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Classification of P300 event-related potentials using wavelet transform, MLP, and soft margin SVM

机译:使用小波变换,MLP和软余量SVM对P300事件相关电位进行分类

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Brain-computer interface is a communication mechanism between EEG signals and a computer, such that the system can capture the brain intention without involving motoric and muscular neurons. This study utilized the EEG recordings of four disabled subjects during repeated stimuli using a six-choice P300 paradigm. The EEG signals were processed with a Butterworth bandpass filter and Wavelet Transform, divided into two categories of the target and non-target trials. The EEG data were improved by removing the high amplitude fluctuation of the signals around the end of each file. The Wavelet Transform was implemented using Stationary Wavelet Transform (SWT) and Discrete Wavelet Transform (DWT). The target and non-target trials were averaged for every five trials, and the averaged non-target trials were reduced further by selecting one of every five consecutive data. The reduced target and non-target trial data were classified using multilayer perceptron and support vector machine. Using SWT, multilayer perceptron gave the maximum accuracy, sensitivity, and specificity of 96.4%, 96.6%, 96.2% respectively, and support vector machine obtained the maximum accuracy of 98.2%, sensitivity of 100%, and specificity of 96.4%. While using DWT, the best performance of multilayer perceptron gave the accuracy, sensitivity, and specificity of 94.5%, 100%, 89.3% respectively, and support vector machine had the maximum accuracy of 98.2%, sensitivity of 96.4%, and specificity of 100%.
机译:脑机接口是EEG信号与计算机之间的一种通信机制,因此该系统可以捕获大脑意图,而无需涉及运动神经和肌肉神经元。这项研究利用六选择P300范式在反复刺激过程中利用了四个残疾受试者的脑电图记录。脑电信号用巴特沃斯带通滤波器和小波变换处理,分为目标试验和非目标试验两类。通过消除每个文件末尾附近信号的高幅度波动,改善了EEG数据。小波变换是使用固定小波变换(SWT)和离散小波变换(DWT)实现的。每五个试验对目标试验和非目标试验进行平均,通过选择每五个连续数据中的一个,进一步降低平均非目标试验。使用多层感知器和支持向量机对简化的目标和非目标试验数据进行分类。使用SWT,多层感知器的最大准确度,灵敏度和特异性分别为96.4 \%,96.6 \%,96.2 \%,支持向量机获得的最大准确度为98.2 \%,灵敏度100 \%和特异性。 96.4 \%。使用DWT时,多层感知器的最佳性能分别使准确性,灵敏度和特异性分别为94.5 \%,100 \%,89.3 \%,而支持向量机的最大准确性为98.2 \%,灵敏度为96.4 \% ,特异性为100 \%。

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