Recognition of Emotion Through Facial Expressions Using EMG Signal

S. Mithbavkar, M. Shah
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引用次数: 10

Abstract

Emotion recognition play important role in human-computer interfacing and a treatment of a person under depression. Facial expressions of a person reflect his emotional status. Electromyogram (EMG)based emotion recognition systems able to recognize true emotions of a person. Current research on EMG based emotion recognition reports overall accuracy in the range 69% to 91 % in a particular emotional environment. In case of posed expressions, emotions were recognized with accuracy range from 91 % to 97%. There is a scope for improvement for enhancing accuracy of emotion recognition in emotional environment. In this research work EMG dataset acquired under emotional environment by Augsburg University is analyzed. From 96 EMG signals representing four emotions, four features including Root mean square, Variance, Mean absolute value and Integrated EMG are calculated. These parameters are given to 3 different classifier namely Elman neural network (ENN) classifier, Back propagation neural network (BPNN), and Nonlinear autoregressive exogenous network (NARX) for classification of emotion. NARX neural network gave maximum overall accuracy of 99.1 %.
基于肌电图信号的面部表情情绪识别
情绪识别在人机交互和抑郁症患者的治疗中发挥着重要作用。一个人的面部表情反映了他的情绪状态。基于肌电图(EMG)的情绪识别系统能够识别一个人的真实情绪。目前基于肌电图的情绪识别研究报告称,在特定的情绪环境中,总体准确率在69%到91%之间。对于摆姿势的表情,识别情绪的准确率在91%到97%之间。在情绪环境下提高情绪识别的准确性还有很大的改进空间。本研究分析了奥格斯堡大学在情绪环境下获得的肌电数据。从代表4种情绪的96个肌电信号中,计算出均方根、方差、均值绝对值和综合肌电信号的4个特征。这些参数被赋予3种不同的分类器,即Elman神经网络(ENN)分类器、Back propagation神经网络(BPNN)和非线性自回归外生网络(NARX),用于情绪分类。NARX神经网络给出了最高的总体准确率为99.1%。
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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