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AirFace: Lightweight and Efficient Model for Face Recognition

About

With the development of convolutional neural network, significant progress has been made in computer vision tasks. However, the commonly used loss function softmax loss and highly efficient network architecture for common visual tasks are not as effective for face recognition. In this paper, we propose a novel loss function named Li-ArcFace based on ArcFace. Li-ArcFace takes the value of the angle through linear function as the target logit rather than through cosine function, which has better convergence and performance on low dimensional embedding feature learning for face recognition. In terms of network architecture, we improved the the perfomance of MobileFaceNet by increasing the network depth, width and adding attention module. Besides, we found some useful training tricks for face recognition. With all the above results, we won the second place in the deepglint-light challenge of LFR2019.

Xianyang Li, Feng Wang, Qinghao Hu, Cong Leng• 2019

Related benchmarks

TaskDatasetResultRank
Face VerificationLFW
Mean Accuracy99.28
339
Face VerificationLFW (test)
Verification Accuracy99.27
160
Face VerificationCALFW
Accuracy85.48
142
Face VerificationMegaFace FaceScrub probe Challenge 1
TAR @ FAR=1e-680.14
61
Face VerificationCFP (Frontal-Frontal)
Accuracy94.514
54
Face RecognitionMegaFace (set1)
Verification Rate (FAR=1e-6)97.93
43
Face IdentificationMF1-Facescrub 1.0 (test)
Rank-1 Identification Rate65.49
26
Face VerificationLFR Image 2019 (test)
TPR @ FPR=1e-888.42
6
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