首页> 外文会议>2010 5th International Symposium on Health Informatics and Bioinformatics (HIBIT) >Functional near infrared spectroscopy based congitive task classification using support vector machines
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Functional near infrared spectroscopy based congitive task classification using support vector machines

机译:支持向量机的基于功能近红外光谱的认知任务分类

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the present study analyzes brain hemodynamic concentration of frontal cortex during four cognitive mental tasks. The analysis procedure consists of three sequential steps. First, the strong brain activation regions have been investigated thoroughly from all subjects in order to find a proper electrode location that generates important brain stimuli. Second, a feature extraction method that is based on wavelet transforms and denoising technique for extraction of important task-relevant features. Finally, support vector machines have been using in the classification of mental tasks with wavelet input coefficients. By applying the methodology for 4-subjects in average we achieved 92 % classification rates. However, the results depend on the type of the task that subject were performing. It is expect that the proposed method can be a basic technology for brain-computer interface by combining wavelets with support vector machines.
机译:本研究分析了四种认知心理任务期间额叶皮质的脑血流动力学浓度。分析过程包括三个连续步骤。首先,已经从所有受试者中彻底研究了强大的大脑激活区域,以找到产生重要大脑刺激的正确电极位置。其次,一种基于小波变换和去噪技术的特征提取方法,用于提取与任务相关的重要特征。最后,支持向量机已用于小波输入系数的心理任务分类中。通过将该方法平均应用于4个对象,我们获得了92%的分类率。但是,结果取决于主体正在执行的任务的类型。期望通过将小波与支持向量机相结合,所提出的方法可以成为脑机接口的基本技术。

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