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首页> 外文期刊>EURASIP journal on applied signal processing >A time-frequency approach to feature extraction for a brain-computer interface with a comparative analysis of performance measures
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A time-frequency approach to feature extraction for a brain-computer interface with a comparative analysis of performance measures

机译:一种时频方法进行人机界面特征提取并比较性能指标

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摘要

The paper presents an investigation into a time-frequency (TF) method for extracting features from the electroencephalogram (EEG) recorded from subjects performing imagination of left- and right-hand movements. The feature extraction procedure (FEP) extracts frequency domain information to form features whilst time-frequency resolution is attained by localising the fast Fourier transformations (FFTs) of the signals to specific windows localised in time. All features are extracted at the rate of the signal sampling interval from a main feature extraction (FF) window through which all data passes. Subject-specific frequency hands are selected for optimal feature extraction and intraclass variations are reduced by smoothing the spectra for each signal by an interpolation (IP) process. The TF features are classified using linear discriminant analysis (LDA). The FE window has potential advantages for the FEP to be applied in an online brain-computer interface (130). The approach achieves good performance when quantified by classification accuracy (CA) rate, information transfer (IT) rate, and Mutual information (MI). The information that these performance measures provide about a BCI system is analysed and the importance of this is demonstrated through the results.
机译:本文介绍了一种时频(TF)方法的研究,该方法用于从脑电图(EEG)中提取特征,而脑电图(EEG)是从执行左右手运动想象的对象中记录的。特征提取过程(FEP)提取频域信息以形成特征,同时通过将信号的快速傅里叶变换(FFT)定位到及时定位的特定窗口来实现时频分辨率。从所有数据通过的主特征提取(FF)窗口以信号采样间隔的速率提取所有特征。选择特定于主体的频率指针以进行最佳特征提取,并通过插值(IP)过程对每个信号的频谱进行平滑处理,以减少类内差异。使用线性判别分析(LDA)对TF特征进行分类。 FE窗口对于将FEP应用于在线脑计算机接口(130)具有潜在的优势。当通过分类准确率(CA)率,信息传递(IT)率和互信息(MI)进行量化时,该方法可获得良好的性能。分析了这些性能度量提供的有关BCI系统的信息,并通过结果证明了其重要性。

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