Abstract:Electroencephalography (EEG) has millisecond time resolution, which can acquire real-time neurophysiology information of brain activity. EEG has been widely used in cerebral imaging and has become an important tool in neuroscience and neuroengineering in 21st century. However, the original signal-to-noise ratio (SNR) and spatial resolution are poor and the decoding is seriously hindered due to the volume condution effect. With the great development of Deep Learning (DL) in this century, researchers have been trying to combine the two to explore the application of deep learning in EEG data processing, and leading to some phase achievements. Nevertheless, there are still challenges in applying the current DNNs to EEG data processing. Combining with recent studies on DNN-based EEG data processing, this paper introduced the implementation of deep EEG decoding and discussed existing problems and future directions.
刘政, 何峰, 汤佳贝, 万柏坤, 明东. 基于深度学习的头皮脑电信息解码研究进展[J]. 中国生物医学工程学报, 2020, 39(2): 215-228.
Liu Zheng, He Feng, Tang Jiabei, Wan Baikun, Ming Dong. Research Advancements of Deep Learning on EEG Decoding. Chinese Journal of Biomedical Engineering, 2020, 39(2): 215-228.
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