Lu Yun, Wang Mingjiang, Zhang Qiquan, Han Yufei
Key Laboratory of Shenzhen Internet of Things Terminal Technology, Harbin Institute of Technology Shenzhen Graduate School, Shenzhen 518055, China.
Entropy (Basel). 2018 May 21;20(5):386. doi: 10.3390/e20050386.
Existing research has revealed that auditory attention can be tracked from ongoing electroencephalography (EEG) signals. The aim of this novel study was to investigate the identification of peoples' attention to a specific auditory object from single-trial EEG signals via entropy measures and machine learning. Approximate entropy (ApEn), sample entropy (SampEn), composite multiscale entropy (CmpMSE) and fuzzy entropy (FuzzyEn) were used to extract the informative features of EEG signals under three kinds of auditory object-specific attention (Rest, Auditory Object1 Attention (AOA1) and Auditory Object2 Attention (AOA2)). The linear discriminant analysis and support vector machine (SVM), were used to construct two auditory attention classifiers. The statistical results of entropy measures indicated that there were significant differences in the values of ApEn, SampEn, CmpMSE and FuzzyEn between Rest, AOA1 and AOA2. For the SVM-based auditory attention classifier, the auditory object-specific attention of Rest, AOA1 and AOA2 could be identified from EEG signals using ApEn, SampEn, CmpMSE and FuzzyEn as features and the identification rates were significantly different from chance level. The optimal identification was achieved by the SVM-based auditory attention classifier using CmpMSE with the scale factor = 10. This study demonstrated a novel solution to identify the auditory object-specific attention from single-trial EEG signals without the need to access the auditory stimulus.
现有研究表明,可以从持续的脑电图(EEG)信号中追踪听觉注意力。这项新研究的目的是通过熵测度和机器学习,从单次试验的EEG信号中研究人们对特定听觉对象的注意力识别。近似熵(ApEn)、样本熵(SampEn)、复合多尺度熵(CmpMSE)和模糊熵(FuzzyEn)被用于提取三种特定听觉对象注意力(静息、听觉对象1注意力(AOA1)和听觉对象2注意力(AOA2))下EEG信号的信息特征。线性判别分析和支持向量机(SVM)被用于构建两个听觉注意力分类器。熵测度的统计结果表明,静息、AOA1和AOA2之间的ApEn、SampEn、CmpMSE和FuzzyEn值存在显著差异。对于基于SVM的听觉注意力分类器,以ApEn、SampEn、CmpMSE和FuzzyEn为特征,可以从EEG信号中识别出静息、AOA1和AOA2的特定听觉对象注意力,且识别率与随机水平有显著差异。基于SVM的听觉注意力分类器使用尺度因子 = 10的CmpMSE实现了最佳识别。这项研究展示了一种无需获取听觉刺激就能从单次试验的EEG信号中识别特定听觉对象注意力的新方法。