Facial expression and EEG signal based classification of emotion

A. Basu, Anisha Halder
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引用次数: 15

Abstract

The paper provides a novel approach to emotion recognition from facial expression and Electro Encephalograph (EEG) signal of subjects. Five subjects are requested to watch particular videos for arousing five different emotions in their mind. The facial expressions and EEG signal of subjects are recorded by a good quality camera and EEG machine respectively while watching the movie clips. Facial features include mouth-opening, eye-opening, eyebrow-constriction, and EEG features include, 132 number of Wavelet coefficients, 16 numbers of Kalman Filter coefficients and power spectral density, are then extracted from the facial expression and EEG signal frames. Then these huge numbers of features are reduced by Principle Component Analysis (PCA) and feature vector is constructed for 5 different emotions. A linear Support Vector Machine classifier is used to classify the extracted feature vectors into different emotion classes. Experimental results confirm that the recognition accuracy of emotion up to a level of 97% is maintained, even when the mean and standard deviation of noise are as high as 5% and 20% respectively over the individual features.
基于面部表情和脑电图信号的情绪分类
本文提出了一种利用被试面部表情和脑电图信号进行情绪识别的新方法。五名受试者被要求观看特定的视频,以唤起他们脑海中五种不同的情绪。实验对象在观看电影片段时,分别用高质量摄像机和脑电图仪记录面部表情和脑电图信号。人脸特征包括张口、睁眼、皱眉,脑电图特征包括从面部表情和脑电图信号帧中提取132个小波系数、16个卡尔曼滤波系数和功率谱密度。然后通过主成分分析(PCA)对这些大量的特征进行约简,并为5种不同的情绪构造特征向量。使用线性支持向量机分类器将提取的特征向量分类为不同的情感类别。实验结果证实,即使在噪声的均值和标准差分别高达个体特征的5%和20%的情况下,对情绪的识别准确率仍保持在97%的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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