Author:
Liu Chang, ,Hirota Kaoru,Wang Bo,Dai Yaping,Jia Zhiyang
Abstract
An emotion recognition framework based on a two-channel convolutional neural network (CNN) is proposed to detect the affective state of humans through facial expressions. The framework consists of three parts, i.e., the frontal face detection module, the feature extraction module, and the classification module. The feature extraction module contains two channels: one is for raw face images and the other is for texture feature images. The local binary pattern (LBP) images are utilized for texture feature extraction to enrich facial features and improve the network performance. The attention mechanism is adopted in both CNN feature extraction channels to highlight the features that are related to facial expressions. Moreover, arcface loss function is integrated into the proposed network to increase the inter-class distance and decrease the inner-class distance of facial features. The experiments conducted on the two public databases, FER2013 and CK+, demonstrate that the proposed method outperforms the previous methods, with the accuracies of 72.56% and 94.24%, respectively. The improvement in emotion recognition accuracy makes our approach applicable to service robots.
Funder
National Talents Foundation
Natural Science Foundation of Beijing Municipality
Publisher
Fuji Technology Press Ltd.
Subject
Artificial Intelligence,Computer Vision and Pattern Recognition,Human-Computer Interaction
Reference29 articles.
1. A. De, A. Saha, and M. Pal, “A human facial expression recognition model based on eigen face approach,” Procedia Computer Science, Vol.45, pp. 282-289, 2015.
2. L. Chen, M. Zhou, W. Su, M. Wu, J. She, and K. Hirota, “Softmax regression based deep sparse autoencoder network for facial emotion recognition in human-robot interaction,” Information Sciences, Vol.428, pp. 49-61, 2018.
3. M. S. Hossain, “Patient state recognition system for healthcare using speech and facial expressions,” J. of Medical Systems, Vol.40, Issue 12, Article No.272, 2016.
4. J. Khalfallah and J. B. H. Slama, “Facial expression recognition for intelligent tutoring systems in remote laboratories platform,” Procedia Computer Science, Vol.73, pp. 274-281, 2015.
5. K. Yu, Z. Wang, L. Zhuo, J. Wang, Z. Chi, and D. Feng, “Learning realistic facial expressions from web images,” Pattern Recognition, Vol.46, No.8, pp. 2144-2155, 2013.
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献