A G Habashi, Ahmed M Azab, Seif Eldawlatly, Gamal M Aly
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The proposed calibration-free approach employs deep learning techniques for MI classification and Wasserstein Generative Adversarial Networks (WGAN) for data augmentation. The proposed WGAN generates synthetic spectrum images from the recorded MI-EEG to expand the training dataset; aiming to enhance the classifier's performance. The proposed approach eliminates the need for any calibration data from the target subject, making it more suitable for real-world applications.<i>Main results.</i>To assess the robustness and efficacy of the proposed framework, we utilized the BCI competition IV-2B, IV-2 A, and IV-1 benchmark datasets, employing leave one-subject out validation. Our results demonstrate that using the proposed modified VGG-CNN classifier in addition to WGAN-generated data for augmentation leads to an enhancement in CS accuracy outperforming state-of-the-art methods.<i>Significance.</i>This approach could represent one step forward towards developing calibration-free BCI systems and hence broaden their applications.</p>","PeriodicalId":94096,"journal":{"name":"Journal of neural engineering","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2024-07-31","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Toward calibration-free motor imagery brain-computer interfaces: a VGG-based convolutional neural network and WGAN approach.\",\"authors\":\"A G Habashi, Ahmed M Azab, Seif Eldawlatly, Gamal M Aly\",\"doi\":\"10.1088/1741-2552/ad6598\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p><i>Objective.</i>Motor imagery (MI) represents one major paradigm of Brain-computer interfaces (BCIs) in which users rely on their electroencephalogram (EEG) signals to control the movement of objects. However, due to the inter-subject variability, MI BCIs require recording subject-dependent data to train machine learning classifiers that are used to identify the intended motor action. This represents a challenge in developing MI BCIs as it complicates its calibration and hinders the wide adoption of such a technology.<i>Approach.</i>This study focuses on enhancing cross-subject (CS) MI EEG classification using EEG spectrum images. The proposed calibration-free approach employs deep learning techniques for MI classification and Wasserstein Generative Adversarial Networks (WGAN) for data augmentation. The proposed WGAN generates synthetic spectrum images from the recorded MI-EEG to expand the training dataset; aiming to enhance the classifier's performance. 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引用次数: 0
摘要
目的:运动想象(MI)是脑机接口(BCI)的一个主要范例,其中用户依靠脑电图(EEG)信号来控制物体的运动。然而,由于受试者之间存在差异,MI BCI 需要记录受试者的相关数据,以训练机器学习分类器,用于识别预期的运动动作。这对 MI BCI 的开发是一个挑战,因为它使校准变得复杂,并阻碍了这种技术的广泛应用:本研究的重点是利用脑电图频谱图像加强跨主体 MI 脑电图分类。所提出的免校准方法采用深度学习技术进行 MI 分类,并采用 Wasserstein 生成对抗网络(WGAN)进行数据增强。拟议的 WGAN 可从记录的 MI-EEG 生成合成频谱图像,以扩展训练数据集,从而提高分类器的性能。所提出的方法无需目标对象的任何校准数据,因此更适合真实世界的应用:为了评估所提框架的稳健性和有效性,我们利用了BCI竞赛IV-2B、IV-2A和IV-1基准数据集,并进行了单对象排除验证。我们的研究结果表明,除了使用 WGAN 生成的数据进行增强外,使用所提出的改进型 VGG-CNN 分类器还能提高跨受试者准确性,其准确性优于最先进的方法:意义:这种方法代表着向开发免校准 BCI 系统迈进了一步,从而扩大了其应用范围。
Toward calibration-free motor imagery brain-computer interfaces: a VGG-based convolutional neural network and WGAN approach.
Objective.Motor imagery (MI) represents one major paradigm of Brain-computer interfaces (BCIs) in which users rely on their electroencephalogram (EEG) signals to control the movement of objects. However, due to the inter-subject variability, MI BCIs require recording subject-dependent data to train machine learning classifiers that are used to identify the intended motor action. This represents a challenge in developing MI BCIs as it complicates its calibration and hinders the wide adoption of such a technology.Approach.This study focuses on enhancing cross-subject (CS) MI EEG classification using EEG spectrum images. The proposed calibration-free approach employs deep learning techniques for MI classification and Wasserstein Generative Adversarial Networks (WGAN) for data augmentation. The proposed WGAN generates synthetic spectrum images from the recorded MI-EEG to expand the training dataset; aiming to enhance the classifier's performance. The proposed approach eliminates the need for any calibration data from the target subject, making it more suitable for real-world applications.Main results.To assess the robustness and efficacy of the proposed framework, we utilized the BCI competition IV-2B, IV-2 A, and IV-1 benchmark datasets, employing leave one-subject out validation. Our results demonstrate that using the proposed modified VGG-CNN classifier in addition to WGAN-generated data for augmentation leads to an enhancement in CS accuracy outperforming state-of-the-art methods.Significance.This approach could represent one step forward towards developing calibration-free BCI systems and hence broaden their applications.