Facial Data Visualization for Improved Deep Learning Based Emotion Recognition
A convolutional neural network (CNN) has been widely used in facial expression recognition (FER) because it can automatically learn discriminative appearance features from an expression image. To make full use of its discriminating capability, this paper suggests a simple but effective method for CN...
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Korea Institute of Science and Technology Information
2019-06-01
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doaj-beee423994124f42953f01b16c6d7a2a2020-11-25T03:24:25ZengKorea Institute of Science and Technology InformationJournal of Information Science Theory and Practice2287-90992287-45772019-06-0172323910.1633/JISTaP.2019.7.2.3Facial Data Visualization for Improved Deep Learning Based Emotion RecognitionLee, Seung Ho0Korea University of Technology and EducationA convolutional neural network (CNN) has been widely used in facial expression recognition (FER) because it can automatically learn discriminative appearance features from an expression image. To make full use of its discriminating capability, this paper suggests a simple but effective method for CNN based FER. Specifically, instead of an original expression image that contains facial appearance only, the expression image with facial geometry visualization is used as input to CNN. In this way, geometric and appearance features could be simultaneously learned, making CNN more discriminative for FER. A simple CNN extension is also presented in this paper, aiming to utilize geometric expression change derived from an expression image sequence. Experimental results on two public datasets (CK+ and MMI) show that CNN using facial geometry visualization clearly outperforms the conventional CNN using facial appearance only. facial expression recognitionconvolutional neural networkfacial landmark pointsfacial geometry visualization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lee, Seung Ho |
spellingShingle |
Lee, Seung Ho Facial Data Visualization for Improved Deep Learning Based Emotion Recognition Journal of Information Science Theory and Practice facial expression recognition convolutional neural network facial landmark points facial geometry visualization |
author_facet |
Lee, Seung Ho |
author_sort |
Lee, Seung Ho |
title |
Facial Data Visualization for Improved Deep Learning Based Emotion Recognition |
title_short |
Facial Data Visualization for Improved Deep Learning Based Emotion Recognition |
title_full |
Facial Data Visualization for Improved Deep Learning Based Emotion Recognition |
title_fullStr |
Facial Data Visualization for Improved Deep Learning Based Emotion Recognition |
title_full_unstemmed |
Facial Data Visualization for Improved Deep Learning Based Emotion Recognition |
title_sort |
facial data visualization for improved deep learning based emotion recognition |
publisher |
Korea Institute of Science and Technology Information |
series |
Journal of Information Science Theory and Practice |
issn |
2287-9099 2287-4577 |
publishDate |
2019-06-01 |
description |
A convolutional neural network (CNN) has been widely used in facial expression recognition (FER) because it can automatically learn discriminative appearance features from an expression image. To make full use of its discriminating capability, this paper suggests a simple but effective method for CNN based FER. Specifically, instead of an original expression image that contains facial appearance only, the expression image with facial geometry visualization is used as input to CNN. In this way, geometric and appearance features could be simultaneously learned, making CNN more discriminative for FER. A simple CNN extension is also presented in this paper, aiming to utilize geometric expression change derived from an expression image sequence. Experimental results on two public datasets (CK+ and MMI) show that CNN using facial geometry visualization clearly outperforms the conventional CNN using facial appearance only. |
topic |
facial expression recognition convolutional neural network facial landmark points facial geometry visualization |
work_keys_str_mv |
AT leeseungho facialdatavisualizationforimproveddeeplearningbasedemotionrecognition |
_version_ |
1724601593266962432 |