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Classification of single-trial motor imagery EEG by complexity regularization

机译:复杂性正则化单试电机图像的分类

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摘要

Brain computer interface based on electroencephalogram is a popular way to enable communication between brain and output devices helping elderly and disabled people and in rehabilitation. In practice, the effectiveness of brain computer interface has a strong relationship with the classification accuracy of single trials. Common spatial pattern is believed to be an effective algorithm for classifying the single-trial brain signal. Since it is based on the characteristics of a broad frequency band which is manually selected and not individual variability, it is sensitive to noise and individual variability. In this paper, the common spatial pattern was extended in order to improve classification accuracies and to mitigate these influences. The channel-specific complexity weights of characteristic on montage were derived and added to improve the effects of the relevant function area and the separability between classes. The proposed method was evaluated using two public datasets, and achieved an average accuracy of 18.4% higher than conventional common spatial pattern, and the performance of the proposed method over conventional common spatial pattern was significant (p<0.05). It indicates that the proposed method extracts subject-specific characteristics and outperforms the conventional common spatial pattern in single-trial EEG classification.
机译:基于脑电图的脑电脑界面是一种流行的方式,可以实现脑和输出设备之间的沟通帮助老年和残疾人以及康复。在实践中,脑电脑界面的有效性与单次试验的分类准确性有很强的关系。据信常见的空间模式是用于分类单试性脑信号的有效算法。由于它基于手动选择而不是单独的可变性的宽频带的特性,因此对噪声和各个变异性敏感。在本文中,延长了常见的空间模式,以提高分类精度并减轻这些影响。衍生并添加了蒙太奇特征的特定声道特定复杂性重量,以改善相关函数区域的效果和类之间的可分离性。通过两个公共数据集评估所提出的方法,并且实现的平均精度高于常规常见空间图案的18.4%,并且所提出的方法对常规常见空间模式的性能显着(P <0.05)。它表明,所提出的方法提取特定的特定特征并优于单试性EEG分类中的传统常见空间模式。

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