基于混沌分析的EEG情感预测特征提取

Suayip Acar, Hamdi Melih Saraoglu, Saime Akdemir Akar
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引用次数: 4

摘要

基于脑电图(EEG)的情绪识别是一个快速发展的领域。本文介绍了一项通过脑电图记录识别人类情绪引起的大脑信号变化的研究,并进一步探讨了混沌分析在情绪预测应用中的可用性。我们设计了一个高效的演示,包括30张来自国际情感图片系统(IAPS)的图片,这些图片可以激发快乐、悲伤和恐惧的情绪。一组由12名男性和8名女性组成的20人自愿参加了我们的研究。为了获取图片诱导环境下的脑电图信号,我们向自愿参与研究的志愿者展示了30张可能反映快乐、悲伤和恐惧情绪的图片。利用MATLAB程序对脑电记录数据进行混沌分析,得到“最大李雅普诺夫指数”和“相关维数”两个不同属性。通过混沌分析得到各属性的均值,采用SPSS程序中的独立t检验和相关t检验进行比较,置信区间为95%,P值为P <;0.05。使用独立样本t检验比较与两个不相关组(female - male)相关的各属性的平均值,使用依赖样本t检验检验两个相关观察值(每个受试者两个观察值)的平均值是否与假设值有显著差异。我们的研究表明,混沌分析为未来的研究带来了希望。
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Feature extraction for EEG based emotion prediction applications through chaotic analysis
Electroencephalogram (EEG)-based emotion recognition is a rapidly growing field. This paper presents a research study on identifying the changes caused by human emotions in brain signals through EEG records and further examines the availability of chaotic analysis for emotion prediction applications. We designed an efficient presentation including 30 pictures from International Affective Picture System (IAPS) which could stimulate the emotions of happiness, sadness and fear. A group of 20 persons consisting of 12 males and 8 females took place in our research study as subjects voluntarily. In order to acquire the EEG signals under picture induction environment, a total of 30 pictures that might reveal the feelings of happiness, sadness and fear were shown to the volunteer subjects that participated in the study voluntarily. Data acquired from EEG records were analyzed by using chaotic analysis through MATLAB program and two different attributes consisting of "Largest Lyapunov Exponent (LLE)" and "Correlation Dimension" were obtained. The mean values of each attribute that obtained through chaotic analysis were compared by using independent t-test and dependent t-test in SPSS program with 95% confidence interval and a P value of p<;0.05. The independent samples t-test was used to compare the mean values of each attribute relevant to two unrelated groups (Females-Males) and Dependent samples t-test was used to test whether the mean values of two related observations (two observations for per subject) significantly differs from the hypothesized value. Our study shows that chaotic analysis promises hope for future studies.
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