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Detection of Auditory Selective Attention Using Artificial Neural Networks: An Intersubject Analysis

机译:使用人工神经网络检测听觉选择性注意力:三立交立分析

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The auditory selective attention is the ability that allows the concentration on a sound stimulus of interest while ignoring other stimuli. The classification of this attention state might be done through auditory steady-state responses, being a possible application in brain-computer interfaces. A method to perform the classification of selective attention is proposed in this article, with dimensionality reduction by principal component analysis, filtering of the signals by a digital Butterworth filter and the computation of the energies of the resultant signals. The energy values are then applied to the inputs of an artificial neural network to perform the classification, obtaining a max accuracy of 64.07% with an information transfer rate of 2.7197 bits/min. So, it is shown that the classification of the effect is possible, however it is still necessary some studies to tell how much the performance of this classification can be improved.
机译:听觉选择性关注是允许浓度对兴趣刺激的能力,同时忽略其他刺激。可以通过听觉稳态响应来完成此关注状态的分类,是脑计算机接口中可能的应用。在本文中提出了一种执行选择性注意分类的方法,通过主成分分析,通过数字Butterworth滤波器滤出信号和所得信号的能量来计算信号的维度降低。然后将能量值应用于人工神经网络的输入以执行分类,获得64.07%的最大精度,信息传输速率为2.7197位/分钟。因此,表明效果的分类是可能的,但是仍然需要一些研究,以说明可以改善这种分类的性能程度。

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