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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Gauging human visual interest using multiscale entropy analysis of EEG signals
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Gauging human visual interest using multiscale entropy analysis of EEG signals

机译:使用EEG信号的多尺度熵分析测量人类视觉兴趣

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摘要

Gauging human emotion can be of great benefit in many applications, such as marketing, gaming, and medicine. In this paper, we build a machine learning model that estimates the enjoyment and visual interest level of individuals experiencing museum content. The input to the model is comprised of 8-channel electroencephalogram signals, which we processed using multiscale entropy analysis to extract three features: the mean, slope of the curve, and complexity index (i.e., the area under the curve). Then, the number of features was drastically reduced using principle component analysis without a notable loss of accuracy. Multivariate analysis of variance showed that there exists a statistically significant correlation (i.e.,p0.05) between the extracted features and the enjoyment level. Moreover, the classification model was able to predict the enjoyment level with a mean squared error of 0.1474 and an accuracy of 98.0%, which outperforms methods in the existing literature.
机译:在许多应用中,衡量人类的情感可能具有很大的好处,例如营销,游戏和医学。在本文中,我们建立了一种机器学习模型,估计体验博物馆内容的个人的享受和视觉兴趣水平。模型的输入包括8通道脑电图信号,我们使用多尺度熵分析处理,以提取三个特征:曲线的平均值,斜率和复杂性指数(即曲线下的区域)。然后,使用原理分量分析,功能的特征数量大幅减少,而无需显着损失精度。多变量的方差分析表明,提取的特征与享受水平之间存在统计学上显着的相关性(即,P <0.05)。此外,分类模型能够预测具有0.1474的平均平方误差的娱乐水平,精度为98.0%,这优于现有文献中的方法。

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