Pose-robust Face Recognition by Deep Meta Capsule network-based Equivariant Embedding

2020 25TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR)(2021)

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摘要
Despite the exceptional success in face recognition related technologies, handling large pose variations still remains a key challenge. Current techniques for pose-robust face recognition either, directly extract pose-invariant features, or first synthesize a face that matches the target pose before feature extraction. It is more desirable to learn face representations equivariant to pose variations. To this end, this paper proposes a deep meta Capsule network-based Equivariant Embedding Model (DM-CEEM) with three distinct novelties. First, the proposed RB-CapsNet allows DM-CEEM to learn an equivariant embedding for pose variations and achieve the desired transformation for input face images. Second, we introduce a new version of a Capsule network called RB-CapsNet to extend CapsNet to perform a profile-to-frontal face transformation in deep feature space. Third, we train the DM-CEEM in a meta way by treating a single overall classification target as multiple sub-tasks that satisfy certain unknown probabilities. In each sub-task, we sample the support and query sets randomly. The experimental results on both controlled and in-the-wild databases demonstrate the superiority of DM-CEEM over state-of-the-art.
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关键词
DM-CEEM,pose-robust face recognition,face recognition related technologies,pose variations,pose-invariant features,feature extraction,face representations equivariant,deep meta Capsule network-based Equivariant Embedding Model,RB-CapsNet,input face images,profile-to-frontal face transformation,deep feature space
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