Towards NIR-VIS Masked Face Recognition
Hang Du, Hailin Shi, Yinglu Liu, Dan Zeng, and Tao Mei

TL;DR
This paper introduces a novel training approach and 3D face synthesis to improve NIR-VIS masked face recognition, addressing data scarcity, occlusion, and domain gap issues caused by facial masks during the COVID-19 pandemic.
Contribution
It proposes a semi-siamese network-based training method and 3D face reconstruction for masked face synthesis to enhance domain-invariant face recognition under occlusion.
Findings
Improved recognition accuracy on NIR-VIS masked face datasets.
Enhanced cross-dataset generalization capability.
Robustness to mask occlusion demonstrated in experiments.
Abstract
Near-infrared to visible (NIR-VIS) face recognition is the most common case in heterogeneous face recognition, which aims to match a pair of face images captured from two different modalities. Existing deep learning based methods have made remarkable progress in NIR-VIS face recognition, while it encounters certain newly-emerged difficulties during the pandemic of COVID-19, since people are supposed to wear facial masks to cut off the spread of the virus. We define this task as NIR-VIS masked face recognition, and find it problematic with the masked face in the NIR probe image. First, the lack of masked face data is a challenging issue for the network training. Second, most of the facial parts (cheeks, mouth, nose etc.) are fully occluded by the mask, which leads to a large amount of loss of information. Third, the domain gap still exists in the remaining facial parts. In such scenario,…
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