Facial emotion recognition based on deep transfer learning approach

被引:0
作者
Aziza Sultana
Samrat Kumar Dey
Md. Armanur Rahman
机构
[1] Dhaka International University (DIU),Department of Computer Science and Engineering (CSE)
[2] School of Science and Technology (SST),Faculty of Engineering and Technology
[3] Bangladesh Open University (BOU),undefined
[4] Multimedia University,undefined
来源
Multimedia Tools and Applications | 2023年 / 82卷
关键词
Transfer learning; VGG19; CK + ; JAFFE; Emotion recognition;
D O I
暂无
中图分类号
学科分类号
摘要
Facial expressions play a major role in the communication of emotions through nonverbal channels. In recent years, the topic of automatic facial expression recognition (FER) has become very popular. Researchers are looking at how it may be used in education, security surveillance, smart healthcare system, and to understand the behavior of a community or a person. As long as there are variations in images, such as different poses and lighting, accurate and robust FER remains a challenge using computer models. We developed an approach to automatically classifying facial expressions based on deep transfer learning. The approach was constructed with convolutional neural networks (CNN) and VGG19, which is a transfer learning model. To train the model, we employed contemporary deep learning techniques such as optimal learning rate finder, fine-tuning, and data augmentation. On both the Extended Cohn-Kanade (CK+) and the Japanese Female Facial Expression (JAFFE) datasets, the proposed model achieved accuracy values of 94.8% and 93.7%, respectively. The developed system has already been tested on a vast database and can be used to assist online education systems, surveillance systems, and smart healthcare systems in their daily activities.
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页码:44175 / 44189
页数:14
相关论文
共 44 条
[1]  
Agarwal S(2018)Synthesis of realistic facial expressions using expression map IEEE Trans Multimed 21 902-914
[2]  
Mukherjee DP(2012)Collecting large, richly annotated facial-expression databases from movies IEEE Multimed 19 34-41
[3]  
Dhall A(2018)Deep learning in radiology: does one size fit all? J Am Coll Radiol 15 521-526
[4]  
Goecke R(2014)Automatic facial expression recognition using features of salient facial patches IEEE Trans Affect Comput 6 1-12
[5]  
Lucey S(2018)Hybrid deep neural networks for face emotion recognition Pattern Recognit Lett 115 101-106
[6]  
Gedeon T(1998)Gradient-based learning applied to document recognition Proc IEEE 86 2278-2324
[7]  
Erickson BJ(2018)Facial expression recognition with identity and emotion joint learning IEEE Trans Affect Comput 12 544-550
[8]  
Korfiatis P(2017)Facial expression recognition with convolutional neural networks: coping with few data and the training sample order Pattern Recognit 61 610-628
[9]  
Kline TL(2020)Voxel-based 3D face reconstruction and its application to face recognition using sequential deep learning Multimed Tools Appl 79 17303-17330
[10]  
Akkus Z(2020)Voxel-based 3D occlusion-invariant face recognition using game theory and simulated annealing Multimed Tools Appl 79 26517-26547