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EEG Feature Extraction of Motor Imagery Based on WT and STFT

机译:基于WT和STFT的电动机图像EEG特征提取

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Aiming at the problem of low recognition rate in classification task of motion imagery, an EEG feature extraction algorithm based on Wavelet Transform (WT) and Short-Time Fourier Transform (STFT) is proposed. Firstly, the wavelet decomposition of the EEG on a specific lead is used to reconstruct the frequency containing the Event-Related Desynchronization / Synchronization (ERD / ERS) features to remove the redundant information. Then the Short-Time Fourier Transform is used to extract the feature of the motor imagery, and visualized these features. Finally, the convolution neural network is used to classify and obtain the final result. The proposed method is applied to EEG data of two kinds of motion imaging tasks in BCI competition, and the experimental results show that the recognition rate of classification can reach 96.67% and the average Kappa coefficient is 0.93, which verifies that our proposed algorithm can effectively distinguish two types of motor imagery task, and improve the recognition rate of classification.
机译:针对运动图像的分类任务中识别率低的问题,提出了一种基于小波变换(WT)和短时傅里叶变换(STFT)的EEG特征提取算法。首先,在特定引线上的小波分解用于重建包含与事件相关的Des同步/同步(ERD / ERS)特征的频率以去除冗余信息。然后,短时间傅立叶变换用于提取电机图像的特征,并可视化这些功能。最后,卷积神经网络用于分类和获得最终结果。该方法应用于BCI竞争中两种运动成像任务的EEG数据,实验结果表明,分类的识别率可以达到96.67%,平均kappa系数为0.93,这验证了我们所提出的算法可以有效地验证区分两种类型的电机图像任务,提高分类识别率。

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