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Localization using Multi-Focal Spatial Attention for Masked Face Recognition

Authors :
Cho, Yooshin
Cho, Hanbyel
Hong, Hyeong Gwon
Ahn, Jaesung
Cho, Dongmin
Chang, JungWoo
Kim, Junmo
Cho, Yooshin
Cho, Hanbyel
Hong, Hyeong Gwon
Ahn, Jaesung
Cho, Dongmin
Chang, JungWoo
Kim, Junmo
Publication Year :
2023

Abstract

Since the beginning of world-wide COVID-19 pandemic, facial masks have been recommended to limit the spread of the disease. However, these masks hide certain facial attributes. Hence, it has become difficult for existing face recognition systems to perform identity verification on masked faces. In this context, it is necessary to develop masked Face Recognition (MFR) for contactless biometric recognition systems. Thus, in this paper, we propose Complementary Attention Learning and Multi-Focal Spatial Attention that precisely removes masked region by training complementary spatial attention to focus on two distinct regions: masked regions and backgrounds. In our method, standard spatial attention and networks focus on unmasked regions, and extract mask-invariant features while minimizing the loss of the conventional Face Recognition (FR) performance. For conventional FR, we evaluate the performance on the IJB-C, Age-DB, CALFW, and CPLFW datasets. We evaluate the MFR performance on the ICCV2021-MFR/Insightface track, and demonstrate the improved performance on the both MFR and FR datasets. Additionally, we empirically verify that spatial attention of proposed method is more precisely activated in unmasked regions.<br />Comment: Accepted at FG 2023 - InterID Workshop

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381622125
Document Type :
Electronic Resource