Profile to frontal face recognition in the wild using coupled conditional generative adversarial network

Abstract In recent years, with the advent of deep‐learning, face recognition (FR) has achieved exceptional success. However, many of these deep FR models perform much better in handling frontal faces compared to profile faces. The major reason for poor performance in handling of profile faces is tha...

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Main Authors: Fariborz Taherkhani, Veeru Talreja, Jeremy Dawson, Matthew C. Valenti, Nasser M. Nasrabadi
Format: Article
Language:English
Published: Wiley 2022-05-01
Series:IET Biometrics
Subjects:
Online Access:https://doi.org/10.1049/bme2.12069
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author Fariborz Taherkhani
Veeru Talreja
Jeremy Dawson
Matthew C. Valenti
Nasser M. Nasrabadi
author_facet Fariborz Taherkhani
Veeru Talreja
Jeremy Dawson
Matthew C. Valenti
Nasser M. Nasrabadi
author_sort Fariborz Taherkhani
collection DOAJ
description Abstract In recent years, with the advent of deep‐learning, face recognition (FR) has achieved exceptional success. However, many of these deep FR models perform much better in handling frontal faces compared to profile faces. The major reason for poor performance in handling of profile faces is that it is inherently difficult to learn pose‐invariant deep representations that are useful for profile FR. In this paper, the authors hypothesise that the profile face domain possesses a latent connection with the frontal face domain in a latent feature subspace. The authors look to exploit this latent connection by projecting the profile faces and frontal faces into a common latent subspace and perform verification or retrieval in the latent domain. A coupled conditional generative adversarial network (cpGAN) structure is leveraged to find the hidden relationship between the profile and frontal images in a latent common embedding subspace. Specifically, the cpGAN framework consists of two conditional GAN‐based sub‐networks, one dedicated to the frontal domain and the other dedicated to the profile domain. Each sub‐network tends to find a projection that maximises the pair‐wise correlation between the two feature domains in a common embedding feature subspace. The efficacy of the authors’ approach compared with the state of the art is demonstrated using the CFP, CMU Multi‐PIE, IARPA Janus Benchmark A, and IARPA Janus Benchmark C datasets. Additionally, the authors have also implemented a coupled convolutional neural network (cpCNN) and an adversarial discriminative domain adaptation network (ADDA) for profile to frontal FR. The authors have evaluated the performance of cpCNN and ADDA and compared it with the proposed cpGAN. Finally, the authors have also evaluated the authors’ cpGAN for reconstruction of frontal faces from input profile faces contained in the VGGFace2 dataset.
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spelling doaj-art-bc784d1fa9524904839aa2831eb017342025-02-03T06:47:38ZengWileyIET Biometrics2047-49382047-49462022-05-0111326027610.1049/bme2.12069Profile to frontal face recognition in the wild using coupled conditional generative adversarial networkFariborz Taherkhani0Veeru Talreja1Jeremy Dawson2Matthew C. Valenti3Nasser M. Nasrabadi4Lane Department of Computer Science and Electrical Engineering West Virginia University Morgantown West Virginia USALane Department of Computer Science and Electrical Engineering West Virginia University Morgantown West Virginia USALane Department of Computer Science and Electrical Engineering West Virginia University Morgantown West Virginia USALane Department of Computer Science and Electrical Engineering West Virginia University Morgantown West Virginia USALane Department of Computer Science and Electrical Engineering West Virginia University Morgantown West Virginia USAAbstract In recent years, with the advent of deep‐learning, face recognition (FR) has achieved exceptional success. However, many of these deep FR models perform much better in handling frontal faces compared to profile faces. The major reason for poor performance in handling of profile faces is that it is inherently difficult to learn pose‐invariant deep representations that are useful for profile FR. In this paper, the authors hypothesise that the profile face domain possesses a latent connection with the frontal face domain in a latent feature subspace. The authors look to exploit this latent connection by projecting the profile faces and frontal faces into a common latent subspace and perform verification or retrieval in the latent domain. A coupled conditional generative adversarial network (cpGAN) structure is leveraged to find the hidden relationship between the profile and frontal images in a latent common embedding subspace. Specifically, the cpGAN framework consists of two conditional GAN‐based sub‐networks, one dedicated to the frontal domain and the other dedicated to the profile domain. Each sub‐network tends to find a projection that maximises the pair‐wise correlation between the two feature domains in a common embedding feature subspace. The efficacy of the authors’ approach compared with the state of the art is demonstrated using the CFP, CMU Multi‐PIE, IARPA Janus Benchmark A, and IARPA Janus Benchmark C datasets. Additionally, the authors have also implemented a coupled convolutional neural network (cpCNN) and an adversarial discriminative domain adaptation network (ADDA) for profile to frontal FR. The authors have evaluated the performance of cpCNN and ADDA and compared it with the proposed cpGAN. Finally, the authors have also evaluated the authors’ cpGAN for reconstruction of frontal faces from input profile faces contained in the VGGFace2 dataset.https://doi.org/10.1049/bme2.12069biometric applicationsface biometricsface recognitionfeature extractionimage retrieval
spellingShingle Fariborz Taherkhani
Veeru Talreja
Jeremy Dawson
Matthew C. Valenti
Nasser M. Nasrabadi
Profile to frontal face recognition in the wild using coupled conditional generative adversarial network
IET Biometrics
biometric applications
face biometrics
face recognition
feature extraction
image retrieval
title Profile to frontal face recognition in the wild using coupled conditional generative adversarial network
title_full Profile to frontal face recognition in the wild using coupled conditional generative adversarial network
title_fullStr Profile to frontal face recognition in the wild using coupled conditional generative adversarial network
title_full_unstemmed Profile to frontal face recognition in the wild using coupled conditional generative adversarial network
title_short Profile to frontal face recognition in the wild using coupled conditional generative adversarial network
title_sort profile to frontal face recognition in the wild using coupled conditional generative adversarial network
topic biometric applications
face biometrics
face recognition
feature extraction
image retrieval
url https://doi.org/10.1049/bme2.12069
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AT veerutalreja profiletofrontalfacerecognitioninthewildusingcoupledconditionalgenerativeadversarialnetwork
AT jeremydawson profiletofrontalfacerecognitioninthewildusingcoupledconditionalgenerativeadversarialnetwork
AT matthewcvalenti profiletofrontalfacerecognitioninthewildusingcoupledconditionalgenerativeadversarialnetwork
AT nassermnasrabadi profiletofrontalfacerecognitioninthewildusingcoupledconditionalgenerativeadversarialnetwork