Vowel classification from imagined speech using sub-band EEG frequencies and deep belief networks

R. Anandha Sree, A. Kavitha
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引用次数: 9

Abstract

This work has focused on the possibilities of classifying vowels ‘a’, ‘e’, ‘i’, ‘o’, ‘u’ from EEG signals, that has been derived while imagining the vowels, with minimum input features. The EEG signals have been acquired from 5 subjects while imagining and uttering the vowels during a well defined experimental protocol, have been processed and segmented using established signal processing routines. The signals have been segmented under various sub-band frequencies and subjected to Db4 Discrete Wavelet Transform. The various conventional and derived energy based features have been acquired from the sub-band frequency signals, trained and tested using Deep Belief Networks for classifying the imagined vowels. The experiments have been repeated on various electrode combinations. Results obtained from all sub-band frequency based features have shown a good classification accuracy. Further, classification protocol employing features that have been derived from each sub-band frequency has shown that the theta and gamma band frequency features have been more effective with a vowel classification accuracy ranging between 75–100%.
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基于子频带EEG频率和深度信念网络的想象语音元音分类
这项工作的重点是从脑电图信号中对元音“a”、“e”、“i”、“o”、“u”进行分类的可能性,这些信号是在想象元音时得到的,输入特征最少。在一个明确的实验方案中,从5名受试者在想象和说出元音时获得脑电图信号,并使用既定的信号处理程序进行处理和分割。在不同的子频带频率下对信号进行分割,并进行Db4离散小波变换。从子频带频率信号中获取各种传统的和衍生的基于能量的特征,并使用深度信念网络进行训练和测试,以对想象的元音进行分类。实验在不同的电极组合上重复进行。所有子频带频率特征的分类结果均显示出良好的分类精度。此外,采用从每个子频带频率衍生的特征的分类方案表明,theta和gamma频带频率特征更有效,元音分类准确率在75-100%之间。
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