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 Mar 13;13(3):483. doi: 10.3390/brainsci13030483.
The brain-computer interface (BCI), which provides a new way for humans to directly communicate with robots without the involvement of the peripheral nervous system, has recently attracted much attention. Among all the BCI paradigms, BCIs based on steady-state visual evoked potentials (SSVEPs) have the highest information transfer rate (ITR) and the shortest training time. Meanwhile, deep learning has provided an effective and feasible solution for solving complex classification problems in many fields, and many researchers have started to apply deep learning to classify SSVEP signals. However, the designs of deep learning models vary drastically. There are many hyper-parameters that influence the performance of the model in an unpredictable way. This study surveyed 31 deep learning models (2011-2023) that were used to classify SSVEP signals and analyzed their design aspects including model input, model structure, performance measure, etc. Most of the studies that were surveyed in this paper were published in 2021 and 2022. This survey is an up-to-date design guide for researchers who are interested in using deep learning models to classify SSVEP signals.
脑机接口(BCI)为人类提供了一种无需外周神经系统参与即可直接与机器人通信的新方式,最近备受关注。在所有脑机接口范式中,基于稳态视觉诱发电位(SSVEP)的脑机接口具有最高的信息传输率(ITR)和最短的训练时间。同时,深度学习为解决许多领域的复杂分类问题提供了有效且可行的解决方案,许多研究人员已开始将深度学习应用于SSVEP信号分类。然而,深度学习模型的设计差异很大。有许多超参数会以不可预测的方式影响模型性能。本研究调查了2011年至2023年期间用于分类SSVEP信号的31种深度学习模型,并分析了它们的设计方面,包括模型输入、模型结构、性能度量等。本文调查的大多数研究发表于2021年和2022年。这项调查为有兴趣使用深度学习模型对SSVEP信号进行分类的研究人员提供了最新的设计指南。