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arxiv 1902.04755 v4 pith:H5YVGBKG submitted 2019-02-13 cs.CV

Multi-Prototype Networks for Unconstrained Set-based Face Recognition

classification cs.CV
keywords facemediaprototypeinsteadlearnlearningmodelmpnet
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we study the challenging unconstrained set-based face recognition problem where each subject face is instantiated by a set of media (images and videos) instead of a single image. Naively aggregating information from all the media within a set would suffer from the large intra-set variance caused by heterogeneous factors (e.g., varying media modalities, poses and illuminations) and fail to learn discriminative face representations. A novel Multi-Prototype Network (MPNet) model is thus proposed to learn multiple prototype face representations adaptively from the media sets. Each learned prototype is representative for the subject face under certain condition in terms of pose, illumination and media modality. Instead of handcrafting the set partition for prototype learning, MPNet introduces a Dense SubGraph (DSG) learning sub-net that implicitly untangles inconsistent media and learns a number of representative prototypes. Qualitative and quantitative experiments clearly demonstrate superiority of the proposed model over state-of-the-arts.

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