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通过条件生成对抗网络对 EEG 数据进行扩充,提高运动想象脑-机接口的分类性能。

Improving classification performance of motor imagery BCI through EEG data augmentation with conditional generative adversarial networks.

机构信息

Department of Industrial Engineering, Kumoh National Institute of Technology, South Korea.

Department of Big Data Analytics, Kyung Hee University, South Korea.

出版信息

Neural Netw. 2024 Dec;180:106665. doi: 10.1016/j.neunet.2024.106665. Epub 2024 Aug 28.

Abstract

In brain-computer interface (BCI), building accurate electroencephalogram (EEG) classifiers for specific mental tasks is critical for BCI performance. The classifiers are developed by machine learning (ML) and deep learning (DL) techniques, requiring a large dataset for training to build reliable and accurate models. However, collecting large enough EEG datasets is difficult due to intra-/inter-subject variabilities and experimental costs. This leads to the data scarcity problem, which causes overfitting issues to training samples, resulting in reducing generalization performance. To solve the EEG data scarcity problem and improve the performance of the EEG classifiers, we propose a novel EEG data augmentation (DA) framework using conditional generative adversarial networks (cGANs). An experimental study is implemented with two public EEG datasets, including motor imagery (MI) tasks (BCI competition IV IIa and III IVa), to validate the effectiveness of the proposed EEG DA method for the EEG classifiers. To evaluate the proposed cGAN-based DA method, we tested eight EEG classifiers for the experiment, including traditional MLs and state-of-the-art DLs with three existing EEG DA methods. Experimental results showed that most DA methods with proper DA proportion in the training dataset had higher classification performances than without DA. Moreover, applying the proposed DA method showed superior classification performance improvement than the other DA methods. This shows that the proposed method is a promising EEG DA method for enhancing the performances of the EEG classifiers in MI-based BCIs.

摘要

在脑机接口 (BCI) 中,为特定的心理任务构建准确的脑电图 (EEG) 分类器对于 BCI 的性能至关重要。分类器是通过机器学习 (ML) 和深度学习 (DL) 技术开发的,需要大量的数据集进行训练,以构建可靠和准确的模型。然而,由于个体内/个体间的可变性和实验成本,收集足够大的 EEG 数据集是困难的。这导致了数据稀缺问题,从而导致对训练样本的过度拟合问题,从而降低了泛化性能。为了解决 EEG 数据稀缺问题并提高 EEG 分类器的性能,我们提出了一种使用条件生成对抗网络 (cGAN) 的新型 EEG 数据增强 (DA) 框架。我们使用两个公共 EEG 数据集,包括运动想象 (MI) 任务 (BCI 竞赛 IV IIa 和 III IVa),实施了一项实验研究,以验证所提出的 EEG DA 方法对 EEG 分类器的有效性。为了评估基于 cGAN 的 DA 方法,我们在实验中测试了八个 EEG 分类器,包括传统 ML 和最先进的 DL 以及三种现有的 EEG DA 方法。实验结果表明,大多数在训练数据集中具有适当 DA 比例的 DA 方法的分类性能都高于没有 DA 的方法。此外,应用所提出的 DA 方法比其他 DA 方法表现出更好的分类性能提升。这表明,所提出的方法是一种有前途的 EEG DA 方法,可用于增强基于 MI 的 BCI 中 EEG 分类器的性能。

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