Facial Expression Recognition Based on Attention Mechanism

At present, traditional facial expression recognition methods of convolutional neural networks are based on local ideas for feature expression, which results in the model’s low efficiency in capturing the dependence between long-range pixels, leading to poor performance for facial expression recogni...

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Main Authors: Jiang Daihong, null Hu yuanzheng, Dai Lei, Peng Jin
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2021/6624251
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spelling doaj-c3d8cc724c11465c88b50ae9eb8378532021-07-02T20:37:57ZengHindawi LimitedScientific Programming1875-919X2021-01-01202110.1155/2021/6624251Facial Expression Recognition Based on Attention MechanismJiang Daihong0null Hu yuanzheng1Dai Lei2Peng Jin3Xuzhou University of TechnologyXuzhou University of TechnologyXuzhou University of TechnologyXuzhou University of TechnologyAt present, traditional facial expression recognition methods of convolutional neural networks are based on local ideas for feature expression, which results in the model’s low efficiency in capturing the dependence between long-range pixels, leading to poor performance for facial expression recognition. In order to solve the above problems, this paper combines a self-attention mechanism with a residual network and proposes a new facial expression recognition model based on the global operation idea. This paper first introduces the self-attention mechanism on the basis of the residual network and finds the relative importance of a location by calculating the weighted average of all location pixels, then introduces channel attention to learn different features on the channel domain, and generates channel attention to focus on the interactive features in different channels so that the robustness can be improved; finally, it merges the self-attention mechanism and the channel attention mechanism to increase the model’s ability to extract globally important features. The accuracy of this paper on the CK+ and FER2013 datasets is 97.89% and 74.15%, respectively, which fully confirmed the effectiveness and superiority of the model in extracting global features.http://dx.doi.org/10.1155/2021/6624251
collection DOAJ
language English
format Article
sources DOAJ
author Jiang Daihong
null Hu yuanzheng
Dai Lei
Peng Jin
spellingShingle Jiang Daihong
null Hu yuanzheng
Dai Lei
Peng Jin
Facial Expression Recognition Based on Attention Mechanism
Scientific Programming
author_facet Jiang Daihong
null Hu yuanzheng
Dai Lei
Peng Jin
author_sort Jiang Daihong
title Facial Expression Recognition Based on Attention Mechanism
title_short Facial Expression Recognition Based on Attention Mechanism
title_full Facial Expression Recognition Based on Attention Mechanism
title_fullStr Facial Expression Recognition Based on Attention Mechanism
title_full_unstemmed Facial Expression Recognition Based on Attention Mechanism
title_sort facial expression recognition based on attention mechanism
publisher Hindawi Limited
series Scientific Programming
issn 1875-919X
publishDate 2021-01-01
description At present, traditional facial expression recognition methods of convolutional neural networks are based on local ideas for feature expression, which results in the model’s low efficiency in capturing the dependence between long-range pixels, leading to poor performance for facial expression recognition. In order to solve the above problems, this paper combines a self-attention mechanism with a residual network and proposes a new facial expression recognition model based on the global operation idea. This paper first introduces the self-attention mechanism on the basis of the residual network and finds the relative importance of a location by calculating the weighted average of all location pixels, then introduces channel attention to learn different features on the channel domain, and generates channel attention to focus on the interactive features in different channels so that the robustness can be improved; finally, it merges the self-attention mechanism and the channel attention mechanism to increase the model’s ability to extract globally important features. The accuracy of this paper on the CK+ and FER2013 datasets is 97.89% and 74.15%, respectively, which fully confirmed the effectiveness and superiority of the model in extracting global features.
url http://dx.doi.org/10.1155/2021/6624251
work_keys_str_mv AT jiangdaihong facialexpressionrecognitionbasedonattentionmechanism
AT nullhuyuanzheng facialexpressionrecognitionbasedonattentionmechanism
AT dailei facialexpressionrecognitionbasedonattentionmechanism
AT pengjin facialexpressionrecognitionbasedonattentionmechanism
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