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Data Augmentation for Motor Imagery Signal Classification Based on a Hybrid Neural Network

机译:基于混合神经网络的电机图像信号分类数据增强

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摘要

As an important paradigm of spontaneous brain-computer interfaces (BCIs), motor imagery (MI) has been widely used in the fields of neurological rehabilitation and robot control. Recently, researchers have proposed various methods for feature extraction and classification based on MI signals. The decoding model based on deep neural networks (DNNs) has attracted significant attention in the field of MI signal processing. Due to the strict requirements for subjects and experimental environments, it is difficult to collect large-scale and high-quality electroencephalogram (EEG) data. However, the performance of a deep learning model depends directly on the size of the datasets. Therefore, the decoding of MI-EEG signals based on a DNN has proven highly challenging in practice. Based on this, we investigated the performance of different data augmentation (DA) methods for the classification of MI data using a DNN. First, we transformed the time series signals into spectrogram images using a short-time Fourier transform (STFT). Then, we evaluated and compared the performance of different DA methods for this spectrogram data. Next, we developed a convolutional neural network (CNN) to classify the MI signals and compared the classification performance of after DA. The Fréchet inception distance (FID) was used to evaluate the quality of the generated data (GD) and the classification accuracy, and mean kappa values were used to explore the best CNN-DA method. In addition, analysis of variance (ANOVA) and paired t-tests were used to assess the significance of the results. The results showed that the deep convolutional generative adversarial network (DCGAN) provided better augmentation performance than traditional DA methods: geometric transformation (GT), autoencoder (AE), and variational autoencoder (VAE) (p < 0.01). Public datasets of the BCI competition IV (datasets 1 and 2b) were used to verify the classification performance. Improvements in the classification accuracies of 17% and 21% (p < 0.01) were observed after DA for the two datasets. In addition, the hybrid network CNN-DCGAN outperformed the other classification methods, with average kappa values of 0.564 and 0.677 for the two datasets.
机译:作为自发脑电脑接口(BCIS)的重要范式,电机图像(MI)已被广泛应用于神经系统康复和机器人控制领域。最近,研究人员提出了基于MI信号的特征提取和分类的各种方法。基于深神经网络(DNN)的解码模型在MI信号处理领域引起了显着的关注。由于对受试者和实验环境的严格要求,难以收集大规模和高质量的脑电图(EEG)数据。但是,深度学习模型的性能直接取决于数据集的大小。因此,基于DNN的MI-EEG信号的解码已经证明在实践中具有高度挑战性。基于此,我们研究了使用DNN对MI数据分类的不同数据增强(DA)方法的性能。首先,我们使用短时傅里叶变换(STFT)将时间序列信号转换为谱图图像。然后,我们评估并比较了这种频谱图数据的不同DA方法的性能。接下来,我们开发了一种卷积神经网络(CNN)来分类MI信号并比较DA之后的分类性能。 Fréchet初始距离(FID)用于评估所生成的数据(GD)和分类准确性的质量,并使用均值κ值来探索最佳的CNN-DA方法。此外,使用差异分析(ANOVA)和配对T检验来评估结果的重要性。结果表明,深度卷积生成的对抗网络(DCGAN)提供比传统DA方法更好的增强性能:几何变换(GT),AutoEncoder(AE)和变形AutoEncoder(VAE)(P <0.01)。 BCI竞赛IV(数据集1和2B)的公共数据集用于验证分类性能。在DA对于两个数据集后观察到17%和21%(p <0.01)的分类精度的改善。此外,混合网络CNN-DCGAN的表现优于其他分类方法,两个数据集的平均Kappa值为0.564和0.677。

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