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A Deep Learning Method for Classification of EEG Data Based on Motor Imagery

机译:基于电动机图像的EEG数据分类的深度学习方法

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Effectively extracting EEG data features is the key point in Brain Computer Interface technology. In this paper, aiming at classifying EEG data based on Motor Imagery task, Deep Learning (DL) algorithm was applied. For the classification of left and right hand motor imagery, firstly, based on certain single channel, a weak classifier was trained by deep belief net (DBN); then borrow the idea of Ada-boost algorithm to combine the trained weak classifiers as a more powerful one. During the process of constructing DBN structure, many RBMs (Restrict Boltzmann Machine) are stacked on top of each other by setting the hidden layer of the bottom layer RBM as the visible layer of the next RBM, and Contrastive Divergence (CD) algorithm was also exploited to train multilayered DBN effectively. The performance of the proposed DBN was tested with different combinations of hidden units and hidden layers on multiple subjects, the experimental results showed that the proposed method performs better with 8 hidden layers. The recognition accuracy results were compared with Support vector machine (SVM) and DBN classifier demonstrated better performance in all tested cases. There was an improvement of 4 – 6% for certain cases.
机译:有效地提取EEG数据特征是脑电脑接口技术的关键点。本文旨在根据电机图像任务进行分类eEG数据,应用了深度学习(DL)算法。对于左手和右手电动机图像的分类,首先,基于某些单一通道,深色信仰网(DBN)培训弱分类器;然后借用ADA-Boost算法的想法将培训的弱分类器组合为更强大的弱分类器。在构建DBN结构,许多RBMS(限制波尔兹曼机)通过设置底层RBM的隐藏层作为下一个RBM的可见层被堆叠在彼此的顶部上,和对比发散(CD)算法也是过程利用有效地训练多层DBN。在多个受试者上用不同组合的隐藏单元和隐藏层的不同组合测试了所提出的DBN的性能,实验结果表明,该方法用8个隐藏层进行更好。将识别准确性结果与支持向量机(SVM)和DBN分类器进行比较,并在所有测试的情况下表现出更好的性能。某些情况下有4 - 6%的提高。

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