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Applying fuzzy decision for a single channel SSVEP-based BCI on automatic feeding robot

机译:在自动送料机器人上对基于单通道SSVEP的BCI应用模糊决策

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摘要

An application of steady state evoked potential (SSVEP) based brain-computer interface (BCI) has been developed by implementing the fuzzy decision model for the automatic feeding robot. Four blinking boxes were displayed on the corner of the 20aEuro(3) liquid crystal display monitor as visual stimuli to induce the SSVEP of the subject brain signal. The corresponding electroencephalogram features extracted from fast Fourier transform and magnitude squared coherence were used as inputs of the fuzzy decision algorithm which determine whether it is valid decision or not and decide the selected command. Sixteen subjects participated in the experiment to evaluate the performance of proposed algorithm with the SSVEP-based BCI system embedded inside. The average positive predictive value of experimental results in single visual stimulus test (SVST) and multiple visual stimuli test (MVST) are 90.45 and 91.45%, respectively and F-score are 0.5889 and 0.6038 in SVST and MVST. Therefore, the proposed SSVEP-based BCI can be implemented to control the automatic robot to feed the disabled subjects with more robustness.
机译:通过实现自动送料机器人的模糊决策模型,开发了一种基于稳态诱发电位(SSVEP)的脑电脑接口(BCI)的应用。在20Aeuro(3)液晶显示器监视器的拐角处显示四个闪烁的盒子作为可视刺激,以诱导对象脑信号的SSVEP。从快速傅里叶变换和大小平方相干中提取的相应脑电图特征用作模糊决策算法的输入,该算法确定它是否是有效的决定并决定所选命令。十六个科目参与了实验,以评估所提出的算法与内部SSVEP的BCI系统的性能。单一视觉刺激试验(SVST)和多种视觉刺激试验(MVST)的实验结果的平均阳性预测值分别为90.45和91.45%,F谱分别为0.5889和0.6038,在SVST和MVST中。因此,可以实现所提出的基于SSVEP的BCI来控制自动机器人以提供更强大的禁用受试者。

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