Adaptive 3D Model-Based Facial Expression Synthesis and Pose Frontalization

Facial expressions are one of the important non-verbal ways used to understand human emotions during communication. Thus, acquiring and reproducing facial expressions is helpful in analyzing human emotional states. However, owing to complex and subtle facial muscle movements, facial expression model...

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Main Authors: Yu-Jin Hong, Sung Eun Choi, Gi Pyo Nam, Heeseung Choi, Junghyun Cho, Ig-Jae Kim
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/9/2578
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spelling doaj-071960f2aef34f77b862c2eed0f611c82020-11-25T03:00:57ZengMDPI AGSensors1424-82202020-05-01202578257810.3390/s20092578Adaptive 3D Model-Based Facial Expression Synthesis and Pose FrontalizationYu-Jin Hong0Sung Eun Choi1Gi Pyo Nam2Heeseung Choi3Junghyun Cho4Ig-Jae Kim5Center for Imaging Media Research, Korea Institute of Science and Technology, Seoul 02792, KoreaDepartment of Smart IT, Hanyang Women’s University, Seoul 04763, KoreaCenter for Imaging Media Research, Korea Institute of Science and Technology, Seoul 02792, KoreaCenter for Imaging Media Research, Korea Institute of Science and Technology, Seoul 02792, KoreaCenter for Imaging Media Research, Korea Institute of Science and Technology, Seoul 02792, KoreaCenter for Imaging Media Research, Korea Institute of Science and Technology, Seoul 02792, KoreaFacial expressions are one of the important non-verbal ways used to understand human emotions during communication. Thus, acquiring and reproducing facial expressions is helpful in analyzing human emotional states. However, owing to complex and subtle facial muscle movements, facial expression modeling from images with face poses is difficult to achieve. To handle this issue, we present a method for acquiring facial expressions from a non-frontal single photograph using a 3D-aided approach. In addition, we propose a contour-fitting method that improves the modeling accuracy by automatically rearranging 3D contour landmarks corresponding to fixed 2D image landmarks. The acquired facial expression input can be parametrically manipulated to create various facial expressions through a blendshape or expression transfer based on the FACS (Facial Action Coding System). To achieve a realistic facial expression synthesis, we propose an exemplar-texture wrinkle synthesis method that extracts and synthesizes appropriate expression wrinkles according to the target expression. To do so, we constructed a wrinkle table of various facial expressions from 400 people. As one of the applications, we proved that the expression-pose synthesis method is suitable for expression-invariant face recognition through a quantitative evaluation, and showed the effectiveness based on a qualitative evaluation. We expect our system to be a benefit to various fields such as face recognition, HCI, and data augmentation for deep learning.https://www.mdpi.com/1424-8220/20/9/2578facial expression synthesisfacial expression recognitionsingle view face reconstructionpose frontalization
collection DOAJ
language English
format Article
sources DOAJ
author Yu-Jin Hong
Sung Eun Choi
Gi Pyo Nam
Heeseung Choi
Junghyun Cho
Ig-Jae Kim
spellingShingle Yu-Jin Hong
Sung Eun Choi
Gi Pyo Nam
Heeseung Choi
Junghyun Cho
Ig-Jae Kim
Adaptive 3D Model-Based Facial Expression Synthesis and Pose Frontalization
Sensors
facial expression synthesis
facial expression recognition
single view face reconstruction
pose frontalization
author_facet Yu-Jin Hong
Sung Eun Choi
Gi Pyo Nam
Heeseung Choi
Junghyun Cho
Ig-Jae Kim
author_sort Yu-Jin Hong
title Adaptive 3D Model-Based Facial Expression Synthesis and Pose Frontalization
title_short Adaptive 3D Model-Based Facial Expression Synthesis and Pose Frontalization
title_full Adaptive 3D Model-Based Facial Expression Synthesis and Pose Frontalization
title_fullStr Adaptive 3D Model-Based Facial Expression Synthesis and Pose Frontalization
title_full_unstemmed Adaptive 3D Model-Based Facial Expression Synthesis and Pose Frontalization
title_sort adaptive 3d model-based facial expression synthesis and pose frontalization
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-05-01
description Facial expressions are one of the important non-verbal ways used to understand human emotions during communication. Thus, acquiring and reproducing facial expressions is helpful in analyzing human emotional states. However, owing to complex and subtle facial muscle movements, facial expression modeling from images with face poses is difficult to achieve. To handle this issue, we present a method for acquiring facial expressions from a non-frontal single photograph using a 3D-aided approach. In addition, we propose a contour-fitting method that improves the modeling accuracy by automatically rearranging 3D contour landmarks corresponding to fixed 2D image landmarks. The acquired facial expression input can be parametrically manipulated to create various facial expressions through a blendshape or expression transfer based on the FACS (Facial Action Coding System). To achieve a realistic facial expression synthesis, we propose an exemplar-texture wrinkle synthesis method that extracts and synthesizes appropriate expression wrinkles according to the target expression. To do so, we constructed a wrinkle table of various facial expressions from 400 people. As one of the applications, we proved that the expression-pose synthesis method is suitable for expression-invariant face recognition through a quantitative evaluation, and showed the effectiveness based on a qualitative evaluation. We expect our system to be a benefit to various fields such as face recognition, HCI, and data augmentation for deep learning.
topic facial expression synthesis
facial expression recognition
single view face reconstruction
pose frontalization
url https://www.mdpi.com/1424-8220/20/9/2578
work_keys_str_mv AT yujinhong adaptive3dmodelbasedfacialexpressionsynthesisandposefrontalization
AT sungeunchoi adaptive3dmodelbasedfacialexpressionsynthesisandposefrontalization
AT gipyonam adaptive3dmodelbasedfacialexpressionsynthesisandposefrontalization
AT heeseungchoi adaptive3dmodelbasedfacialexpressionsynthesisandposefrontalization
AT junghyuncho adaptive3dmodelbasedfacialexpressionsynthesisandposefrontalization
AT igjaekim adaptive3dmodelbasedfacialexpressionsynthesisandposefrontalization
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