The Brain Computer Interface Using Flash Visual Evoked Potential and Independent Component Analysis

被引:0
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作者
Po-Lei Lee
Jen-Chuen Hsieh
Chi-Hsun Wu
Kuo-Kai Shyu
Shyan-Shiou Chen
Tzu-Chen Yeh
Yu-Te Wu
机构
[1] National Central University,Department of Electrical Engineering
[2] Taipei Veterans General Hospital,Integrated Brain Research Laboratory, Department of Medical Research and Education
[3] National Yang-Ming University,Institute of Brain Science
[4] National Yang-Ming University,Center for Neuroscience
[5] National Yang-Ming University,Faculty of Medicine, School of Medicine, Institute of Radiological Science
[6] National Yang-Ming University,Institute of Neuroscience, School of Life Science
[7] National Yang-Ming University,Institute of Radiological Sciences
来源
关键词
Flash visual evoked potential (FVEP); Electroencephalography (EEG); Independent component analysis (ICA); Brain computer interface (BCI);
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学科分类号
摘要
In this study flashing stimuli, such as digits or letters, are displayed on a LCD screen to induce flash visual evoked potentials (FVEPs). The aim of the proposed interface is to generate desired strings while one stares at target stimulus one after one. To effectively extract visually-induced neural activities with superior signal-to-noise ratio, independent component analysis (ICA) is employed to decompose the measured EEG and task-related components are subsequently selected for data reconstruction. In addition, all the flickering sequences are designed to be mutually independent in order to remove the contamination induced by surrounding non-target stimuli from the ICA-recovered signals. Since FVEPs are time-locked and phase-locked to flash onsets of gazed stimulus, segmented epochs from ICA-recovered signals based on flash onsets of gazed stimulus will be sharpen after averaging whereas those based on flash onsets of non-gazed stimuli will be suppressed after averaging. The stimulus inducing the largest averaged FVEPs is identified as the gazed target and corresponding digit or letter is sent out. Five subjects were asked to gaze at each stimulus. The mean detection accuracy resulted from averaging 15 epochs was 99.7%. Another experiment was to generate a specified string ‘0287513694E’. The mean accuracy and information transfer rates were 83% and 23.06 bits/min, respectively.
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页码:1641 / 1654
页数:13
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