首页> 外文会议>IEEE International Conference on Humanoid, Nanotechnology, Information Technology, Communication and Control, Environment and Management >Characterization of EEG Signal Patterns During Visual Imageries of Basic Structures for the Development of Brain-Computer Typing Interface for Locked-In Syndrome Patients
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Characterization of EEG Signal Patterns During Visual Imageries of Basic Structures for the Development of Brain-Computer Typing Interface for Locked-In Syndrome Patients

机译:锁定综合征患者脑电键入脑键入脑键入脑键入型脑电路型界面基本结构期间EEG信号模式的表征

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The paper aims to characterize Electroencephalogram (EEG) signals during visual imagery of basic shapes that includes square, triangle and circle with and without visual stimulus and neutral state using a 14- channel EEG Emotiv EPOC+. Principal Component Analysis (PCA) was utilized to reduce the dimensionality of the features and the transformed features or biomarkers were used to train the classifiers. Classifiers used in this study are Support Vector Machine (SVM), Linear Discriminant Analysis (LDA), and k Nearest Neighbors (KNN). The results obtained from 5 study volunteers indicated that the highest contributions to the 56 new biomarkers are the higher order even central moments and more predominantly from channel T7. Also, the extracted features from EEG signals during visual imagery of different shapes with and without visual stimuli consistently showed a low degree of correlation. Furthermore, the dataset used to train the classifiers were subdivided into two: one containing neutral state with visual stimulus, and the other comprising neutral state without visual stimulus. Performance of different classifiers trained with and without visual stimulus yielded similar accuracies; however, the dataset with the absence of visual stimulus exhibit higher classification accuracies for all classifiers. In addition, all classifiers obtained high classification accuracies (>96%) for both datasets and the SVM performed best among the classifiers having accuracies of 97.5% and 99.5% for datasets with and without visual stimulus respectively. The study supports the feasibility of a brain-computer typing interface that utilizes visual imagery as an input modality. Furthermore, the findings of this study will serve as a basis for the development of a brain-computer typing interface using visual imagery of characters and letters.
机译:本文旨在在视觉图像中表征脑电图(EEG)信号,在包括方形,三角形和圆圈的基本形状,使用14通道EEG EGCOV +的方形,三角形和圆形,无视觉刺激和中性状态。利用主成分分析(PCA)来降低特征的维度,并且使用转化的特征或生物标志物用于培训分类器。本研究中使用的分类器是支持向量机(SVM),线性判别分析(LDA)和K最近邻居(KNN)。从5个研究志愿者获得的结果表明,56个新生物标志物的最高贡献是甚至中央时刻的较高阶数,从频道T7均以更高的阶段。而且,在不同形状的视觉图像期间,具有和不具有视觉刺激的视觉图像期间的提取特征始终显示出低的相关程度。此外,用于训练分类器的数据集被细分为两个:一个包含中性状态,其具有视觉刺激,另一个包含中性状态而没有视觉刺激。没有视觉刺激训练的不同分类器的性能产生类似的精度;然而,没有视觉刺激的数据集对所有分类器具有更高的分类精度。此外,所有分类器都获得了对数据集的高分类精度(> 96 %),并且SVM在具有和没有视觉刺激的数据集的准确度为97.5 %和99.5 %的分类器中表现最佳。该研究支持使用视觉图像作为输入模态的脑电脑键入界面的可行性。此外,本研究的结果将作为使用字符和字母的视觉图像开发大脑键入界面的基础。

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