Deep learning based algorithms have made huge progress in the field of image classification and speech recognition. There is an increasing number of researchers beginning to use deep learning to process electroencephalographic(EEG) brain signals. However, at the same time, due to the complexity of the experimental device and the expensive collection cost, we cannot train a powerful deep learning model without enough satisfactory EEG data. Data augmentation has been considered as an effective method to eliminate this issue. We propose the Conditional Wasserstein Generative Adversarial Network with gradient penalty (CWGAN-GP) to synthesize EEG data for data augmentation. We use two public neural networks for a motor imagery task and combine the synthesized data with real EEG data to test the generated samples’ data enhancement effect. The results indicate that our model can generate high-quality artificial EEG data, which can effectively learn the features from the original EEG data. Both neural networks have gained improved classification performance, and the more complex one has obtained more significant performance improvement. The experiment provides us with new ideas for improving the performance of EEG signal processing.
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