A multiscale and multilevel fusion network based on ResNet and MobileFaceNet for facial expression recognition

IF 0.8 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Jiao Ding, Tianfei Zhang, Li Yang, Tianhan Hu
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引用次数: 0

Abstract

There are complex correlations between facial expression and facial landmarks in facial images. The facial landmarks detection technology is more mature than the facial expression recognition methods. Considering this, in order to better address the problem of interclass similarity and intraclass discrepancy in facial expressions recognition (FER), facial landmarks are used to supervise the learning of facial expression features in our work, and a multiscale and multilevel fusion network based on ResNet and MobileFaceNet (MMFRM) is proposed for FER. Specifically, the authors designed a triple CBAM feature fusion module (TCFFM) that characterises the correlation between facial expression and facial landmarks to better guide the learning of expression features. Furthermore, the proposed loss function of removing facial residual features (RFLoss) can suppress facial features and highlight expression features. We extensively validate our proposed MMFRM on two public facial expression datasets, demonstrating the effectiveness of our method.

Abstract Image

一种基于ResNet和MobileFaceNet的多尺度多层次融合网络用于面部表情识别
人脸图像中面部表情与面部标志之间存在复杂的相关性。人脸特征点检测技术比人脸表情识别技术更为成熟。为此,为了更好地解决面部表情识别中的类间相似性和类内差异问题,我们在工作中利用面部地标来监督面部表情特征的学习,并提出了一种基于ResNet和MobileFaceNet的多尺度多层次融合网络(MMFRM)用于面部表情识别。具体而言,作者设计了一个三重CBAM特征融合模块(TCFFM),表征面部表情与面部地标之间的相关性,以更好地指导表情特征的学习。此外,提出的去除面部残留特征的损失函数(RFLoss)可以抑制面部特征,突出表情特征。我们在两个公共面部表情数据集上广泛验证了我们提出的MMFRM,证明了我们的方法的有效性。
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来源期刊
IET Cyber-Physical Systems: Theory and Applications
IET Cyber-Physical Systems: Theory and Applications Computer Science-Computer Networks and Communications
CiteScore
5.40
自引率
6.70%
发文量
17
审稿时长
19 weeks
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