Using Humanoid Robots to Obtain High-Quality Motor Imagery Electroencephalogram Data for Better Brain-Computer Interaction

Shiwei Chenga,Jialing Wang, Jieming Tian, Anjie Zhu,Jing Fan

IEEE Transactions on Cognitive and Developmental Systems(2023)

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摘要
The electroencephalogram (EEG) signal from motor imagery (MI) is used to drive brain-computer interaction (BCI). However, users usually are not adept at performing MI, which leads to low quality EEG signals and decreases the performance of BCI applications. The humanoid robot stimulation approach can guide users in performing MI more proficiently by increasing the cortico-spinal excitability and improving the discrimination of ERD patterns during MI tasks. Compared to the traditional stimulation modes, our proposed humanoid robot stimulation mode can activate higher-quality MI EEG signals. We use CNN and LSTM algorithm for extraction of EEG features and classification. The results showed that the CNN-LSTM can achieve the highest classification accuracy (93.7% ±1.7%) in humanoid robot stimulation mode, and it outperformed all other classifierstimulation mode combinations. This demonstrates the effectiveness and feasibility of using a humanoid robot in realscene MI-BCI application, such as service robots or rehabilitation system for person with motor disabilities.
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关键词
Electroencephalogram,Human-robot interaction,Rehabilitation
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