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Feature extraction and classification of EEG for imaging left-right hands movement

机译:EEG的特征提取和分类,用于右右手运动

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Brain-computer interface (BCI) is a system that allows its users to control external devices with brain activity. This paper presents a new method for classifying the off-line experimental electroencephalogram (EEG) signals from the BCI Competition 2003..which achieved higher accuracy. The method has three main steps. First, wavelet coefficient was reconstructed by using wavelet transform in order to extract feature of EEG for mental tasks. At the same time, in frequency extraction, we use the AR model power spectral density as the frequency feature. Second, we combine the power spectral density feature and the wavelet coefficient feature as the final feature vector. Finally, linear algorithm is introduced to classify the feature vector based on iteration to obtain weight of the vector's components. The classified result shows that the effect using feature vector is better than just using one feature. This research provides a new idea for the identification of motor imagery tasks and establishes a substantial theory and experimental support for BCI application.
机译:脑电脑接口(BCI)是一个系统,允许其用户控制具有大脑活动的外部设备。本文介绍了从BCI竞赛2003年竞争的离线实验脑电图(EEG)信号进行分类的新方法。达到更高的准确性。该方法有三个主要步骤。首先,通过使用小波变换来重建小波系数,以便提取脑电图的特征进行精神任务。同时,在频率提取中,我们使用AR模型功率谱密度作为频率特征。其次,我们将功率谱密度特征和小波系数特征组合为最终特征向量。最后,引入了线性算法基于迭代来对特征向量进行分类以获得矢量组件的权重。分类结果表明,使用特征向量的效果优于使用一个功能。本研究为识别电机图像任务提供了一种新的想法,并对BCI应用建立了实质性和实验支持。

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