A Multifeature Complementary Attention Mechanism for Image Topic Representation in Social Networks

Image topic representation in social networks is vital for people to get significant and valuable content. However, this task is difficult and challenging due to the complexity of image features. This paper proposes a multifeature complementary attention mechanism for image topic representation name...

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Main Authors: Lei Shi, Jia Luo, Gang Cheng, Xia Liu, Gang Xie
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2021/5304321
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spelling doaj-484859c073f0423ea57104dc956c3fad2021-09-06T00:00:35ZengHindawi LimitedScientific Programming1875-919X2021-01-01202110.1155/2021/5304321A Multifeature Complementary Attention Mechanism for Image Topic Representation in Social NetworksLei Shi0Jia Luo1Gang Cheng2Xia Liu3Gang Xie4Institute of Science and Technology Information of ChinaCollege of Economics and ManagementSchool of Computer ScienceSchool of Opto-Electronic Information Science and TechnologySchool of Big Data and Computer ScienceImage topic representation in social networks is vital for people to get significant and valuable content. However, this task is difficult and challenging due to the complexity of image features. This paper proposes a multifeature complementary attention mechanism for image topic representation named CATR. CATR uses scene-level and instance-level object detection methods to obtain the object information on social networks. Here, the image features are divided into focused features and unfocused features. Focused features are used to learn and express semantic information, while unfocused features are used to filter out noise information in focused feature extraction. The attention mechanism is constructed by combining the object features and the features of the image itself, while the image topic representation in social networks is realized by the complementary attention mechanism. Based on the real image data of Sina Weibo and Mir-Flickr 25K, several groups of comparative experiments are constructed to verify the performance of the proposed CATR by leveraging different evaluation measures. The experimental results demonstrate that the proposed CATR obtains an optimal accuracy and significantly outperforms the other comparison methods in image topic representation.http://dx.doi.org/10.1155/2021/5304321
collection DOAJ
language English
format Article
sources DOAJ
author Lei Shi
Jia Luo
Gang Cheng
Xia Liu
Gang Xie
spellingShingle Lei Shi
Jia Luo
Gang Cheng
Xia Liu
Gang Xie
A Multifeature Complementary Attention Mechanism for Image Topic Representation in Social Networks
Scientific Programming
author_facet Lei Shi
Jia Luo
Gang Cheng
Xia Liu
Gang Xie
author_sort Lei Shi
title A Multifeature Complementary Attention Mechanism for Image Topic Representation in Social Networks
title_short A Multifeature Complementary Attention Mechanism for Image Topic Representation in Social Networks
title_full A Multifeature Complementary Attention Mechanism for Image Topic Representation in Social Networks
title_fullStr A Multifeature Complementary Attention Mechanism for Image Topic Representation in Social Networks
title_full_unstemmed A Multifeature Complementary Attention Mechanism for Image Topic Representation in Social Networks
title_sort multifeature complementary attention mechanism for image topic representation in social networks
publisher Hindawi Limited
series Scientific Programming
issn 1875-919X
publishDate 2021-01-01
description Image topic representation in social networks is vital for people to get significant and valuable content. However, this task is difficult and challenging due to the complexity of image features. This paper proposes a multifeature complementary attention mechanism for image topic representation named CATR. CATR uses scene-level and instance-level object detection methods to obtain the object information on social networks. Here, the image features are divided into focused features and unfocused features. Focused features are used to learn and express semantic information, while unfocused features are used to filter out noise information in focused feature extraction. The attention mechanism is constructed by combining the object features and the features of the image itself, while the image topic representation in social networks is realized by the complementary attention mechanism. Based on the real image data of Sina Weibo and Mir-Flickr 25K, several groups of comparative experiments are constructed to verify the performance of the proposed CATR by leveraging different evaluation measures. The experimental results demonstrate that the proposed CATR obtains an optimal accuracy and significantly outperforms the other comparison methods in image topic representation.
url http://dx.doi.org/10.1155/2021/5304321
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