基于Gabor方差特征和反向传播神经网络分类器的人类情绪识别

Kanchan S. Vaidya, Pradeep M. Patil, Mukil Alagirisamy, B. Pansambal
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引用次数: 0

摘要

这是很自然的,因为人类总是会对任何特定的事件自动地表达他们的感受和反应。面部表情是人类交流的重要媒介,它表达了人类的思想、感情和当前的心理状态,因此被广泛应用于许多领域。本文旨在介绍一种新的人类情绪识别方法,利用平均方差作为由Gabor滤波器卷积n个图像得到的特征向量,有助于对这些情绪进行分类。基于Gabor方差特征,采用三层反向传播神经网络(BPNN)作为分类器。实验工作中使用的BPNN架构在输入层包含210个输入单元,对应Gabor方差特征向量的位移信息。输出层有6个单元,隐藏层有256个单元。根据JAFFE数据库,所提出的情绪识别算法的平均准确率最高,为94.66%。使用相同数据库的时序分析表明,由于BPNN只有三层结构,只需要一次训练,重点是召回时间,因此模板响应时间更低。因为网络训练只需要一次,所以回忆时间比训练时间更重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Emotion Recognition Using Gabor Variance Features with Back Propagation Neural Network Classifier
It is natural as stimuli-response humans always express their feelings & reaction to any certain event automatically appears on the 'face,. Facial expression is an important medium for human communication as it express human thinking, feelings and his or her current mental situation, thus it is being used in many application areas. This paper aims to introduce a novel method for human emotion recognition using average variance as the feature vectors obtained from the Gabor filter convolved 'n, images which helps in classifying those emotions. Based on the Gabor variance features, a three layer back propagation neural network (BPNN) has been used as a classifier. The BPNN architecture used in the experimentation work contains 210 input units in the input layer, which corresponds to the displacement information of the Gabor variance feature vectors. There are 6 units in the output layer and one hidden layer of 256 units. According to the JAFFE database, the average accuracy of the proposed emotion recognition algorithm was the highest with 94.66%. Timing analysis using the same database shows that the template response time is lower because the BPNN is only 3-tier architecture which requires a single training as emphasis is on recall time. Because network training is only needed once, recall time is more important than training time.
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