Characterization of the event-related potentials during GAN-based generation of EEG signals and their data augmented subject classification

S. Biswas, Pravandan Chand, Ankit Mathur, R. Sinha
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Abstract

One of the most crucial challenges in exploring deep neural networks for signal modeling and classification tasks is the availability of a large quantity of domain-specific data. The generative adversarial network (GAN) has emerged as an effective artificial data generation method. Motivated by that, we explore the generation of auditory event-related electroencephalographic (EEG) signals and their task-specific authentication in this work. For synthesizing subject-specific EEG signals, a conditional deep convolutional GAN is used. Apart from measuring the usual signal similarity, we also computed the correlation between the subject-wise event-related potentials (ERPs) corresponding to the real and synthetic EEG data. The characterization of the ERPs highlights that the GAN is not only able to learn the distribution of real EEG signals but also can preserve their temporal characteristics. Further, EEG biometrics experiments are also performed to verify the effectiveness of the synthesized EEG signals in data augmentation. It is noted that the averaged classification accuracy improves by augmenting the real data set with synthetic EEG signals.
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基于gan的脑电信号生成过程中事件相关电位的表征及其数据增强主题分类
在探索用于信号建模和分类任务的深度神经网络时,最关键的挑战之一是大量特定领域数据的可用性。生成对抗网络(GAN)是一种有效的人工数据生成方法。基于此,本研究探讨了听觉事件相关脑电图(EEG)信号的产生及其任务特异性认证。为了合成特定对象的脑电图信号,使用了条件深度卷积GAN。除了测量通常的信号相似度外,我们还计算了真实和合成EEG数据对应的受试者事件相关电位(ERPs)之间的相关性。对erp的表征表明,GAN不仅能够学习真实脑电信号的分布,而且能够保持其时间特征。此外,还进行了脑电生物识别实验,验证了合成的脑电信号在数据增强方面的有效性。用合成的脑电信号对真实数据集进行扩充,提高了平均分类精度。
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