Electromyogram signal based human emotion classification using KNN and LDA

M. Murugappan
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引用次数: 38

Abstract

In this paper, we presents Electromyogram (EMG) signal based human emotion classification using K Nearest Neighbor (KNN) and Linear Discriminant Analysis (LDA). Five most dominating emotions such as: happy, disgust, fear, sad and neutral are considered and these emotions are induced through Audio-visual stimuli (video clips). EMG signals are obtained by using 3 electrodes over 10 trials per emotion and preprocessed by using Butterworth 6th order filter to remove noises and external interferences. EMG signals on decomposed into four different frequency ranges ((8 Hz– 16 Hz), (16 Hz– 31 Hz) and (16 Hz– 63 Hz)) using Discrete Wavelet Transform (DWT). The ststistical features extracted from the above frequency bands are mapped into five different emotions using two simple classifiers such as KNN and LDA. The value of K in KNN is varied randomly, and maximum classification rate is achieved at K=3. KNN classifier gives the highest classification rate on four emotions (disgust, happy, fear and neutral) different emotions and LDA on sad emotion. The maximum classification rate of disgust, happy, fear neutral, and sad are 90.83%, 100%, 94.17%, and 90.28% and 43.89%, respectively are achieved using KNN and LDA. The results from the proposed methodology are promising and female are easily evoked by different emotional stimuli compared to male.
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基于KNN和LDA的肌电信号情感分类
本文提出了基于K最近邻(KNN)和线性判别分析(LDA)的肌电图(EMG)信号的人类情感分类方法。考虑了五种最主要的情绪,如:快乐,厌恶,恐惧,悲伤和中性,这些情绪是通过视听刺激(视频剪辑)引起的。每个情绪用3个电极10次试验获得肌电信号,并使用巴特沃斯6阶滤波器进行预处理,去除噪声和外界干扰。利用离散小波变换(DWT)将肌电信号分解为(8hz ~ 16hz)、(16hz ~ 31hz)和(16hz ~ 63hz)四个不同的频率范围。从上述频带提取的统计特征使用两个简单的分类器(如KNN和LDA)映射到五种不同的情绪。KNN中K的值是随机变化的,在K=3时分类率最大。KNN分类器对厌恶、快乐、恐惧和中性四种情绪的分类率最高,对悲伤情绪的分类率为LDA。KNN和LDA对厌恶、快乐、恐惧中性和悲伤的分类率分别达到90.83%、100%、94.17%,分别达到90.28%和43.89%。结果表明,与男性相比,女性更容易被不同的情绪刺激所诱发。
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