Robust Deep Age Estimation Method Using Artificially Generated Image Set
Human age estimation is one of the key factors in the field of Human–Robot Interaction/Human–Computer Interaction (HRI/HCI). Owing to the development of deep‐learning technologies, age recognition has recently been attempted. In general, however, deep learning techniques require a large‐scale databa...
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2017-10-01
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Online Access: | https://doi.org/10.4218/etrij.17.0117.0078 |
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doaj-75c0e5adaa764852b6f66da5ca596d362020-11-25T03:15:41ZengElectronics and Telecommunications Research Institute (ETRI)ETRI Journal1225-64632233-73262017-10-0139564365110.4218/etrij.17.0117.007810.4218/etrij.17.0117.0078Robust Deep Age Estimation Method Using Artificially Generated Image SetJaeyoon JangSeung‐Hyuk JeonJaehong KimHosub YoonHuman age estimation is one of the key factors in the field of Human–Robot Interaction/Human–Computer Interaction (HRI/HCI). Owing to the development of deep‐learning technologies, age recognition has recently been attempted. In general, however, deep learning techniques require a large‐scale database, and for age learning with variations, a conventional database is insufficient. For this reason, we propose an age estimation method using artificially generated data. Image data are artificially generated through 3D information, thus solving the problem of shortage of training data, and helping with the training of the deep‐learning technique. Augmentation using 3D has advantages over 2D because it creates new images with more information. We use a deep architecture as a pre‐trained model, and improve the estimation capacity using artificially augmented training images. The deep architecture can outperform traditional estimation methods, and the improved method showed increased reliability. We have achieved state‐of‐the‐art performance using the proposed method in the Morph‐II dataset and have proven that the proposed method can be used effectively using the Adience dataset.https://doi.org/10.4218/etrij.17.0117.0078Age estimationAge regressionConvolutional neural network3D augmentation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jaeyoon Jang Seung‐Hyuk Jeon Jaehong Kim Hosub Yoon |
spellingShingle |
Jaeyoon Jang Seung‐Hyuk Jeon Jaehong Kim Hosub Yoon Robust Deep Age Estimation Method Using Artificially Generated Image Set ETRI Journal Age estimation Age regression Convolutional neural network 3D augmentation |
author_facet |
Jaeyoon Jang Seung‐Hyuk Jeon Jaehong Kim Hosub Yoon |
author_sort |
Jaeyoon Jang |
title |
Robust Deep Age Estimation Method Using Artificially Generated Image Set |
title_short |
Robust Deep Age Estimation Method Using Artificially Generated Image Set |
title_full |
Robust Deep Age Estimation Method Using Artificially Generated Image Set |
title_fullStr |
Robust Deep Age Estimation Method Using Artificially Generated Image Set |
title_full_unstemmed |
Robust Deep Age Estimation Method Using Artificially Generated Image Set |
title_sort |
robust deep age estimation method using artificially generated image set |
publisher |
Electronics and Telecommunications Research Institute (ETRI) |
series |
ETRI Journal |
issn |
1225-6463 2233-7326 |
publishDate |
2017-10-01 |
description |
Human age estimation is one of the key factors in the field of Human–Robot Interaction/Human–Computer Interaction (HRI/HCI). Owing to the development of deep‐learning technologies, age recognition has recently been attempted. In general, however, deep learning techniques require a large‐scale database, and for age learning with variations, a conventional database is insufficient. For this reason, we propose an age estimation method using artificially generated data. Image data are artificially generated through 3D information, thus solving the problem of shortage of training data, and helping with the training of the deep‐learning technique. Augmentation using 3D has advantages over 2D because it creates new images with more information. We use a deep architecture as a pre‐trained model, and improve the estimation capacity using artificially augmented training images. The deep architecture can outperform traditional estimation methods, and the improved method showed increased reliability. We have achieved state‐of‐the‐art performance using the proposed method in the Morph‐II dataset and have proven that the proposed method can be used effectively using the Adience dataset. |
topic |
Age estimation Age regression Convolutional neural network 3D augmentation |
url |
https://doi.org/10.4218/etrij.17.0117.0078 |
work_keys_str_mv |
AT jaeyoonjang robustdeepageestimationmethodusingartificiallygeneratedimageset AT seunghyukjeon robustdeepageestimationmethodusingartificiallygeneratedimageset AT jaehongkim robustdeepageestimationmethodusingartificiallygeneratedimageset AT hosubyoon robustdeepageestimationmethodusingartificiallygeneratedimageset |
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1724638167714234368 |