利用深度卷积神经网络改进脑机接口拼写系统中真实SSVEP数据的分类

Q3 Health Professions
E. Rostami, F. Ghassemi, Z. Tabanfar
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引用次数: 1

摘要

目的:脑机接口(BCI)拼写系统帮助有行动障碍的人提高他们的认知和身体能力。稳态视觉诱发电位(SSVEP)信号已被用于构建高速脑机接口拼写系统。SSVEP信号是视觉诱发电位(VEP)的一种亚型,是由特定频率刺激引起的共频和谐波反应的一种形式。在基于ssvep的BCI系统中,噪声和伪影是影响目标检测的关键问题。材料和方法:因此,提供在噪声存在下也能正常工作的目标检测技术是至关重要的。克服噪声影响的一种解决方案是从训练数据中自动提取目标检测的适当特征。本研究利用深度卷积神经网络(Deep Convolutional Neural Network, DCNN)对噪声条件下的SSVEP数据进行特征自动提取。此外,还使用了BETA数据库,其中包含从电磁屏蔽室外收集的70个人的SSVEP数据。为此,首先设计了一种适合目标刺激频率识别的DCNN结构。该网络使用来自BETA数据库的部分数据进行预训练。最后,在单受试者水平,这个预训练的网络被重新训练和评估。结果:再训练后,所有被试的准确率和信息传递率均有显著提高(p值< 0.01)。结论:。准确度和ITR分别提高25.72%和43.10 bpm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Classification of Real-World SSVEP Data in Brain-Computer Interface Speller Systems Using Deep Convolutional Neural Networks
Purpose: Brain-Computer Interface (BCI) Speller systems help people with mobility impairments improve their cognitive and physical abilities. Steady-State Visual Evoked Potential (SSVEP) signals have been used to build high-speed BCI speller systems. SSVEP signals are a subtype of Visual Evoked Potential (VEP), a form of co-frequency, and the harmonics response elicited by a specific frequency stimulus. Noise and artifacts are critical issues for target detection in SSVEP-based BCI systems. Materials and Methods: Thus, it is essential to provide target detection techniques that operate well in the presence of noises. One solution for overcoming the noise impact is to employ approaches that automatically extract the appropriate features for target detection from the training data. Deep Convolutional Neural Network (DCNN) was utilized in this study to automatically extract features from SSVEP data in noisy conditions. Moreover, the BETA database, which contains SSVEP data from 70 individuals collected outside of the electromagnetic shielding room, was used. In this regard, a suitable DCNN structure for target stimulus frequency identification was first designed. The network was pre-trained with part of the data from the BETA database. Finally, at the single-subject level, this pre-trained network was retrained and evaluated. Results: The results showed that after retraining, the accuracy and Information Transfer Rate (ITR) increased (p-value < 0.01) for all participants. Conclusion:.The enhancement in accuracy and ITR are 25.72% and 43.10 bpm, respectively.
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来源期刊
Frontiers in Biomedical Technologies
Frontiers in Biomedical Technologies Health Professions-Medical Laboratory Technology
CiteScore
0.80
自引率
0.00%
发文量
34
审稿时长
12 weeks
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