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Papers/VarGFaceNet: An Efficient Variable Group Convolutional Neu...

VarGFaceNet: An Efficient Variable Group Convolutional Neural Network for Lightweight Face Recognition

Mengjia Yan, Mengao Zhao, Zining Xu, Qian Zhang, Guoli Wang, Zhizhong Su

2019-10-11Face RecognitionLightweight Face RecognitionKnowledge DistillationFace IdentificationFace Detection
PaperPDFCodeCodeCode(official)

Abstract

To improve the discriminative and generalization ability of lightweight network for face recognition, we propose an efficient variable group convolutional network called VarGFaceNet. Variable group convolution is introduced by VarGNet to solve the conflict between small computational cost and the unbalance of computational intensity inside a block. We employ variable group convolution to design our network which can support large scale face identification while reduce computational cost and parameters. Specifically, we use a head setting to reserve essential information at the start of the network and propose a particular embedding setting to reduce parameters of fully-connected layer for embedding. To enhance interpretation ability, we employ an equivalence of angular distillation loss to guide our lightweight network and we apply recursive knowledge distillation to relieve the discrepancy between the teacher model and the student model. The champion of deepglint-light track of LFR (2019) challenge demonstrates the effectiveness of our model and approach. Implementation of VarGFaceNet will be released at https://github.com/zma-c-137/VarGFaceNet soon.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingAgeDB-30Accuracy0.9815VarGFaceNet
Facial Recognition and ModellingCFP-FPAccuracy0.985VarGFaceNet
Face VerificationAgeDB-30Accuracy0.9815VarGFaceNet
Face VerificationCFP-FPAccuracy0.985VarGFaceNet
Face ReconstructionAgeDB-30Accuracy0.9815VarGFaceNet
Face ReconstructionCFP-FPAccuracy0.985VarGFaceNet
3DAgeDB-30Accuracy0.9815VarGFaceNet
3DCFP-FPAccuracy0.985VarGFaceNet
3D Face ModellingAgeDB-30Accuracy0.9815VarGFaceNet
3D Face ModellingCFP-FPAccuracy0.985VarGFaceNet
3D Face ReconstructionAgeDB-30Accuracy0.9815VarGFaceNet
3D Face ReconstructionCFP-FPAccuracy0.985VarGFaceNet

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