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Classification of Mental Task EEG Signals Using Wavelet Packet Entropy and SVM

机译:基于小波包熵和支持向量机的心理任务脑电信号分类

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This paper address on the classification of mental task EEG signals, which is one of the key issues of Brain-Computer Interface (BCI). We proposed a method using wavelet packet entropy and Support Vector Machine (SVM). First, we apply 7 levels wavelet packet decomposition to each channel of EEG with db4. After extraction four spectrum bands ( δ, θ,α,β ), an entropy algorithm was performed on each bands. The resulting entropy vectors are then used as inputs to SVM to train and test. We test the method on EEG signals during 5 mental tasks collected by 2 subjects. The accuracy on 2-class calssification for subject 1 is averaged 93.0%, and 87.5% for subject 2. The results also show that our method outperforms the classical methods for multi-class problems.
机译:本文讨论了心理任务脑电信号的分类,这是脑机接口(BCI)的关键问题之一。我们提出了一种使用小波包熵和支持向量机(SVM)的方法。首先,我们对具有db4的EEG的每个通道应用7级小波包分解。在提取了四个频谱带(δ,θ,α,β)之后,对每个频带执行熵算法。然后将所得的熵矢量用作SVM的输入以进行训练和测试。我们在2名受试者收集的5项心理任务中对脑电信号进行了测试。主题1的2类校准的平均准确度为93.0%,主题2的平均为87.5%。结果还表明,对于多类问题,我们的方法优于经典方法。

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