He Chao, Liu Jialu, Zhu Yuesheng, Du Wencai
Shenzhen EEGSmart Technology Co., Ltd., Shenzhen, China.
School of Electronic and Computer Engineering, Peking University, Beijing, China.
Front Hum Neurosci. 2021 Dec 17;15:765525. doi: 10.3389/fnhum.2021.765525. eCollection 2021.
Classification of electroencephalogram (EEG) is a key approach to measure the rhythmic oscillations of neural activity, which is one of the core technologies of brain-computer interface systems (BCIs). However, extraction of the features from non-linear and non-stationary EEG signals is still a challenging task in current algorithms. With the development of artificial intelligence, various advanced algorithms have been proposed for signal classification in recent years. Among them, deep neural networks (DNNs) have become the most attractive type of method due to their end-to-end structure and powerful ability of automatic feature extraction. However, it is difficult to collect large-scale datasets in practical applications of BCIs, which may lead to overfitting or weak generalizability of the classifier. To address these issues, a promising technique has been proposed to improve the performance of the decoding model based on data augmentation (DA). In this article, we investigate recent studies and development of various DA strategies for EEG classification based on DNNs. The review consists of three parts: what kind of paradigms of EEG-based on BCIs are used, what types of DA methods are adopted to improve the DNN models, and what kind of accuracy can be obtained. Our survey summarizes the current practices and performance outcomes that aim to promote or guide the deployment of DA to EEG classification in future research and development.
脑电图(EEG)分类是测量神经活动节律振荡的关键方法,这是脑机接口系统(BCI)的核心技术之一。然而,从非线性和非平稳的脑电信号中提取特征在当前算法中仍然是一项具有挑战性的任务。随着人工智能的发展,近年来提出了各种先进算法用于信号分类。其中,深度神经网络(DNN)由于其端到端结构和强大的自动特征提取能力,已成为最具吸引力的方法类型。然而,在脑机接口的实际应用中,很难收集大规模数据集,这可能导致分类器出现过拟合或泛化能力弱的问题。为了解决这些问题,人们提出了一种很有前景的技术,即基于数据增强(DA)来提高解码模型的性能。在本文中,我们研究了基于深度神经网络的脑电分类中各种数据增强策略的最新研究和发展情况。这篇综述包括三个部分:基于脑机接口的脑电图使用了哪些范式,采用了哪些类型的数据增强方法来改进深度神经网络模型,以及可以获得什么样的准确率。我们的调查总结了当前的实践和性能结果,旨在促进或指导在未来的研究和开发中将数据增强应用于脑电分类。