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MaskDUL: Data Uncertainty Learning in Masked Face Recognition

Citation Author(s):
Libo Zhang, Weiming Xiong, Ku Zhao, Kehan Chen, Mingyang Zhong
Submitted by:
libo zhang
Last updated:
27 May 2023 - 11:09am
Document Type:
Poster
Document Year:
2023
Event:
Presenters:
Libo Zhang
Paper Code:
IVMSP-P8.4
 

Since mask occlusion causes plentiful loss of facial feature, Masked Face Recognition (MFR) is a challenging image processing task, and the recognition results are susceptible to noise. However, existing MFR methods are mostly deterministic point embedding models, which are limited in representing noise images. Moreover, Data Uncertainty Learning (DUL) fails to achieve reasonable performance in MFR. Therefore, we propose a novel two-stream convolutional network, masked face data uncertainty learning (MaskDUL), that solves the problems by sampling uncertainty and intra-class distribution learning in MFR. Specifically, a Hard Kullback-Leibler Divergence (H-KLD) method is proposed to serve as an adaptive variance regularizer and a magnitude-based module is adopted to adaptively adjust the angular margin of different samples. Finally, insightful evaluation demonstrates the effectiveness and robustness of our MaskDUL.

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