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EEG feature extraction and pattern classification based on motor imagery in brain-computer interface

机译:人机界面中基于运动图像的脑电特征提取与模式分类

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Accurate classification of left and right hand motor imagery of EEG is an important issue in brain-computer interface (BCI). Here, discrete wavelet transform was firstly applied to extract the features of left and right hand motor imagery in EEG. Secondly, Fisher Linear Discriminant Analysis was used with two different threshold calculation methods and obtained good misclassification rate. We also used Support Vector Machine to compare the performance with Fisher Linear Discriminant Analysis. The final classification results showed that false classification rate by Support Vector Machine was the lowest and gained a ideal classification results.
机译:脑电的左右手运动图像的准确分类是脑机接口(BCI)中的重要问题。在这里,首先应用离散小波变换提取脑电图中左右手运动图像的特征。其次,采用Fisher线性判别分析和两种不同的阈值计算方法,获得了很好的误分类率。我们还使用支持向量机将性能与Fisher线性判别分析进行了比较。最终的分类结果表明,支持向量机的错误分类率最低,获得了理想的分类结果。

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