Face recognition for visible light (VIS) images achieve high accuracy thanks to the recent development of deep learning. However, heterogeneous face recognition (HFR), which is a face matching in different domains, is still a difficult task due to the domain discrepancy and lack of large HFR dataset. Several methods have attempted to reduce the domain discrepancy by means of fine-tuning, which causes significant degradation of the performance in the VIS domain because it loses the highly discriminative VIS representation. To overcome this problem, we propose joint feature distribution alignment learning (JFDAL) which is a joint learning approach utilizing knowledge distillation. It enables us to achieve high HFR performance with retaining the original performance for the VIS domain. Extensive experiments demonstrate that our proposed method delivers statistically significantly better performances compared with the conventional fine-tuning approach on a public HFR dataset Oulu-CASIA NIR&VIS and popular verification datasets in VIS domain such as FLW, CFP, AgeDB. Furthermore, comparative experiments with existing state-of-the-art HFR methods show that our method achieves a comparable HFR performance on the Oulu-CASIA NIR&VIS dataset with less degradation of VIS performance.
翻译:由于最近深层学习的发展,对可见光(VIS)图像的面部识别实现了很高的精确度。然而,由于领域差异和缺少大型HFR数据集,不同面部识别(HFR)在不同领域是一种面部匹配,仍是一项艰巨的任务。一些方法试图通过微调缩小域差异,这导致VIS域性能显著退化,因为它失去了高度歧视性的VIS代表。为了克服这一问题,我们提议联合特征分布协调学习(JFDAL),这是利用知识蒸馏的一种联合学习方法。它使我们能够在保持VIS域原有性能的同时,实现高度的HFR性能(HFR),这使我们能够在保持VIS域的原有性能。广泛的实验表明,我们所提议的方法在统计上比公共的HFR数据集Oulu-CASIA NIR&VIS和VIS以及诸如FLW、CFP、AIDB等VIS域域的大众核查数据集的常规微调方法要好得多。此外,与现有的HFR性能性能(VIS)比得相当的VIVIS性能。