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Papers/Neural Aggregation Network for Video Face Recognition

Neural Aggregation Network for Video Face Recognition

Jiaolong Yang, Peiran Ren, Dong-Qing Zhang, Dong Chen, Fang Wen, Hongdong Li, Gang Hua

2016-03-17CVPR 2017 7Face RecognitionFace VerificationFace Identification
PaperPDF

Abstract

This paper presents a Neural Aggregation Network (NAN) for video face recognition. The network takes a face video or face image set of a person with a variable number of face images as its input, and produces a compact, fixed-dimension feature representation for recognition. The whole network is composed of two modules. The feature embedding module is a deep Convolutional Neural Network (CNN) which maps each face image to a feature vector. The aggregation module consists of two attention blocks which adaptively aggregate the feature vectors to form a single feature inside the convex hull spanned by them. Due to the attention mechanism, the aggregation is invariant to the image order. Our NAN is trained with a standard classification or verification loss without any extra supervision signal, and we found that it automatically learns to advocate high-quality face images while repelling low-quality ones such as blurred, occluded and improperly exposed faces. The experiments on IJB-A, YouTube Face, Celebrity-1000 video face recognition benchmarks show that it consistently outperforms naive aggregation methods and achieves the state-of-the-art accuracy.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingBTS3.1TAR @ FAR=0.010.5444NAN (Adaface)
Facial Recognition and ModellingBTS3.1TAR @ FAR=0.010.3941MCN (Arcface)
Facial Recognition and ModellingBTS3.1TAR @ FAR=0.010.3901NAN (Arcface)
Facial Recognition and ModellingDroneSURFRank180.21NAN (Adaface)
Face VerificationBTS3.1TAR @ FAR=0.010.5444NAN (Adaface)
Face VerificationBTS3.1TAR @ FAR=0.010.3941MCN (Arcface)
Face VerificationBTS3.1TAR @ FAR=0.010.3901NAN (Arcface)
Face ReconstructionBTS3.1TAR @ FAR=0.010.5444NAN (Adaface)
Face ReconstructionBTS3.1TAR @ FAR=0.010.3941MCN (Arcface)
Face ReconstructionBTS3.1TAR @ FAR=0.010.3901NAN (Arcface)
Face ReconstructionDroneSURFRank180.21NAN (Adaface)
3DBTS3.1TAR @ FAR=0.010.5444NAN (Adaface)
3DBTS3.1TAR @ FAR=0.010.3941MCN (Arcface)
3DBTS3.1TAR @ FAR=0.010.3901NAN (Arcface)
3DDroneSURFRank180.21NAN (Adaface)
3D Face ModellingBTS3.1TAR @ FAR=0.010.5444NAN (Adaface)
3D Face ModellingBTS3.1TAR @ FAR=0.010.3941MCN (Arcface)
3D Face ModellingBTS3.1TAR @ FAR=0.010.3901NAN (Arcface)
3D Face ModellingDroneSURFRank180.21NAN (Adaface)
3D Face ReconstructionBTS3.1TAR @ FAR=0.010.5444NAN (Adaface)
3D Face ReconstructionBTS3.1TAR @ FAR=0.010.3941MCN (Arcface)
3D Face ReconstructionBTS3.1TAR @ FAR=0.010.3901NAN (Arcface)
3D Face ReconstructionDroneSURFRank180.21NAN (Adaface)

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