CP-GAN: A Cross-Pose Profile Face Frontalization Boosting Pose-Invariant Face Recognition

Pose variant or self-occlusion is one of the open issues which severely degrades the performance of pose-invariant face recognition (PIFR). Existing solutions to PIFR either have undesirable generalization based on challenging pose normalization or are complicated for implement on account of deep ne...

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Main Authors: Jinjin Liu, Qingbao Li, Ming Liu, Tongxin Wei
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9239300/
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spelling doaj-2b58169ff0da45509d1fe4566b54e5222021-03-30T04:04:08ZengIEEEIEEE Access2169-35362020-01-01819865919866710.1109/ACCESS.2020.30336759239300CP-GAN: A Cross-Pose Profile Face Frontalization Boosting Pose-Invariant Face RecognitionJinjin Liu0https://orcid.org/0000-0001-7251-0614Qingbao Li1https://orcid.org/0000-0001-8712-3887Ming Liu2https://orcid.org/0000-0002-9981-0454Tongxin Wei3https://orcid.org/0000-0002-8532-3129State Key Laboratory of Mathematical Engineering and Advanced Computing, Zhengzhou, ChinaState Key Laboratory of Mathematical Engineering and Advanced Computing, Zhengzhou, ChinaState Key Laboratory of Mathematical Engineering and Advanced Computing, Zhengzhou, ChinaState Key Laboratory of Mathematical Engineering and Advanced Computing, Zhengzhou, ChinaPose variant or self-occlusion is one of the open issues which severely degrades the performance of pose-invariant face recognition (PIFR). Existing solutions to PIFR either have undesirable generalization based on challenging pose normalization or are complicated for implement on account of deep neural network. To relieve the impact of ill-pose on PIFR, we have proposed Cross-Pose Generative Adversarial Networks(CP-GAN) to frontalize the profile face with unaltered identity by learning the mapping between the profile and frontal faces in image space. The generator is an encoder-decoder U-net, and generate frontal face image by fusing multiple profile images to achieve a better performance in PIFR. The siamese discriminative network attends to extract the deep representations of the generated frontal face and the ground truth without introducing extra networks in verification and recognition. Besides the implementable architecture, this problem is well alleviated by introducing a combination of adversarial loss for both the generator and the discriminator, symmetry loss, patch-wise loss, and identity loss guiding an identity reserving property of the generated frontal view. Quantitative and qualitative evaluation on both controlled and in-the-wild datasets attest that the solution we proposed to PIFR presents satisfactory perceptual results and transcends state-of-the-art methods on ill-pose face recognition.https://ieeexplore.ieee.org/document/9239300/Pose-invariant face recognitionfrontal face synthesisgenerative adversarial networks
collection DOAJ
language English
format Article
sources DOAJ
author Jinjin Liu
Qingbao Li
Ming Liu
Tongxin Wei
spellingShingle Jinjin Liu
Qingbao Li
Ming Liu
Tongxin Wei
CP-GAN: A Cross-Pose Profile Face Frontalization Boosting Pose-Invariant Face Recognition
IEEE Access
Pose-invariant face recognition
frontal face synthesis
generative adversarial networks
author_facet Jinjin Liu
Qingbao Li
Ming Liu
Tongxin Wei
author_sort Jinjin Liu
title CP-GAN: A Cross-Pose Profile Face Frontalization Boosting Pose-Invariant Face Recognition
title_short CP-GAN: A Cross-Pose Profile Face Frontalization Boosting Pose-Invariant Face Recognition
title_full CP-GAN: A Cross-Pose Profile Face Frontalization Boosting Pose-Invariant Face Recognition
title_fullStr CP-GAN: A Cross-Pose Profile Face Frontalization Boosting Pose-Invariant Face Recognition
title_full_unstemmed CP-GAN: A Cross-Pose Profile Face Frontalization Boosting Pose-Invariant Face Recognition
title_sort cp-gan: a cross-pose profile face frontalization boosting pose-invariant face recognition
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Pose variant or self-occlusion is one of the open issues which severely degrades the performance of pose-invariant face recognition (PIFR). Existing solutions to PIFR either have undesirable generalization based on challenging pose normalization or are complicated for implement on account of deep neural network. To relieve the impact of ill-pose on PIFR, we have proposed Cross-Pose Generative Adversarial Networks(CP-GAN) to frontalize the profile face with unaltered identity by learning the mapping between the profile and frontal faces in image space. The generator is an encoder-decoder U-net, and generate frontal face image by fusing multiple profile images to achieve a better performance in PIFR. The siamese discriminative network attends to extract the deep representations of the generated frontal face and the ground truth without introducing extra networks in verification and recognition. Besides the implementable architecture, this problem is well alleviated by introducing a combination of adversarial loss for both the generator and the discriminator, symmetry loss, patch-wise loss, and identity loss guiding an identity reserving property of the generated frontal view. Quantitative and qualitative evaluation on both controlled and in-the-wild datasets attest that the solution we proposed to PIFR presents satisfactory perceptual results and transcends state-of-the-art methods on ill-pose face recognition.
topic Pose-invariant face recognition
frontal face synthesis
generative adversarial networks
url https://ieeexplore.ieee.org/document/9239300/
work_keys_str_mv AT jinjinliu cpganacrossposeprofilefacefrontalizationboostingposeinvariantfacerecognition
AT qingbaoli cpganacrossposeprofilefacefrontalizationboostingposeinvariantfacerecognition
AT mingliu cpganacrossposeprofilefacefrontalizationboostingposeinvariantfacerecognition
AT tongxinwei cpganacrossposeprofilefacefrontalizationboostingposeinvariantfacerecognition
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