Strategic decision-making learning from label distributions : an approach for facial age estimation
Nowadays, label distribution learning is among the state-of-the-art methodologies in facial age estimation. It takes the age of each facial image instance as a label distribution with a series of age labels rather than the single chronological age label that is commonly used. However, this methodolo...
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sg-ntu-dr.10356-804482022-02-16T16:27:05Z Strategic decision-making learning from label distributions : an approach for facial age estimation Wang, Han Zhao, Wei School of Electrical and Electronic Engineering Strategic Decision-making Label Distribution Learning DRNTU::Engineering::Electrical and electronic engineering Nowadays, label distribution learning is among the state-of-the-art methodologies in facial age estimation. It takes the age of each facial image instance as a label distribution with a series of age labels rather than the single chronological age label that is commonly used. However, this methodology is deficient in its simple decision-making criterion: the final predicted age is only selected at the one with maximum description degree. In many cases, different age labels may have very similar description degrees. Consequently, blindly deciding the estimated age by virtue of the highest description degree would miss or neglect other valuable age labels that may contribute a lot to the final predicted age. In this paper, we propose a strategic decision-making label distribution learning algorithm (SDM-LDL) with a series of strategies specialized for different types of age label distribution. Experimental results from the most popular aging face database, FG-NET, show the superiority and validity of all the proposed strategic decision-making learning algorithms over the existing label distribution learning and other single-label learning algorithms for facial age estimation. The inner properties of SDM-LDL are further explored with more advantages. Published version 2018-11-02T06:23:13Z 2019-12-06T13:49:40Z 2018-11-02T06:23:13Z 2019-12-06T13:49:40Z 2016 Journal Article Zhao, W., & Wang, H. (2016). Strategic Decision-Making Learning from Label Distributions: An Approach for Facial Age Estimation. Sensors, 16(7), 994-. doi:10.3390/s16070994 1424-8220 https://hdl.handle.net/10356/80448 http://hdl.handle.net/10220/46538 10.3390/s16070994 27367691 en Sensors © 2016 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC-BY) license (http://creativecommons.org/licenses/by/4.0/). 20 p. application/pdf |
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Strategic Decision-making Label Distribution Learning DRNTU::Engineering::Electrical and electronic engineering Wang, Han Zhao, Wei Strategic decision-making learning from label distributions : an approach for facial age estimation |
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Nowadays, label distribution learning is among the state-of-the-art methodologies in facial age estimation. It takes the age of each facial image instance as a label distribution with a series of age labels rather than the single chronological age label that is commonly used. However, this methodology is deficient in its simple decision-making criterion: the final predicted age is only selected at the one with maximum description degree. In many cases, different age labels may have very similar description degrees. Consequently, blindly deciding the estimated age by virtue of the highest description degree would miss or neglect other valuable age labels that may contribute a lot to the final predicted age. In this paper, we propose a strategic decision-making label distribution learning algorithm (SDM-LDL) with a series of strategies specialized for different types of age label distribution. Experimental results from the most popular aging face database, FG-NET, show the superiority and validity of all the proposed strategic decision-making learning algorithms over the existing label distribution learning and other single-label learning algorithms for facial age estimation. The inner properties of SDM-LDL are further explored with more advantages. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Wang, Han Zhao, Wei |
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Article |
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Wang, Han Zhao, Wei |
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Wang, Han |
title |
Strategic decision-making learning from label distributions : an approach for facial age estimation |
title_short |
Strategic decision-making learning from label distributions : an approach for facial age estimation |
title_full |
Strategic decision-making learning from label distributions : an approach for facial age estimation |
title_fullStr |
Strategic decision-making learning from label distributions : an approach for facial age estimation |
title_full_unstemmed |
Strategic decision-making learning from label distributions : an approach for facial age estimation |
title_sort |
strategic decision-making learning from label distributions : an approach for facial age estimation |
publishDate |
2018 |
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https://hdl.handle.net/10356/80448 http://hdl.handle.net/10220/46538 |
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1725985661458055168 |