Synthesizing Neutral Facial Expressions on 3D Faces

Facial expression synthesis is a process of generating new face shapes from a given face and still retaining the distinct facial characteristics of the initial face. The generated facial expressions can be used to improve the performance of existing face recognition systems. Earlier work on synthesi...

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Main Author: Agianpuye, Agianpuye Samuel
Format: Thesis
Language:English
Published: Universiti Malaysia Sarawak, (UNIMAS) 2015
Subjects:
Online Access:http://ir.unimas.my/id/eprint/10768/
http://ir.unimas.my/id/eprint/10768/2/Agianpuye%20%20ft.pdf
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author Agianpuye, Agianpuye Samuel
author_facet Agianpuye, Agianpuye Samuel
author_sort Agianpuye, Agianpuye Samuel
building UNIMAS Institutional Repository
collection Online Access
description Facial expression synthesis is a process of generating new face shapes from a given face and still retaining the distinct facial characteristics of the initial face. The generated facial expressions can be used to improve the performance of existing face recognition systems. Earlier work on synthesizing face shapes used 2D face images. As 3D scanners become more improved and widely available, the work has moved from 2D to 3D faces. The advantage of 3D faces over 2D image data is that 3D face holds more geometric shape data and is invariant to poses and illumination. This project presents a new approach to synthesize neutral facial expression on realistic 3D faces called Expression Proportion Distribution (EPD). EPD uses statistical approach to derive a method to neutralise facial expressions. The main challenge is to neutralise facial expressions especially those with jaw dropped and opened mouth. Jaw dropped and opened mouth facial expressions may be generated during articulations, or expressing emotional facial expressions, such as laughing or surprise. Opening of mouth moves both the facial muscles and the mandible, which causes the geometric face shape to deform. Other facial expression with mouth closed is also looked into. The experiments were carried out on two realistic 3D face datasets from Imperial College London and from the Binghamton University - 3D Facial Expression Dataset (BU-3DFED). The proposed neutral expression synthesis approach is evaluated in a face recognition domain.
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institution Universiti Malaysia Sarawak
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language English
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spelling unimas-107682025-05-13T02:52:17Z http://ir.unimas.my/id/eprint/10768/ Synthesizing Neutral Facial Expressions on 3D Faces Agianpuye, Agianpuye Samuel T Technology (General) Facial expression synthesis is a process of generating new face shapes from a given face and still retaining the distinct facial characteristics of the initial face. The generated facial expressions can be used to improve the performance of existing face recognition systems. Earlier work on synthesizing face shapes used 2D face images. As 3D scanners become more improved and widely available, the work has moved from 2D to 3D faces. The advantage of 3D faces over 2D image data is that 3D face holds more geometric shape data and is invariant to poses and illumination. This project presents a new approach to synthesize neutral facial expression on realistic 3D faces called Expression Proportion Distribution (EPD). EPD uses statistical approach to derive a method to neutralise facial expressions. The main challenge is to neutralise facial expressions especially those with jaw dropped and opened mouth. Jaw dropped and opened mouth facial expressions may be generated during articulations, or expressing emotional facial expressions, such as laughing or surprise. Opening of mouth moves both the facial muscles and the mandible, which causes the geometric face shape to deform. Other facial expression with mouth closed is also looked into. The experiments were carried out on two realistic 3D face datasets from Imperial College London and from the Binghamton University - 3D Facial Expression Dataset (BU-3DFED). The proposed neutral expression synthesis approach is evaluated in a face recognition domain. Universiti Malaysia Sarawak, (UNIMAS) 2015 Thesis NonPeerReviewed text en http://ir.unimas.my/id/eprint/10768/2/Agianpuye%20%20ft.pdf Agianpuye, Agianpuye Samuel (2015) Synthesizing Neutral Facial Expressions on 3D Faces. Masters thesis, Universiti Malaysia Sarawak, (UNIMAS).
spellingShingle T Technology (General)
Agianpuye, Agianpuye Samuel
Synthesizing Neutral Facial Expressions on 3D Faces
title Synthesizing Neutral Facial Expressions on 3D Faces
title_full Synthesizing Neutral Facial Expressions on 3D Faces
title_fullStr Synthesizing Neutral Facial Expressions on 3D Faces
title_full_unstemmed Synthesizing Neutral Facial Expressions on 3D Faces
title_short Synthesizing Neutral Facial Expressions on 3D Faces
title_sort synthesizing neutral facial expressions on 3d faces
topic T Technology (General)
url http://ir.unimas.my/id/eprint/10768/
http://ir.unimas.my/id/eprint/10768/2/Agianpuye%20%20ft.pdf