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An Approach of Human Emotional States Classification and Modeling from EEG

机译:基于脑电图的人类情绪状态分类与建模方法

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In this paper, a new approach is proposed to model the emotional states from EEG signals with mathematical expressions based on wavelet analysis and trust region algorithm. EEG signals are collected in different emotional states and some salient features are extracted through temporal and spectral analysis to indicate the dispersion which will unify different states. The maximum classification accuracy of emotion is obtained for DWT analysis rather than FFT and statistical analysis. So DWT analysis is considered as the best suited for mathematical modeling of human emotions. The emotional states are modeled with different mathematical expressions using the obtained coefficients from trust region algorithm that can be compared with the sub-band wavelet coefficients of different states. The proposed approach is verified with the adjusted R-square percentage and the sum of square errors. The adjusted R- square percentage of the mathematical modeled states are 78.4% for relax, 77.18% for motor action; however for memory, pleasant, enjoying music and fear they are 93%, 95.6%, 97.7% and 91.5% respectively. The proposed system is reliable that can be applied for practical real time implementation of human emotion based systems.
机译:本文提出了一种基于小波分析和信任域算法的数学表达式对脑电信号情绪状态进行建模的新方法。在不同的情绪状态下收集脑电信号,并通过时间和频谱分析提取一些显着特征,以表明将统一不同状态的分散。情感的最大分类精度是通过DWT分析而不是FFT和统计分析获得的。因此,DWT分析被认为是最适合人类情感数学建模的方法。使用从信任区域算法获得的系数,可以用不同的数学表达式对情绪状态进行建模,该系数可以与不同状态的子带小波系数进行比较。通过调整后的R平方百分比和平方误差之和验证了所提出的方法。数学模型状态的调整后R平方百分比对于放松是78.4%,对于运动是77.18%。但是为了记忆,愉悦,欣赏音乐和恐惧,他们分别是93%,95.6%,97.7%和91.5%。所提出的系统是可靠的,可以应用于基于人类情感的系统的实际实时实现。

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