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Papers/QMagFace: Simple and Accurate Quality-Aware Face Recognition

QMagFace: Simple and Accurate Quality-Aware Face Recognition

Philipp Terhörst, Malte Ihlefeld, Marco Huber, Naser Damer, Florian Kirchbuchner, Kiran Raja, Arjan Kuijper

2021-11-26Face RecognitionFace Verification
PaperPDFCode(official)

Abstract

Face recognition systems have to deal with large variabilities (such as different poses, illuminations, and expressions) that might lead to incorrect matching decisions. These variabilities can be measured in terms of face image quality which is defined over the utility of a sample for recognition. Previous works on face recognition either do not employ this valuable information or make use of non-inherently fit quality estimates. In this work, we propose a simple and effective face recognition solution (QMagFace) that combines a quality-aware comparison score with a recognition model based on a magnitude-aware angular margin loss. The proposed approach includes model-specific face image qualities in the comparison process to enhance the recognition performance under unconstrained circumstances. Exploiting the linearity between the qualities and their comparison scores induced by the utilized loss, our quality-aware comparison function is simple and highly generalizable. The experiments conducted on several face recognition databases and benchmarks demonstrate that the introduced quality-awareness leads to consistent improvements in the recognition performance. Moreover, the proposed QMagFace approach performs especially well under challenging circumstances, such as cross-pose, cross-age, or cross-quality. Consequently, it leads to state-of-the-art performances on several face recognition benchmarks, such as 98.50% on AgeDB, 83.95% on XQLFQ, and 98.74% on CFP-FP. The code for QMagFace is publicly available

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingLFWAccuracy0.985QMagFace
Facial Recognition and ModellingCFP-FPAccuracy0.8395QMagFace
Facial Recognition and ModellingCFP-FPAccuracy0.9874QMagFace
Facial Recognition and ModellingIJB-CTAR @ FAR=1e-298.51QMagFace
Facial Recognition and ModellingIJB-CTAR @ FAR=1e-397.62QMagFace
Facial Recognition and ModellingIJB-BTAR @ FAR=0.000194.7QMagFace
Facial Recognition and ModellingIJB-BTAR @ FAR=0.00196.48QMagFace
Facial Recognition and ModellingIJB-BTAR@FAR=0.000194.7QMagFace
Face VerificationCFP-FPAccuracy0.9874QMagFace
Face VerificationIJB-CTAR @ FAR=1e-298.51QMagFace
Face VerificationIJB-CTAR @ FAR=1e-397.62QMagFace
Face VerificationIJB-BTAR @ FAR=0.000194.7QMagFace
Face VerificationIJB-BTAR @ FAR=0.00196.48QMagFace
Face VerificationIJB-BTAR@FAR=0.000194.7QMagFace
Face ReconstructionLFWAccuracy0.985QMagFace
Face ReconstructionCFP-FPAccuracy0.8395QMagFace
Face ReconstructionCFP-FPAccuracy0.9874QMagFace
Face ReconstructionIJB-CTAR @ FAR=1e-298.51QMagFace
Face ReconstructionIJB-CTAR @ FAR=1e-397.62QMagFace
Face ReconstructionIJB-BTAR @ FAR=0.000194.7QMagFace
Face ReconstructionIJB-BTAR @ FAR=0.00196.48QMagFace
Face ReconstructionIJB-BTAR@FAR=0.000194.7QMagFace
Face RecognitionLFWAccuracy0.985QMagFace
Face RecognitionCFP-FPAccuracy0.8395QMagFace
3DLFWAccuracy0.985QMagFace
3DCFP-FPAccuracy0.8395QMagFace
3DCFP-FPAccuracy0.9874QMagFace
3DIJB-CTAR @ FAR=1e-298.51QMagFace
3DIJB-CTAR @ FAR=1e-397.62QMagFace
3DIJB-BTAR @ FAR=0.000194.7QMagFace
3DIJB-BTAR @ FAR=0.00196.48QMagFace
3DIJB-BTAR@FAR=0.000194.7QMagFace
3D Face ModellingLFWAccuracy0.985QMagFace
3D Face ModellingCFP-FPAccuracy0.8395QMagFace
3D Face ModellingCFP-FPAccuracy0.9874QMagFace
3D Face ModellingIJB-CTAR @ FAR=1e-298.51QMagFace
3D Face ModellingIJB-CTAR @ FAR=1e-397.62QMagFace
3D Face ModellingIJB-BTAR @ FAR=0.000194.7QMagFace
3D Face ModellingIJB-BTAR @ FAR=0.00196.48QMagFace
3D Face ModellingIJB-BTAR@FAR=0.000194.7QMagFace
3D Face ReconstructionLFWAccuracy0.985QMagFace
3D Face ReconstructionCFP-FPAccuracy0.8395QMagFace
3D Face ReconstructionCFP-FPAccuracy0.9874QMagFace
3D Face ReconstructionIJB-CTAR @ FAR=1e-298.51QMagFace
3D Face ReconstructionIJB-CTAR @ FAR=1e-397.62QMagFace
3D Face ReconstructionIJB-BTAR @ FAR=0.000194.7QMagFace
3D Face ReconstructionIJB-BTAR @ FAR=0.00196.48QMagFace
3D Face ReconstructionIJB-BTAR@FAR=0.000194.7QMagFace

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