Face alignment based on fusion subspace and 3D fitting

Abstract The traditional face alignment approaches based on cascade regression have achieved satisfactory result on the frontal face, but for the face with large changes in posture and expression, a single initial shape will lead to the result falling into local optimum. In order to solve this probl...

Full description

Bibliographic Details
Main Authors: Jiahui Zhang, Lan Di, Jiuzhen Liang
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:IET Image Processing
Online Access:https://doi.org/10.1049/ipr2.12002
id doaj-cf9cf7c772e94563b8b8d75a4cb18105
record_format Article
spelling doaj-cf9cf7c772e94563b8b8d75a4cb181052021-07-14T13:25:37ZengWileyIET Image Processing1751-96591751-96672021-01-01151162710.1049/ipr2.12002Face alignment based on fusion subspace and 3D fittingJiahui Zhang0Lan Di1Jiuzhen Liang2School of Artificial Intelligence and Computer Science Jiangnan University Wuxi 214122 ChinaSchool of Artificial Intelligence and Computer Science Jiangnan University Wuxi 214122 ChinaSchool of Computer Science and Artificial Intelligence Changzhou University Changzhou ChinaAbstract The traditional face alignment approaches based on cascade regression have achieved satisfactory result on the frontal face, but for the face with large changes in posture and expression, a single initial shape will lead to the result falling into local optimum. In order to solve this problem, a two‐stage cascade regression model for face alignment is proposed, which generates coarse initial shape from the aligned salient shape. The first stage is used to align the salient shape that contains some prominent landmarks. To enhance the robustness of authors' method, the fusion subspace is used to divide the samples, and each subset trains cascade regression model separately. The alignment results of the first stage are used to generate the coarse initial shapes for the second stage through 3D fitting. The second stage is still based on cascade regression, which is used to further predict the full shape. The experimental results demonstrate the proposed method can achieve state‐of‐art performance, especially in unconstrained conditions with various poses.https://doi.org/10.1049/ipr2.12002
collection DOAJ
language English
format Article
sources DOAJ
author Jiahui Zhang
Lan Di
Jiuzhen Liang
spellingShingle Jiahui Zhang
Lan Di
Jiuzhen Liang
Face alignment based on fusion subspace and 3D fitting
IET Image Processing
author_facet Jiahui Zhang
Lan Di
Jiuzhen Liang
author_sort Jiahui Zhang
title Face alignment based on fusion subspace and 3D fitting
title_short Face alignment based on fusion subspace and 3D fitting
title_full Face alignment based on fusion subspace and 3D fitting
title_fullStr Face alignment based on fusion subspace and 3D fitting
title_full_unstemmed Face alignment based on fusion subspace and 3D fitting
title_sort face alignment based on fusion subspace and 3d fitting
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2021-01-01
description Abstract The traditional face alignment approaches based on cascade regression have achieved satisfactory result on the frontal face, but for the face with large changes in posture and expression, a single initial shape will lead to the result falling into local optimum. In order to solve this problem, a two‐stage cascade regression model for face alignment is proposed, which generates coarse initial shape from the aligned salient shape. The first stage is used to align the salient shape that contains some prominent landmarks. To enhance the robustness of authors' method, the fusion subspace is used to divide the samples, and each subset trains cascade regression model separately. The alignment results of the first stage are used to generate the coarse initial shapes for the second stage through 3D fitting. The second stage is still based on cascade regression, which is used to further predict the full shape. The experimental results demonstrate the proposed method can achieve state‐of‐art performance, especially in unconstrained conditions with various poses.
url https://doi.org/10.1049/ipr2.12002
work_keys_str_mv AT jiahuizhang facealignmentbasedonfusionsubspaceand3dfitting
AT landi facealignmentbasedonfusionsubspaceand3dfitting
AT jiuzhenliang facealignmentbasedonfusionsubspaceand3dfitting
_version_ 1721302747534327808