Xu Dongcen, Tang Fengzhen, Li Yiping, Zhang Qifeng, Feng Xisheng
State Key Laboratory of Robotics, Shenyang Institute of Automation, Chinese Academy of Sciences, Shenyang 110016, China.
Institutes for Robotics and Intelligent Manufacturing, Chinese Academy of Sciences, Shenyang 110169, China.
Brain Sci. 2023 May 10;13(5):780. doi: 10.3390/brainsci13050780.
The brain-computer interface (BCI) provides direct communication between human brains and machines, including robots, drones and wheelchairs, without the involvement of peripheral systems. BCI based on electroencephalography (EEG) has been applied in many fields, including aiding people with physical disabilities, rehabilitation, education and entertainment. Among the different EEG-based BCI paradigms, steady-state visual evoked potential (SSVEP)-based BCIs are known for their lower training requirements, high classification accuracy and high information transfer rate (ITR). In this article, a filter bank complex spectrum convolutional neural network (FB-CCNN) was proposed, and it achieved leading classification accuracies of 94.85 ± 6.18% and 80.58 ± 14.43%, respectively, on two open SSVEP datasets. An optimization algorithm named artificial gradient descent (AGD) was also proposed to generate and optimize the hyperparameters of the FB-CCNN. AGD also revealed correlations between different hyperparameters and their corresponding performances. It was experimentally demonstrated that FB-CCNN performed better when the hyperparameters were fixed values rather than channel number-based. In conclusion, a deep learning model named FB-CCNN and a hyperparameter-optimizing algorithm named AGD were proposed and demonstrated to be effective in classifying SSVEP through experiments. The hyperparameter design process and analysis were carried out using AGD, and advice on choosing hyperparameters for deep learning models in classifying SSVEP was provided.
脑机接口(BCI)实现了人脑与机器(包括机器人、无人机和轮椅)之间的直接通信,无需外周系统参与。基于脑电图(EEG)的BCI已应用于许多领域,包括帮助身体残疾人士、康复、教育和娱乐。在不同的基于EEG的BCI范式中,基于稳态视觉诱发电位(SSVEP)的BCI以其较低的训练要求、较高的分类准确率和较高的信息传输率(ITR)而闻名。本文提出了一种滤波器组复谱卷积神经网络(FB-CCNN),在两个公开的SSVEP数据集上分别达到了94.85±6.18%和80.58±14.43%的领先分类准确率。还提出了一种名为人工梯度下降(AGD)的优化算法来生成和优化FB-CCNN的超参数。AGD还揭示了不同超参数与其相应性能之间的相关性。实验表明,当超参数为固定值而非基于通道数时,FB-CCNN表现更好。总之,提出了一种名为FB-CCNN的深度学习模型和一种名为AGD的超参数优化算法,并通过实验证明其在SSVEP分类中有效。使用AGD进行了超参数设计过程和分析,并提供了在SSVEP分类中为深度学习模型选择超参数的建议。