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首页> 外文期刊>International Journal of Intelligent Systems Technologies and Applications >EEG signals classifications of motor imagery using adaptive neuro-fuzzy inference system and interval type-2 fuzzy system
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EEG signals classifications of motor imagery using adaptive neuro-fuzzy inference system and interval type-2 fuzzy system

机译:EEG信号使用自适应神经模糊推理系统和间隔2型模糊系统分类电机图像的分类

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摘要

Brain computer interface (BCI) techniques are used to help disabled people to translate brain signals to control commands imitating specific human thinking based on electroencephalography (EEG) signal processing. The paper tries to accurately classify motor imagery imagination tasks, e.g., left and right hand movement. The paper utilises different methods for such classification including: (1) adaptive neuro fuzzy inference system (ANFIS); (2) K-nearest neighbour (KNN); (3) linear discriminant analysis (LDA) and (4) interval Type-2 fuzzy system (IT2-FS) classifiers. In addition, with ANFIS approach, different clustering methods are examined such as Subtractive clustering, fuzzy C-means clustering and K-means clustering. At the same time, subtractive Type-2 clustering is applied to the received signals. The paper focuses on three different features which are AR coefficients, Band Power Frequency, and common spatial pattern (CSP). The classification accuracies with two optimal channels C3 and C4 are investigated.
机译:大脑电脑界面(BCI)技术用于帮助残疾人致力于基于脑电图(EEG)信号处理来控制模仿特定人类思想的命令。本文试图准确地分类电机图像想象力,例如,左手和右手运动。本文利用不同方法进行此类分类,包括:(1)自适应神经模糊推理系统(ANFIS); (2)K-最近邻(KNN); (3)线性判别分析(LDA)和(4)间隔类型-2模糊系统(IT2-FS)分类器。另外,通过ANFIS方法,检查不同的聚类方法,例如减数聚类,模糊C-MEARELECTING和K-MEASE聚类。同时,将减去Type-2聚类应用于接收的信号。该文件侧重于三种不同的特征,它是AR系数,带功率频率和常见空间模式(CSP)。研究了具有两个最佳通道C3和C4的分类精度。

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