E2‐capsule neural networks for facial expression recognition using AU‐aware attention

Capsule neural network is a new and popular technique in deep learning. However, the traditional capsule neural network does not extract features sufficiently before the dynamic routing between capsules. In this study, one double enhanced capsule neural network (E2‐Capsnet) that uses AU‐aware attent...

Full description

Bibliographic Details
Main Authors: Shan Cao, Yuqian Yao, Gaoyun An
Format: Article
Language:English
Published: Wiley 2020-09-01
Series:IET Image Processing
Subjects:
Online Access:https://doi.org/10.1049/iet-ipr.2020.0063
id doaj-573cdc6cd38148499b7e13852e6cdd93
record_format Article
spelling doaj-573cdc6cd38148499b7e13852e6cdd932021-07-16T05:10:33ZengWileyIET Image Processing1751-96591751-96672020-09-0114112417242410.1049/iet-ipr.2020.0063E2‐capsule neural networks for facial expression recognition using AU‐aware attentionShan Cao0Yuqian Yao1Gaoyun An2Institute of Information Science, Beijing Jiaotong UniversityBeijingPeople's Republic of ChinaInstitute of Information Science, Beijing Jiaotong UniversityBeijingPeople's Republic of ChinaInstitute of Information Science, Beijing Jiaotong UniversityBeijingPeople's Republic of ChinaCapsule neural network is a new and popular technique in deep learning. However, the traditional capsule neural network does not extract features sufficiently before the dynamic routing between capsules. In this study, one double enhanced capsule neural network (E2‐Capsnet) that uses AU‐aware attention for facial expression recognition (FER) is proposed. The E2‐Capsnet takes advantage of dynamic routing between capsules and has two enhancement modules which are beneficial to FER. The first enhancement module is the convolutional neural network with AU‐aware attention, which can focus on the active areas of the expression. The second enhancement module is the capsule neural network with multiple convolutional layers, which enhances the ability of the feature representation. Finally, the squashing function is used to classify the facial expression. The authors demonstrate the effectiveness of E2‐Capsnet on the two public benchmark datasets, RAF‐DB and EmotioNet. The experimental results show that their E2‐Capsnet is superior to the state‐of‐the‐art methods. The code is available at https://github.com/ShanCao18/E2‐Capsnet.https://doi.org/10.1049/iet-ipr.2020.0063AU‐aware attentiontraditional capsule neural networkdynamic routingdouble enhanced capsule neural networkfacial expression recognitionenhancement module
collection DOAJ
language English
format Article
sources DOAJ
author Shan Cao
Yuqian Yao
Gaoyun An
spellingShingle Shan Cao
Yuqian Yao
Gaoyun An
E2‐capsule neural networks for facial expression recognition using AU‐aware attention
IET Image Processing
AU‐aware attention
traditional capsule neural network
dynamic routing
double enhanced capsule neural network
facial expression recognition
enhancement module
author_facet Shan Cao
Yuqian Yao
Gaoyun An
author_sort Shan Cao
title E2‐capsule neural networks for facial expression recognition using AU‐aware attention
title_short E2‐capsule neural networks for facial expression recognition using AU‐aware attention
title_full E2‐capsule neural networks for facial expression recognition using AU‐aware attention
title_fullStr E2‐capsule neural networks for facial expression recognition using AU‐aware attention
title_full_unstemmed E2‐capsule neural networks for facial expression recognition using AU‐aware attention
title_sort e2‐capsule neural networks for facial expression recognition using au‐aware attention
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2020-09-01
description Capsule neural network is a new and popular technique in deep learning. However, the traditional capsule neural network does not extract features sufficiently before the dynamic routing between capsules. In this study, one double enhanced capsule neural network (E2‐Capsnet) that uses AU‐aware attention for facial expression recognition (FER) is proposed. The E2‐Capsnet takes advantage of dynamic routing between capsules and has two enhancement modules which are beneficial to FER. The first enhancement module is the convolutional neural network with AU‐aware attention, which can focus on the active areas of the expression. The second enhancement module is the capsule neural network with multiple convolutional layers, which enhances the ability of the feature representation. Finally, the squashing function is used to classify the facial expression. The authors demonstrate the effectiveness of E2‐Capsnet on the two public benchmark datasets, RAF‐DB and EmotioNet. The experimental results show that their E2‐Capsnet is superior to the state‐of‐the‐art methods. The code is available at https://github.com/ShanCao18/E2‐Capsnet.
topic AU‐aware attention
traditional capsule neural network
dynamic routing
double enhanced capsule neural network
facial expression recognition
enhancement module
url https://doi.org/10.1049/iet-ipr.2020.0063
work_keys_str_mv AT shancao e2capsuleneuralnetworksforfacialexpressionrecognitionusingauawareattention
AT yuqianyao e2capsuleneuralnetworksforfacialexpressionrecognitionusingauawareattention
AT gaoyunan e2capsuleneuralnetworksforfacialexpressionrecognitionusingauawareattention
_version_ 1721297850197868544