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Use of Kohonen Maps as Feature Selector for Selective Attention Brain-Computer Interfaces

机译:使用Kohonen Maps作为特征选择器,用于选择性关注脑 - 计算机接口

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Selective attention to visual-spatial stimuli causes decrements of power in alpha band and increments in beta. For steady-state visual evoked potentials (SSVEP) selective attention affects electroencephalogram (EEG) recordings, modulating the power in the range 8-27 Hz. The same behaviour can be seen for auditory stimuli as well, although for auditory steady-state response (ASSR), it is not fully confirmed yet. The design of selective attention based braincomputer interfaces (BCIs) has two major advantages: First, no much training is needed. Second, if properly designed, a steady-state response corresponding to spectral peaks can be elicited, easy to filter and classify. In this paper we study the behaviour of Kohonen Maps as feature selector for a selective attention to auditory stimuli based BCI system.
机译:选择性地关注视觉空间刺激导致α带中的功率和β中的增量。对于稳态视觉诱发电位(SSVEP)选择性注意力影响脑电图(EEG)记录,调制8-27Hz范围内的功率。对于听觉刺激也可以看到相同的行为,尽管对于听觉稳态响应(ASSR),但尚未完全确认。基于选择性关注的脑干电脑接口(BCIS)的设计具有两个主要优点:首先,不需要多大的培训。其次,如果适当设计,可以引发对应于光谱峰值的稳态响应,易于过滤和分类。在本文中,我们研究了Kohonen Maps作为特征选择器的行为,以便选择性地注意基于听觉刺激的BCI系统。

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