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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >Recognition of Epileptic EEG Signals Using a Novel Multiview TSK Fuzzy System
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Recognition of Epileptic EEG Signals Using a Novel Multiview TSK Fuzzy System

机译:新型多视图TSK模糊系统识别癫痫性脑电信号

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摘要

Recognition of epileptic electroencephalogram (EEG) signals using machine learning techniques is becoming popular. In general, the construction of intelligent epileptic EEG recognition system involves two steps. First, an appropriate feature extraction method is applied to obtain representative features from the original raw EEG signals. Second, an effective intelligent model is trained based on the extracted features. However, there exist two major challenges in the process: 1) it is nontrivial to determine the appropriate feature extraction method to be used; 2) although many classical machine learning methods have been used for epileptic EEG recognition, most of them are “black box” approaches and more interpretable methods are desirable. To address these two challenges, a new epileptic EEG recognition method based on a multiview learning framework and fuzzy system modeling is proposed. First, multiview EEG data are generated by employing different feature extraction methods to obtain the features from different views of the signals. Second, the classical Takagi–Sugeno–Kang fuzzy system (TSK-FS) is introduced as an easy-to-interpret recognition model to develop a multiview TSK-FS method, called MV-TSK-FS, to identify epileptic EEG signals. For the proposed MV-TSK-FS, the importance of each view, i.e., the importance of each feature extraction method, can be evaluated according to the weighting of each view, and consequently the final decision can be made based on the weighted outputs of different views. Experimental results indicate that the MV-TSK-FS is a promising method when compared with the state-of-the-art algorithms.
机译:使用机器学习技术识别癫痫性脑电图(EEG)信号正变得越来越流行。通常,智能癫痫脑电识别系统的构建分两个步骤。首先,采用适当的特征提取方法从原始原始EEG信号中获取代表性特征。其次,基于提取的特征训练有效的智能模型。但是,在此过程中存在两个主要挑战:1)确定要使用的适当特征提取方法并不容易。 2)尽管许多经典的机器学习方法已用于癫痫性脑电图识别,但大多数是“黑匣子”方法,需要更多可解释的方法。为了解决这两个挑战,提出了一种基于多视图学习框架和模糊系统建模的新型癫痫脑电识别方法。首先,通过采用不同的特征提取方法来生成多视图EEG数据,以从信号的不同视图获得特征。其次,引入经典的Takagi–Sugeno–Kang模糊系统(TSK-FS)作为易于解释的识别模型,以开发一种称为MV-TSK-FS的多视图TSK-FS方法,以识别癫痫性脑电信号。对于所提出的MV-TSK-FS,可以根据每个视图的权重来评估每个视图的重要性,即每种特征提取方法的重要性,因此,可以基于图像的加权输出做出最终决定。不同的看法。实验结果表明,与最新算法相比,MV-TSK-FS是一种很有前途的方法。

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