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Toward an EEG-Based Recognition of Music Liking Using Time-Frequency Analysis

机译:基于时频分析的基于EEG的音乐喜好识别

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摘要

Affective phenomena, as reflected through brain activity, could constitute an effective index for the detection of music preference. In this vein, this paper focuses on the discrimination between subjects’ electroencephalogram (EEG) responses to self-assessed liked or disliked music, acquired during an experimental procedure, by evaluating different feature extraction approaches and classifiers to this end. Feature extraction is based on time–frequency (TF) analysis by implementing three TF techniques, i.e., spectrogram, Zhao–Atlas–Marks distribution and Hilbert–Huang spectrum (HHS). Feature estimation also accounts for physiological parameters that relate to EEG frequency bands, reference states, time intervals, and hemispheric asymmetries. Classification is performed by employing four classifiers, i.e., support vector machines, $k$-nearest neighbors $(k$ -NN), quadratic and Mahalanobis distance-based discriminant analyses. According to the experimental results across nine subjects, best classification accuracy {86.52 (±0.76)%} was achieved using $k$-NN and HHS-based feature vectors ( FVs) representing a bilateral average activity, referred to a resting period, in $beta$ (13–30 Hz) and $gamma$ (30–49 Hz) bands. Activity in these bands may point to a connection between music preference and emotional arousal phenomena. Furthermore, HHS-based FVs were found to be robust against noise corruption. The outcomes of this study provide early evidence and pave the way for the development of a generalized brain computer interface for music preference recognition.
机译:通过大脑活动反映出的情感现象可以构成检测音乐偏好的有效指标。因此,本文着重于通过评估不同的特征提取方法和分类器,来区分受试者在实验过程中获得的对自己评估的喜欢或不喜欢音乐的脑电图(EEG)反应。特征提取基于时频(TF)分析,通过实施三种TF技术,即频谱图,Zhao-Atlas-Marks分布和希尔伯特-黄谱(HHS)。特征估计还考虑了与EEG频带,参考状态,时间间隔和半球不对称性有关的生理参数。通过使用四个分类器(即支持向量机,$ k $-最近邻居$(k $ -NN),二次和基于Mahalanobis距离的判别分析)进行分类。根据九个受试者的实验结果,使用代表双侧平均活动的$ k $ -NN和基于HHS的特征向量(FV)可获得最佳分类精度{86.52(±0.76)%} $ beta $(13–30 Hz)和$ gamma $(30–49 Hz)频段。这些乐队的活动可能表明音乐喜好与情感唤醒现象之间存在联系。此外,发现基于HHS的FV具有强大的抗噪能力。这项研究的结果提供了早期证据,并为音乐偏好识别的通用脑计算机接口的开发铺平了道路。

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