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Adaboost for improving classification of left and right hand motor imagery tasks

机译:Adaboost用于改善左右手运动图像任务的分类

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The Adaboost classifier with Fisher discriminant analysis (FDA) as base learner is proposed to discriminate the left and right hand motor imagery tasks in this paper. Firstly, multichannel complexity and held power of EEG within 10-12Hz over two brain hemispheres are extracted as feature vectors, which characterize the brain features during hand motor imagination. Then with the Adaboost classifier, the satisfactory classification results on test data can be obtained. The maximum classification accuracy reaches to 89.29% and the maximum mutual information is 0.59bit. The primary results show that the Adaboost could effectively improve the classification accuracy of left and right hand motor imagery tasks, so that it has great potentials to mental tasks classification for BCI.
机译:本文提出以Fisher判别分析(FDA)为基础的Adaboost分类器来区分左右手运动图像任务。首先,提取两个脑半球的多通道复杂度和脑电图在10-12Hz内的保持功率作为特征向量,这些特征向量表征手部运动想象中的大脑特征。然后,使用Adaboost分类器,可以获得令人满意的测试数据分类结果。最大分类精度达到89.29%,最大互信息量为0.59bit。初步结果表明,Adaboost可以有效提高左右手运动图像任务的分类精度,因此对于脑机接口的心理任务分类具有很大的潜力。

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