4.7 Article

AAN-Face: Attention Augmented Networks for Face Recognition

期刊

IEEE TRANSACTIONS ON IMAGE PROCESSING
卷 30, 期 -, 页码 7636-7648

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2021.3107238

关键词

Face recognition; Feature extraction; Cams; Training data; Task analysis; Noise measurement; Faces; Masked face recognition; COVID-19 epidemic; attention erasing; attention center loss; pose variation; age gap; quality change; heterogeneous face recognition

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In this research, an Attention Augmented Network called AAN-Face is proposed to address the issue of imbalanced data distributions in face recognition. By utilizing attention erasing and attention center loss, the AAN-Face models outperform state-of-the-art methods, especially on test datasets involving masked faces, demonstrating the importance and effectiveness of the approach.
Convolutional neural networks are capable of extracting powerful representations for face recognition. However, they tend to suffer from poor generalization due to imbalanced data distributions where a small number of classes are over-represented (e.g. frontal or non-occluded faces) and some of the remaining rarely appear (e.g. profile or heavily occluded faces). This is the reason why the performance is dramatically degraded in minority classes. For example, this issue is serious for recognizing masked faces in the scenario of ongoing pandemic of the COVID-19. In this work, we propose an Attention Augmented Network, called AAN-Face, to handle this issue. First, an attention erasing (AE) scheme is proposed to randomly erase units in attention maps. This well prepares models towards occlusions or pose variations. Second, an attention center loss (ACL) is proposed to learn a center for each attention map, so that the same attention map focuses on the same facial part. Consequently, discriminative facial regions are emphasized, while useless or noisy ones are suppressed. Third, the AE and the ACL are incorporated to form the AAN-Face. Since the discriminative parts are randomly removed by the AE, the ACL is encouraged to learn different attention centers, leading to the localization of diverse and complementary facial parts. Comprehensive experiments on various test datasets, especially on masked faces, demonstrate that our AAN-Face models outperform the state-of-the-art methods, showing the importance and effectiveness.

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