Multi‐factor joint normalisation for face recognition in the wild

Abstract Face recognition has become very challenging in unconstrained conditions due to strong intra‐personal variations, such as large pose changes. Face normalisation can help to resolve these problems and effectively improve the face recognition performance in unconstrained conditions by convert...

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Main Authors: Yanfei Liu, Junhua Chen
Format: Article
Language:English
Published: Wiley 2021-09-01
Series:IET Computer Vision
Online Access:https://doi.org/10.1049/cvi2.12025
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spelling doaj-fc45612c15314f41807d448ac36072db2021-08-06T09:30:58ZengWileyIET Computer Vision1751-96321751-96402021-09-0115640541710.1049/cvi2.12025Multi‐factor joint normalisation for face recognition in the wildYanfei Liu0Junhua Chen1School of Artificial Intelligence Chongqing University of Technology Banan District Chongqing ChinaKey Laboratory of Industrial Internet of Things and Networked Control Chongqing University of Posts and Telecommunications Chongqing ChinaAbstract Face recognition has become very challenging in unconstrained conditions due to strong intra‐personal variations, such as large pose changes. Face normalisation can help to resolve these problems and effectively improve the face recognition performance in unconstrained conditions by converting non‐frontal faces to frontal ones. However, there are other complex facial variations in addition to pose, such as illumination and expression, which will also influence face recognition performance. The authors propose a well‐designed generative adversarial network‐based multi‐factor joint normalisation network (MFJNN) to normalise multiple factors simultaneously. First, a multi‐encoder generator and a feature fusion strategy are designed and implemented in the MFJNN to realise the joint normalisation of multiple factors in addition to pose. Second, a convolutional neural network‐based (CNN‐based) network is applied in the MFJNN, which allows the MFJNN to simultaneously realise image synthesis and facial representation learning. Moreover, an identity perceptive loss is introduced based on the CNN‐based network to produce reliable identity‐preserving features of the input face images. The experimental results demonstrate that the proposed method can synthesise multi‐factor normalisation results with identity preservation and effectively improve the face recognition performance.https://doi.org/10.1049/cvi2.12025
collection DOAJ
language English
format Article
sources DOAJ
author Yanfei Liu
Junhua Chen
spellingShingle Yanfei Liu
Junhua Chen
Multi‐factor joint normalisation for face recognition in the wild
IET Computer Vision
author_facet Yanfei Liu
Junhua Chen
author_sort Yanfei Liu
title Multi‐factor joint normalisation for face recognition in the wild
title_short Multi‐factor joint normalisation for face recognition in the wild
title_full Multi‐factor joint normalisation for face recognition in the wild
title_fullStr Multi‐factor joint normalisation for face recognition in the wild
title_full_unstemmed Multi‐factor joint normalisation for face recognition in the wild
title_sort multi‐factor joint normalisation for face recognition in the wild
publisher Wiley
series IET Computer Vision
issn 1751-9632
1751-9640
publishDate 2021-09-01
description Abstract Face recognition has become very challenging in unconstrained conditions due to strong intra‐personal variations, such as large pose changes. Face normalisation can help to resolve these problems and effectively improve the face recognition performance in unconstrained conditions by converting non‐frontal faces to frontal ones. However, there are other complex facial variations in addition to pose, such as illumination and expression, which will also influence face recognition performance. The authors propose a well‐designed generative adversarial network‐based multi‐factor joint normalisation network (MFJNN) to normalise multiple factors simultaneously. First, a multi‐encoder generator and a feature fusion strategy are designed and implemented in the MFJNN to realise the joint normalisation of multiple factors in addition to pose. Second, a convolutional neural network‐based (CNN‐based) network is applied in the MFJNN, which allows the MFJNN to simultaneously realise image synthesis and facial representation learning. Moreover, an identity perceptive loss is introduced based on the CNN‐based network to produce reliable identity‐preserving features of the input face images. The experimental results demonstrate that the proposed method can synthesise multi‐factor normalisation results with identity preservation and effectively improve the face recognition performance.
url https://doi.org/10.1049/cvi2.12025
work_keys_str_mv AT yanfeiliu multifactorjointnormalisationforfacerecognitioninthewild
AT junhuachen multifactorjointnormalisationforfacerecognitioninthewild
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