神经、模糊和神经模糊方法对正常和酒精性脑电图的分类

A. Yazdani, P. Ataee, S. Setarehdan, Babak Nadjar Araabi, C. Lucas
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引用次数: 13

摘要

根据文献,许多精神表型、脑部疾病和/或精神任务可以通过分析脑电图信号来检测。其中一种精神表型就是酗酒。本文提取了二阶自回归模型的参数、功率谱的峰值幅度、绝对值的均值和方差作为信号的特征。然后利用主成分分析法对特征向量进行降维。其次,研究了基于模糊推理系统的模糊分类方法。该方法首先将每一类数据分别划分为两个聚类,并为每个聚类定义高斯隶属度函数。分类是通过前一步中生成的if-then规则来执行的。然后采用自适应神经模糊推理系统进行分类。由于神经模糊推理系统的训练能力,达到了较高的分类精度。最后,使用多层感知器结构,可以达到100%的准确率来分离两类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural, Fuzzy And Neurofuzzy Approach To Classification Of Normal And Alcoholic Electroencephalograms
According to the literature, many psychiatric phenotypes, brain disorders and/or mental tasks can be detected by analyzing EEG signals. One such a psychiatric phenotype is alcoholism. In this paper the parameters of second order autoregressive model, peak amplitude of the power spectrum, mean of absolute value and the variance of the signal are extracted as features of the signal. The dimension of the feature vector is then reduced by means of PCA. Next a method based on fuzzy inference system as a fuzzy approach in classification is investigated. In this method first the data in each class is divided into two clusters separately and a Gaussian membership function is defined for each cluster. Classification is performed by means of if-then rules generated in the previous step. Then an adaptive neurofuzzy inference system is used for classification. Due to the ability of the neurofuzzy inference system to be trained higher classification accuracy is achieved. Finally with the use of a multilayer perceptron structure it is shown that an accuracy of 100% can be achieved for separating the two classes.
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