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Hybrid Zero-Training BCI based on Convolutional Neural Network for Lower-limb Motor-Imagery

机译:基于卷积神经网络的杂交零训练BCI用于低肢体电动型图像

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Zero-training BCI was presented to overcome the inconvenience and impractical aspects of the training session in the Brain-Computer Interface (BCI) based on Motor Imagery (MI). Zero-training BCI can be classified into a session-to-session transfer BCI and a subject-independent BCI. The session-to-session transfer BCI is characterized by high classification accuracy, but there is a limitation that the model could not be improved as the number of subjects increased. On the other hand, the subject-independent BCI has advantage in increasing the number of subjects, but had the problem of requiring too many subjects for high accuracy. In this study, we proposed the hybrid zero-training BCI that integrates the advantages of the aforementioned two methods and Multidomain CNN that combined time-, spatial-, and phase-domain, and aimed for more practical application and higher classification accuracy. We collected three-class MI EEG data related to lower-limb movement (gait, sit-down, and rest) from three subjects with three sessions per subject. The classification accuracy of the proposed method $(82.10 pm 10.66%)$ in the classification of three-class of MI tasks was significantly higher than that of the existing zero-training BCIs $(66.42 pm 9.68%, 66.67pm6.83%)$ I, and also higher than the conventional BCI $(70.86pm9.46%)$ that trains and evaluates with training sessions collected on the same day although not statistically significant.
机译:提出了零培训BCI,以克服基于电机图像(MI)的脑电脑界面(BCI)中培训会议的不便和不切实际的方面。零训练BCI可以分为会话到会话传输BCI和主题的BCI。会话到会话传输BCI的特征在于高分类准确性,但随着受试者的数量增加,模型无法提高。另一方面,主题无关的BCI在增加受试者的数量时具有优势,但存在需要太多受试者以获得高精度的问题。在这项研究中,我们提出了混合零训练BCI,其集成了上述两种方法和多麦田CNN的优点,这些方法和多麦田CNN组合的时间,空间和相位域,旨在实现更实际的应用和更高的分类精度。从三个受试者收集与肢体运动(步态,坐下和休息)的三类MI EEG数据,每个受试者有三个课程。所提出的方法的分类准确性 $(82.10 PM 10.66 %)$ 在三类MI任务的分类中明显高于现有的零训练BCIS $(66.42 PM 9.68 %,66.67 pm6.83 %)$ 我,也高于传统的BCI $(70.86 PM9.46 %)$ 在同一天收集的培训课程,虽然没有统计学意义,但就火车和评估。

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