残障受试者脑电信号P300的奇异谱分类

H. Tjandrasa, S. Djanali, F. X. Arunanto
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引用次数: 2

摘要

脑机接口已经使严重残疾的用户能够与他们的环境进行交流。一种方法是使用受控刺激诱发P300事件相关电位。记录4名残疾受试者在重复刺激过程中的脑电信号,经Butterworth带通滤波和奇异谱分析处理后归一化,将目标和非目标试验数据分为2组,每组5次试验取平均值,然后利用神经网络进行分类。对每5个靶和非靶试验取平均值的目的是得到偶相关电位的P300分量,以便将靶试验与非靶试验区分开来。进一步处理后,每处理5个非靶试验中选择1个,敏感性值提高10.9%,表明靶试验的假阴性数量减少。分类结果给出的最高准确率为92.5%。敏感性、特异性和准确性的平均值分别为70.8%、89、8%和84.6%。
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Classification of P300 in EEG signals for disable subjects using singular spectrum analysis
Brain-computer interfaces have been enabled severely disabled users to communicate with their environments. One method is to use a controlled stimulus to elicit the P300 event-related potential. EEG signals during the repeated stimuli were recorded from four disabled subjects and processed with a Butterworth bandpass filter and Singular Spectrum Analysis, normalized, separated into 2 groups of the target and non-target trial data, and averaged for every 5 trials for each group before classified using a neural network. The purpose of averaging every five target and non-target trials was to emerge the P300 component of even-related potentials so that the target trials could be differentiated from the non-target trials. Further processing by selecting 1 of every 5 processed non-target trials increased the value of sensitivity by 10.9%, it showed that the number of false negatives of target trials was reduced. The results of the classification gave the maximum accuracy of 92.5%. The average values of sensitivity, specificity, and accuracy were 70.8%, 89,8%, and 84.6% respectively.
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