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A CNN-LSTM Deep Learning Classifier for Motor Imagery EEG Detection Using a Low-invasive and Low-Cost BCI Headband

机译:CNN-LSTM深度学习分类器,用于使用低侵入性和低成本BCI头带的运动图像脑电图检测

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Brain Computer Interfaces (BCI) can be used not only to monitor users, recognizing their mental state and the activities they perform, but also to make decisions or control their environment. Hence, BCI could improve the health and the independence of users, for example those with low mobility disabilities. In this work, we use a low-cost and low-invasive BCI headband to detect Electroencephalography (EEG) motor imagery. In particular, we propose a deep learning classifier based on Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM) in order to detect EEG motor imagery for left and right hands. Our results report a 96.5% validation accuracy in the correct classification. Additionally, we discuss the influence of using raw data over using the data split in frequency bands in the model proposed. We also discuss the influence of certain frequency bands activity over other frequency bands in the task proposed. These results represent a promising discovery in order to democratize users’ independence by the adoption of low-cost and low-invasive technologies in combination with deep learning.
机译:脑部计算机接口(BCI)不仅可以用来监视用户,识别他们的精神状态和他们执行的活动,还可以用来制定决策或控制他们的环境。因此,BCI可以改善用户(例如行动不便者)的健康和独立性。在这项工作中,我们使用低成本,低侵入性的BCI头带来检测脑电图(EEG)运动图像。特别是,我们提出了基于卷积神经网络(CNN)和长短期记忆(LSTM)的深度学习分类器,以检测左手和右手的脑电图运动图像。我们的结果表明,正确分类的验证准确性为96.5%。此外,我们在提出的模型中讨论了使用原始数据对使用频带划分的数据的影响。在提出的任务中,我们还将讨论某些频段活动对其他频段的影响。这些结果代表着一个有前途的发现,旨在通过将低成本和低侵入性技术与深度学习相结合,使用户的独立性民主化。

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