMI originally achieved the motion control of a manipulator in the whole workspace. According to experimental results, we confirmed the feasibility of the proposed BMI method for 3D motion control of a manipulator using EEG during motor imagery. (C) 2013 Elsevier B.V. All rights reserved.
参考条目
提交日期 2015-04-09

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