Low-resolution face recognition suffers from domain shift due to the different resolution between a high-resolution gallery and a low-resolution probe set. Conventional methods use the pairwise correlation between high-resolution and low-resolution for the same subject, which requires label information for both gallery and probe sets. However, explicitly labeled low-resolution probe images are seldom available, and labeling them is labor-intensive. In this paper, we propose a novel unsupervised face domain transfer for robust low-resolution face recognition. By leveraging the attention mechanism, the proposed generative face augmentation reduces the domain shift at image-level, while spatial resolution adaptation generates domain-invariant and discriminant feature distributions. On public datasets, we demonstrate the complementarity between generative face augmentation at image-level and spatial resolution adaptation at feature-level. The proposed method outperforms the state-of-the-art supervised methods even though we do not use any label information of low-resolution probe set.
Zhiyi ChengXiatian ZhuShaogang Gong
Zimeng LuoJiani HuWeihong DengHaifeng Shen
Fangyu WuShiyang YanJeremy S. SmithWenjin LuBailing Zhang
Weiming ZhuangXin GanXuesen ZhangYonggang WenShuai ZhangShuai Yi
Jin ChenJun ChenZheng WangChao LiangChia‐Wen Lin