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Comparison of EEG Data Classification between Conventional Visual Cue-Marker and EMG-Based Marker on Brain Activity

机译:常规视觉模型标记与基于EMG的脑活动标记的脑电图数据分类的比较

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In Brain-Computer Interfaces (BCI), data sets need consistency factor to train good filters and classifiers. If there is lack of pattern in the data sets, it will affect the classification accuracy of the results. Consistency in extracted data-epoch requires precise markers to be embedded along the continuous Electroencephalography (EEG) data collection process. This study suggests placing the markers on actual movement through Electromyography (EMG) data classifications during isometric finger flexion and extension. An EMG-based marker system is applied to generate marker in EEG signal during data measurement in real time. EEGLAB software is used for pre-processing. The data loaded into the BCILAB interface for chosen feature extraction and classification. Spectrally weighted Common Spatial Pattern (Spec-CSP) used as feature extraction method and Linear Discriminant Analysis (LDA) is implemented for classification process. Results show that EMG-based marker approach shows higher potential success rate, at 73.6% compared to visual cue-based marker at 71.1%. It is suggested that EMG-based marker approach is applicable in finding pattern recognition of EEG data in isometric finger flexion and extension.
机译:在大脑计算机接口(BCI)中,数据集需要一致性因素来培训良好的过滤器和分类器。如果数据集中缺少模式,则会影响结果的分类准确性。提取的数据时代的一致性需要沿连续脑电图(EEG)数据收集过程嵌入精确标记。本研究表明,在等距指纹屈曲和延伸期间将标记放在实际运动上通过电灰度(EMG)数据分类。基于EMG的标记系统应用于在数据测量期间实时在EEG信号中生成标记。 EEGLAB软件用于预处理。加载到BiLBAB接口中的数据,用于选择特征提取和分类。用作特征提取方法和线性判别分析(LDA)的光谱加权公共空间模式(SPEC-CSP)用于分类过程。结果表明,基于EMG的标志性方法显示出较高的潜在成功率,与71.1%的视觉提示标记相比,73.6%。建议基于EMG的标记方法适用于在等距手指屈曲和扩展中找到eEG数据的模式识别。

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