Emotion Recognition Using Deep Neural Network with Vectorized Facial Features

Guojun Yang, J. S. Y. Ortoneda, J. Saniie
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引用次数: 7

Abstract

Emotion reveals valuable information regarding human communications. It is common to use facial expressions to express emotions during a conversation. Moreover, some interpersonal communication can be achieved using facial expressions only. Some facial expressions are universal, they express the same emotion across cultures. If a machine were able to interpret its user's facial expression correctly, it might be able to help its user more efficiently. In this paper, a novel vectorized facial feature for facial expression will be introduced. The vectorized facial feature can be used to build an DNN (Deep Neural Network) for emotion recognition. Using the proposed vectorized facial feature, the DNN can predict emotions with 84.33% accuracy. Nevertheless, compared with CNNs (Convolutional Neural Network) with similar performance, training such DNN requires less time and data.
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基于矢量化面部特征的深度神经网络情感识别
情感揭示了人类交流中有价值的信息。在谈话中使用面部表情来表达情绪是很常见的。此外,一些人际交流只能通过面部表情来实现。有些面部表情是通用的,它们在不同文化中表达同样的情感。如果一台机器能够正确解读用户的面部表情,它可能就能更有效地帮助用户。本文将介绍一种新的面部表情矢量化特征。矢量化的面部特征可以用来构建深度神经网络(DNN)进行情绪识别。使用所提出的矢量化面部特征,深度神经网络预测情绪的准确率为84.33%。然而,与具有相似性能的cnn(卷积神经网络)相比,训练这样的DNN需要更少的时间和数据。
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